
The Impact of Globalization on International Finance and Accounting pp 385–393 Cite as

A Literature Review of Financial Performance Measures and Value Relevance
- Nattarinee Kopecká 2
- Conference paper
- First Online: 30 December 2017
1660 Accesses
2 Citations
Part of the Springer Proceedings in Business and Economics book series (SPBE)
Performance measurement comprises several metrics and applications used as a benchmark in business sectors for both internal and external users. For managers, it expresses whether company’s targets are reached and as a way of evaluating risks and returns for shareholders. A variety of performance measures are utilized to almost every operational process, and the area is rather vast. Therefore, the aim of the study is to find out what kinds of financial tools are better linked to market value. The result of the study shows that financial measures appear to be favorable measures for companies providing relevant and meaningful information to shareholders. Especially, return on investment (ROI) and earnings are significantly relevant to market value, while the superiority of EVA still remains unclear. Above all, companies still prefer traditional financial measures to other financial tools.
- Financial measures
- Economic value added
- Market measures
- Value relevance
This is a preview of subscription content, access via your institution .
Alibad S, Dorestani A, Balsara N (2013) The most value relevant accounting performance measure by industry. J Account Finance. http://www.na-businesspress.com . Accessed 16 Jul 2016
Almasan AC, Grosu C (2010) Financial measures for performance measurements in a regulated environment. Paper presented at the 5th international conference on economy and management transformation, West University of Timisoara, Romania, 24–26 Oct 2010
Google Scholar
Barney JB (2002) Gaining and sustaining competitive advantage. Prentice Hall, Upper Saddle River
Black AP, Wright PD, Bachman JE (1998) In search of shareholder value: managing the drivers of performance. Financial Times Prentice Hall, London
Barton J, Hansen B, Pownall G (2010) Which performance measures do investor value the most and why? Account Rev 85:18–19
CrossRef Google Scholar
Bhasin L (2016) Disclosure of EVA in the financial statement: experience of an asian economy. https://www.academia.edu . Accessed 22 Sept 2016
Ewoh AIE (2011) Performance measurement in an era of new public management. http://digitalcommons.kennesaw.edu . Accessed 10 Jul 2016
Francis J, Schipper K, Vincent L (2003) The relative and incremental explanatory power of earnings and alternative (to earnings) performance measures for returns. Contemp Account Res 1:121–164. https://doi.org/10.1506/XVQV-NQ4A-08EX-FC8A
Gentry RJ, Shen W (2010) The relationship between accounting and market measures of firm financial performance : how strong is it? J Manag Issues 22:514–530
Holthausen RW, Watts RL (2001) The relevance of the value-relevance literature for financial accounting standard setting. J Account Econ 31:3–75
Kaplan R, Norton D (1992) The balanced scorecard: measures that drive performance, vol 70. Harvard Business Reviews Press, Boston, pp 71–79
Kamath GB (2015) The impact of intellectual capital on financial performance and market valuation of firm in India. International Letters of Social and Humanistic Sciences. http://wwwscipress.com/ILSHS.48.107 . Accessed 18 Sept 2016
Knáplová A, Pavelková D, Chodúr M (2011) Měření a říyení výkonnosti podniku, Praha
Neely A, Mills J, Platts K, Gregory M, Richards H (1994) Realizing strategy through measurement. Int J Oper Prod Manag 14:52–140
Neely A, Gregory M, Platts K (2005) Performance measurement system design. A literature review and research agenda. Int J Oper Prod Manag 15:80–166
Patel RP, Patel M (2012) Impact of EVA on share price. International Journal of Contemporary Business Studies. A Study of Indian Private Sector Banks. https://ssm.com/abstract=2097467 . Accessed 12 Jul 2016
Pathirawasam C (2010) Value relevance of accounting information: evidence from Sri Lanka. Int J Res Commer Manag 8(1):13–20
Richard PJ, Devinney TM, Yip GS, Johnson G (2009) Measuring organizational performance: towards methodological best practice. J Manag. http://jom.sagepub.com/cgi/content/refs/35/3/718 . Accessed 20 Sept 2016
Shan YG (2014) Value relevance, earning management and corporate governance in China. http://www.business.adelaide.edu.au . Accessed 25 Jul 2016
Stewart GB (1994) EVA: fact and fantasy. J Appl Corp Financ 7(2):71–87. https://doi.org/10.1111/j.1745-622.1994.tb00406x
Sorter GH, Gans MS, Rosenfield P, Shannon RM, Streit RG (1974) Objectives of financial statements. American Institute of Certified Public Accountants, New York, pp 3–66
Venkatraman N, Ramanujam V (1986) Measurement of business performance in strategy research: a comparison of approaches. Acad Manag Rev 11:801–814
Download references
Acknowledgments
This paper has been dedicated to the research project "Analysis of strategic management ac-counting relation to company management and performance" (supported by Internal Grant Agency, No. IG 71/2017).
Author information
Authors and affiliations.
Department of Management Accounting, University of Economic, Prague, Nam. W. Churchilla 4, 130 67, Prague 3, Czech Republic
Nattarinee Kopecká
You can also search for this author in PubMed Google Scholar
Corresponding author
Correspondence to Nattarinee Kopecká .
Editor information
Editors and affiliations.
Faculty of Finance and Accounting, University of Economics, Prague, Prague, Czech Republic
David Procházka
Rights and permissions
Reprints and Permissions
Copyright information
© 2018 Springer International Publishing AG
About this paper
Cite this paper.
Kopecká, N. (2018). A Literature Review of Financial Performance Measures and Value Relevance. In: Procházka, D. (eds) The Impact of Globalization on International Finance and Accounting. Springer Proceedings in Business and Economics. Springer, Cham. https://doi.org/10.1007/978-3-319-68762-9_42
Download citation
DOI : https://doi.org/10.1007/978-3-319-68762-9_42
Published : 30 December 2017
Publisher Name : Springer, Cham
Print ISBN : 978-3-319-68761-2
Online ISBN : 978-3-319-68762-9
eBook Packages : Economics and Finance Economics and Finance (R0)
Share this paper
Anyone you share the following link with will be able to read this content:
Sorry, a shareable link is not currently available for this article.
Provided by the Springer Nature SharedIt content-sharing initiative
- Find a journal
- Publish with us
- Browse All Articles
- Newsletter Sign-Up

- 12 Sep 2023
- Research & Ideas
How Can Financial Advisors Thrive in Shifting Markets? Diversify, Diversify, Diversify
Financial planners must find new ways to market to tech-savvy millennials and gen Z investors or risk irrelevancy. Research by Marco Di Maggio probes the generational challenges that advisory firms face as baby boomers retire. What will it take to compete in a fintech and crypto world?

- 17 Aug 2023
‘Not a Bunch of Weirdos’: Why Mainstream Investors Buy Crypto
Bitcoin might seem like the preferred tender of conspiracy theorists and criminals, but everyday investors are increasingly embracing crypto. A study of 59 million consumers by Marco Di Maggio and colleagues paints a shockingly ordinary picture of today's cryptocurrency buyer. What do they stand to gain?

- 17 Jul 2023
Money Isn’t Everything: The Dos and Don’ts of Motivating Employees
Dangling bonuses to checked-out employees might only be a Band-Aid solution. Brian Hall shares four research-based incentive strategies—and three perils to avoid—for leaders trying to engage the post-pandemic workforce.

- 20 Jun 2023
- Cold Call Podcast
Elon Musk’s Twitter Takeover: Lessons in Strategic Change
In late October 2022, Elon Musk officially took Twitter private and became the company’s majority shareholder, finally ending a months-long acquisition saga. He appointed himself CEO and brought in his own team to clean house. Musk needed to take decisive steps to succeed against the major opposition to his leadership from both inside and outside the company. Twitter employees circulated an open letter protesting expected layoffs, advertising agencies advised their clients to pause spending on Twitter, and EU officials considered a broader Twitter ban. What short-term actions should Musk take to stabilize the situation, and how should he approach long-term strategy to turn around Twitter? Harvard Business School assistant professor Andy Wu and co-author Goran Calic, associate professor at McMaster University’s DeGroote School of Business, discuss Twitter as a microcosm for the future of media and information in their case, “Twitter Turnaround and Elon Musk.”

- 06 Jun 2023
The Opioid Crisis, CEO Pay, and Shareholder Activism
In 2020, AmerisourceBergen Corporation, a Fortune 50 company in the drug distribution industry, agreed to settle thousands of lawsuits filed nationwide against the company for its opioid distribution practices, which critics alleged had contributed to the opioid crisis in the US. The $6.6 billion global settlement caused a net loss larger than the cumulative net income earned during the tenure of the company’s CEO, which began in 2011. In addition, AmerisourceBergen’s legal and financial troubles were accompanied by shareholder demands aimed at driving corporate governance changes in companies in the opioid supply chain. Determined to hold the company’s leadership accountable, the shareholders launched a campaign in early 2021 to reject the pay packages of executives. Should the board reduce the executives’ pay, as of means of improving accountability? Or does punishing the AmerisourceBergen executives for paying the settlement ignore the larger issue of a business’s responsibility to society? Harvard Business School professor Suraj Srinivasan discusses executive compensation and shareholder activism in the context of the US opioid crisis in his case, “The Opioid Settlement and Controversy Over CEO Pay at AmerisourceBergen.”

- 16 May 2023
- In Practice
After Silicon Valley Bank's Flameout, What's Next for Entrepreneurs?
Silicon Valley Bank's failure in the face of rising interest rates shook founders and funders across the country. Julia Austin, Jeffrey Bussgang, and Rembrand Koning share key insights for rattled entrepreneurs trying to make sense of the financing landscape.

- 27 Apr 2023
Equity Bank CEO James Mwangi: Transforming Lives with Access to Credit
James Mwangi, CEO of Equity Bank, has transformed lives and livelihoods throughout East and Central Africa by giving impoverished people access to banking accounts and micro loans. He’s been so successful that in 2020 Forbes coined the term “the Mwangi Model.” But can we really have both purpose and profit in a firm? Harvard Business School professor Caroline Elkins, who has spent decades studying Africa, explores how this model has become one that business leaders are seeking to replicate throughout the world in her case, “A Marshall Plan for Africa': James Mwangi and Equity Group Holdings.” As part of a new first-year MBA course at Harvard Business School, this case examines the central question: what is the social purpose of the firm?

- 25 Apr 2023
Using Design Thinking to Invent a Low-Cost Prosthesis for Land Mine Victims
Bhagwan Mahaveer Viklang Sahayata Samiti (BMVSS) is an Indian nonprofit famous for creating low-cost prosthetics, like the Jaipur Foot and the Stanford-Jaipur Knee. Known for its patient-centric culture and its focus on innovation, BMVSS has assisted more than one million people, including many land mine survivors. How can founder D.R. Mehta devise a strategy that will ensure the financial sustainability of BMVSS while sustaining its human impact well into the future? Harvard Business School Dean Srikant Datar discusses the importance of design thinking in ensuring a culture of innovation in his case, “BMVSS: Changing Lives, One Jaipur Limb at a Time.”

- 18 Apr 2023
What Happens When Banks Ditch Coal: The Impact Is 'More Than Anyone Thought'
Bank divestment policies that target coal reduced carbon dioxide emissions, says research by Boris Vallée and Daniel Green. Could the finance industry do even more to confront climate change?

The Best Person to Lead Your Company Doesn't Work There—Yet
Recruiting new executive talent to revive portfolio companies has helped private equity funds outperform major stock indexes, says research by Paul Gompers. Why don't more public companies go beyond their senior executives when looking for top leaders?

- 11 Apr 2023
A Rose by Any Other Name: Supply Chains and Carbon Emissions in the Flower Industry
Headquartered in Kitengela, Kenya, Sian Flowers exports roses to Europe. Because cut flowers have a limited shelf life and consumers want them to retain their appearance for as long as possible, Sian and its distributors used international air cargo to transport them to Amsterdam, where they were sold at auction and trucked to markets across Europe. But when the Covid-19 pandemic caused huge increases in shipping costs, Sian launched experiments to ship roses by ocean using refrigerated containers. The company reduced its costs and cut its carbon emissions, but is a flower that travels halfway around the world truly a “low-carbon rose”? Harvard Business School professors Willy Shih and Mike Toffel debate these questions and more in their case, “Sian Flowers: Fresher by Sea?”

Is Amazon a Retailer, a Tech Firm, or a Media Company? How AI Can Help Investors Decide
More companies are bringing seemingly unrelated businesses together in new ways, challenging traditional stock categories. MarcAntonio Awada and Suraj Srinivasan discuss how applying machine learning to regulatory data could reveal new opportunities for investors.

- 07 Apr 2023
When Celebrity ‘Crypto-Influencers’ Rake in Cash, Investors Lose Big
Kim Kardashian, Lindsay Lohan, and other entertainers have been accused of promoting crypto products on social media without disclosing conflicts. Research by Joseph Pacelli shows what can happen to eager investors who follow them.

- 31 Mar 2023
Can a ‘Basic Bundle’ of Health Insurance Cure Coverage Gaps and Spur Innovation?
One in 10 people in America lack health insurance, resulting in $40 billion of care that goes unpaid each year. Amitabh Chandra and colleagues say ensuring basic coverage for all residents, as other wealthy nations do, could address the most acute needs and unlock efficiency.

- 23 Mar 2023
As Climate Fears Mount, More Investors Turn to 'ESG' Funds Despite Few Rules
Regulations and ratings remain murky, but that's not deterring climate-conscious investors from paying more for funds with an ESG label. Research by Mark Egan and Malcolm Baker sizes up the premium these funds command. Is it time for more standards in impact investing?

- 14 Mar 2023
What Does the Failure of Silicon Valley Bank Say About the State of Finance?
Silicon Valley Bank wasn't ready for the Fed's interest rate hikes, but that's only part of the story. Victoria Ivashina and Erik Stafford probe the complex factors that led to the second-biggest bank failure ever.

- 13 Mar 2023
What Would It Take to Unlock Microfinance's Full Potential?
Microfinance has been seen as a vehicle for economic mobility in developing countries, but the results have been mixed. Research by Natalia Rigol and Ben Roth probes how different lending approaches might serve entrepreneurs better.

- 16 Feb 2023
ESG Activists Met the Moment at ExxonMobil, But Did They Succeed?
Engine No. 1, a small hedge fund on a mission to confront climate change, managed to do the impossible: Get dissident members on ExxonMobil's board. But lasting social impact has proved more elusive. Case studies by Mark Kramer, Shawn Cole, and Vikram Gandhi look at the complexities of shareholder activism.

- 07 Feb 2023
Supervisor of Sandwiches? More Companies Inflate Titles to Avoid Extra Pay
What does an assistant manager of bingo actually manage? Increasingly, companies are falsely classifying hourly workers as managers to avoid paying an estimated $4 billion a year in overtime, says research by Lauren Cohen.

- 31 Jan 2023
Can Insurance Technology Solve the Uninsured Driver Problem?
High fees prevent many drivers from buying auto insurance—often with catastrophic consequences. Raymond Kluender offers a novel way to make coverage affordable and roads safer: Let drivers pay for only the days they drive.
A meta-analysis: capital structure and firm performance
Journal of Economics and Development
ISSN : 1859-0020
Article publication date: 29 April 2020
Issue publication date: 29 May 2020
The paper aims at providing insights on the relationship between capital structure and performance of the firm by employing meta-analytical approach to obtain a synthesized result out of controversial studies as well as the sources for such inconsistency.
Design/methodology/approach
Using secondary data, the analysis is divided into two main parts with concerns to the overall strength of the relationship, the effect size and the potential paper-specific characteristics influencing the magnitude of impacts between leverage and firm performance (moderators of the relationship). Overall, a total number of 32 journals, reviews and school presses were selected besides online libraries and publishing platforms. There were 50 papers with 340 studies chosen from 2004 to 2019, of which data range from 1998 to 2017.
Using Hedges et al. (1985,1988), descriptive and quantitative analysis have been conducted to confirm that corporate performance is negatively related to capital decisions, which inclines toward trade-off model with agency costs and pecking order theory. The estimation induces rather small effect size that implies sufficiently large sample size to be effectively investigated. In terms of moderator analysis, random-effects meta-regression models of three different techniques are used to increase the robustness in research findings, showing statistically significant elements as publication status, factor of industry and proxy of firm performance.
Originality/value
This paper is one of the first papers presenting meta-analysis in capital structure and performance for two languages, Vietnamese and English, providing a consistent result with previous worldwide papers.
- Capital structure
- Firm performance
- Meta-analysis
Dao, B.T.T. and Ta, T.D.N. (2020), "A meta-analysis: capital structure and firm performance", Journal of Economics and Development , Vol. 22 No. 1, pp. 111-129. https://doi.org/10.1108/JED-12-2019-0072
Emerald Publishing Limited
Copyright © 2019, Binh Thi Thanh Dao and Tram Dieu Ngoc Ta
Published in Journal of Economics and Development . Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) license. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this license may be seen at http://creativecommons.org/licences/by/4.0/legalcode
1. Introduction
Capital structure of the firm, as defined by Baker and Martin (2011) , is the mixture of debt and equity that the firm employs to finance its productive assets, operations and future growth. It is a direct determinant of the overall costs of capital and contributes to the firm's total level of risks. The choice of different proportions of debt among mixed financing resources can impose major influences on the firm value, and thus on the wealth of the shareholders ( Baker and Martin, 2011 ). Since capital decision is one of the most important elements in corporate finance, it has attracted considerable concern of both academics and practitioners over the past few decades.
At the beginning of its theory development, capital structure was convinced to be irrelevant to the performance of corporations, as suggested by Modigliani and Miller (1958, 1963) .
However, given the existence of an imperfect market's conditions and behaviors, the concept of optimal capital structure emerges with the proposal of trade-off theory that integrates the effect of corporate taxes, financial distress and agency problems. On the other hand, the recognition of information asymmetry also leads to the appearance of signaling hypothesis and the pecking order theory, which neglect the term of an optimal leverage. Each theory, despite concerning the same relation of capital structure and firm performance, suggests quite a divergent collection of outcomes toward the sign of impacts between the two subjects of interest.
Myriad empirical studies have been conducted to confirm if the market is more inclined to the most suitable theories, but none of them has come close to a consensus. It is due to the fact that practices observed from the real marketplace are rather sophisticated and influenced by many relevant factors. Since the final outcomes of each study remain fractional and inconsistent, the need for a generalized conclusion comes into consideration as one of the most fundamental issues. Moreover, conventional research tends to focus on answering whether a significant relation between two variables exists, rather than reporting how much influence they have on one another, which underestimates the true value that a research is expected to contribute.
Originally used in medical study, meta-analysis has become more widespread in the field of finance and economics. However, these papers mostly work on the determinants of capital structure or firm performance separately and have rarely been investigated under the view of a relationship. Besides, in addition to the mutual relation between capital structure and firm performance, other accountable factors such as industry, business strategy of the firm or even paper-specific characteristics of each study can also be potential sources of controversial results, yet they have not been evaluated with appropriate level of emphasis. In fact, these third elements, besides providing insights on how the relationship of interest changes under different contexts, also offer solutions for the improvement in research design and sampling technique if they are properly scrutinized.
In general, the study is expected (1) to determine the strength of relationship between leverage and performance of the firm, both in terms of direction and quantified intensity, and (2) to explore possible factors that influence the magnitude of relationship between capital structure and firm performance.
The paper is divided into seven major sections. The first part of introduction will provide background knowledge and general idea of how the analysis manages to address the problem of controversial results in a coherent and logical way. Next, in literature review , five major theories of capital structure will be discussed to demonstrate the possible influence of leverage on the firm value. Around 15 empirical researches will be summarized, based on which hypotheses of this paper will be developed for future testing, including one on the relationship of interest and seven others concerning the moderating effect of potential third factors. The methodology is then explained with the basis of meta-analytical approaches as well as data collection and processing methods. After that, descriptive analysis will classify different groups of paper-specific features and exhibit descriptive statistics of the regression outcomes from the selected studies. In the fifth section of quantitative analysis , the strength of relationship between capital structure and firm performance, or the overall effect size, will be measured and combined according to the standardized framework proposed by Hedges and his colleagues. Then, moderator analysis will investigate the potential sources of heterogeneity among individual studies by performing different meta-regression techniques. It helps to explore possible moderating elements that impose certain influence on the magnitude of effect from leverage to the firm value; thus, the second purpose of this research will be fulfilled by this section. Besides, further test for small-study effect will also be conducted as a complementary analysis to examine if the quality of data implies any probability of the bias problem. Finally, significant remarks on the empirical findings will be summarized in the conclusion along with several limitations of the study and future opportunities of research.
2. Literature review
2.1 theoretical framework, modigliani and miller first proposition (1958).
This research is among the pioneers attempting to unravel the relationship between capital structure and firm value. Their proposition, usually referred to as MM theorem , was first introduced in 1958, and it brought up the most intriguing question about the relevance of funding decisions toward corporate performance. In particular, they argue that any changes in the current proportions of debt and equity cannot affect the value of the firm, which means no capital structure is better or worse, and firm values remain irrelevant to different levels of leverage ( Modigliani and Miller, 1958 ).
Modigliani and Miller alternative propositions (1963)
Using tax-deductible expenditure, the appearance of interest promotes lower tax payments and thus improves the firm's general cash flows ( Miller and Modigliani, 1963 ). Indeed, the two economists also discovered that the firm value is now positively related to financial leverage, which implies that corporations are fully capable of maximizing their values by raising their debt levels.
Trade-off Theory
states that the capital decision of one firm involves a trade-off between the tax benefit of debts and the costs of financial distress ( Kraus and Litzenberger, 1973 ).
When adopting the trade-off theory, each firm tends to set its own targeted debt-to-equity ratio and strives to achieve the expected optimum which varies with the characteristics of different firms ( Myers, 1984 )
Agency Theory
proposed by Jensen and Meckling (1976) and Myers (1977) investigates the influence of capital structure under a new perspective of corporate governance. Since the theory is developed on the basis of previous models, it shows consistent results with the trade-off theory. In general, agency problems involve the participation of three parties including managers, shareholders and creditors.

Agency problems between shareholders and managers
The first type of conflict is rooted when the managers own less than 100% of the share of the firm's assets, which induces less motivation behind their acts to maximize the firm value for shareholder's best interest ( Jensen and Meckling, 1976 ) With a low level of debt, managers will own more freedom to spend the firm's free cash flows, and hence they easily take on low-return projects and acquire unnecessary physical assets to enlarge the firm size, which is believed to reflect their own reputation. For such reasons, managers increase the agency costs of equity , which is detrimental to the firm performance. On the contrary, if the firm is funded by higher amount of leverage, the commitment to fulfill interest payments leaves managers with less freedom to distribute the cash flows; therefore, they are required to be more efficient in choosing investments and generally improve the firm performance.
Agency problems between shareholders and creditors
The second conflict arises when two groups of investors prefer different levels of risk-taking behaviors. In particular, shareholders may have the incentive to either take considerably risky projects or move toward underinvestment ( Ross et al. , 2013 ; Westerfield and Jaffe, 2013). Regarding the former motive in which shareholders take part in high-risk investments, they shall receive extra return if the projects succeed and share losses with their counterpart in any case of failure ( Jensen and Meckling, 1976 ). Concerning the second incentive, if a firm owns excessive amount of leverage, the significant probability of bankruptcy would discourage shareholders to take on new investments despite positive NPVs; hence, the firm becomes underinvested ( Myers, 1977 ).
Pecking Order Theory
is an alternative to the trade-off model that declares a negative relationship between firm's performance and its decision of financing. There are two rules as proposed by the pecking order ( Myers, 1984 ): (1) use internal financing and (2) issue safer securities first. In other words, the preference of financial instruments shall be prioritized as follows: internally generated funds, debt and equity. The driving force behind this arrangement generally stems from the problems of information asymmetry. According to Ross et al. (2013) , in some cases where the managers wish to embark on a risky project but the lenders, due to discrepancy of information, stay rather optimistic about the venture, the issuance of debt would be much likely to be overpriced just as the equity issuance. It leads to a major problem in which investors eventually recognize the pattern of issuing decisions for both equity and debt whenever they are overvalued under the managers' perspective. As a result, any public offering can then become less than a success since this phenomenon creates a never-ending cycle of skepticism between investors and managers of the firm.
Signaling Theory
is proposed by Ross (1977) in which the choice of debt-to-equity ratio is independent of the optimum concept and rather represented by the willingness of a firm in sending certain messages to the investors. Profitable firms sometimes attempt to push up the stock price by excessively increasing debt over its optimal level and mislead the market to believe in its inflated growth opportunity in the future. Indeed, they believe that the extra cost of issuing debts shall prevent less profitable firms from taking advantages of higher leverage as compared to those with better performance, despite the managers' attempt to fool the public ( Ross et al. , 2013 ). Additionally, Myers and Majluf (1984) propose the tendency in which managers are rather reluctant to issue equity when it is believed to be undervalued; consequently, investors tend to perceive issuance of stocks as a bad signal, assuming that managers offer equity to the public only if it is fairly priced or overpriced. In short, the relationship between leverage and firm performance is found positive under the signaling theory.
Among the five theories, only MM and Signaling support the positive relationship between leverage and firm performance, while the other three theories – Agency, Trade-off and Pecking order – support the negative relationship.
2.2 Empirical research
As a majority of theoretical frameworks provide equivalently credible arguments, it requires remarkable effort and profound knowledge to convince that one of them should be more competent and appropriate than the others, not to mention the influence of an inefficient market and different aspects of behavioral finance. For such reasons, myriad of empirical researches have been conducted to obtain statistical conclusions by representative observations in the market. Since the number of studies is clearly substantial, Table 1 in Appendix only includes several recently published articles to examine their main ideas and empirical results. In our knowledge, the paper of Hang et al. (2018) is the first publication on meta-analysis of factors influencing the capital structure, and a bit different from ours is the relationship between firm leverage and performance.
2.3 Hypothesis development
There is a negative relationship between capital structure and firm performance.
Regarding the second purpose of this meta-analysis, in general, the variation in each study can be traced to different qualitative features involving research designs, sampling methods or analytical techniques. As can be seen from Table 2 , many outcomes are reported with specific notes on the three elements that potentially influence the final conclusion on the relationship, such as the choice of indicators for firm performance, the condition of sample firms being listed or the relevance of business strategies and industrial factors accounted in each study. Indeed, Sánchez-Ballesta and García-Meca (2007) suggest that the contextual characteristics of analysis, proxies for firm value, econometric methods and types of firm can contribute further insights to explain the inconsistency in the prevailing impact of capital structure on the firm performance. Since the paper is expected to explore potential sources of heterogeneity that lead to divergent results, based on the empirical evidence discussed above, seven categorical characteristics of each paper are chosen to be scrutinized as potential moderators on the relation between firm value and leverage, namely: (1) publication status, (2) country development, (3) company ' s listed status, (4) industry factor, (5) business strategy, (6) proxy for firm performance and (7) econometric method for analyzing . In short, all the hypotheses included in this paper are summarized in Table 1 .
3. Research methodology
3.1 research design, 3.1.1 meta-analysis.
Meta-analysis , as explained by Borenstein et al. (2011) , refers to the statistically synthesized results from a series of studies collected through a methodological procedure. According to Glass (1976) , meta-analysis can be considered as “the analysis of analyses” where individual researches are gathered with the aim to integrate their knowledge and findings. In particular, meta-analysis allows separate empirical outcomes of different papers to be aggregated and compared after being transformed into one common metric called the effect size .
3.1.2 Meta-regression
Besides the purpose of obtaining a generalized empirical evidence on the relation of two variables, meta-analysis can also be advanced into meta-regression, or meta-regression analysis, which performs closer scrutiny on the third elements that potentially influence the strength of relationship.
According to Higgins and Green (2011) , meta-regression is quite similar in essence to simple regressions where a dependent variable is forecasted by one or more explanatory variables. However, meta-regression should be distinguished from simple regressions by two means. Firstly, the weight of each study is assigned based entirely on the precision of its effect estimates, in which larger studies tend to have stronger influence as compared to the smaller ones. Secondly, the existence of residual heterogeneity that cannot be explained by independent variables should be recognized and allowed in the analysis, giving rise to the term “random-effects meta-regression” ( Thompson and Sharp, 1999 ).
3.1.3 Generalized models and assumptions
Fixed-effects meta-regression is the extension of fixed-effect meta-analysis where the mean effect, θ , is developed into a linear predictor, β x i , such that.
(2) Random-effects meta-regression , similarly, is extended from the random-effects meta-analysis with consideration of the covariates.
y i = β x i + u i + ϵ i , where u i ∼ N ( 0 , τ 2 ) and ϵ i ∼ N ( 0 , σ i 2 ) .
3.2 Data selection method
3.2.1 data collection.
The process of collecting and evaluating data for a meta-analysis is of critical importance since it is one of the most significant factors that can contribute to the analytical success. Overall, a total number of 32 journals, reviews and school presses were selected [1] besides online libraries and publishing platforms, namely, Elsevier, JSTOR, ResearchGate, Wiley, SSRN and Springer. There were 50 papers with 340 studies chosen from 2004 to 2019, of which data ranged from 1998 to 2017.
3.2.2 Data evaluation and final sample size
After the first stage of massive data collection, four additional standards were established as predetermined requirements for the following screening procedure.
First of all, the general search for papers on relationship between capital structure and firm performance leads to two ways of defining main dependent variables where a minority of 7.4% choose leverage ratios and the other 92.6% choose firm value indicators. While there is no threshold on the number of studies needed for a meta-analysis ( Pigott and Terri, 2012 ), it remains more preferable to keep the data collected at its potential maximum.
Secondly, proxy for firm value can be divided into two main groups: accounting-based measures including return on asset (ROA), return on equity (ROE) and market-based ratio such as Tobin's Q.
Thirdly, further steps of data processing require the provision of at least two following figures: (1) beta coefficients of regression, and (2) t -statistics or p -value, which means studies without these numbers are also excluded.
Lastly, statistically significant outcomes tend to be utilized repeatedly in multiple works of the same authors under different forms such as dissertations, working papers and journal articles. At the end of the screening process, the final data officially consist of 34 papers which propose 245 studies served as observations for this meta-analysis. The time period also changed, as it now covers researches during 2012–2019, with a data set dated from 2000 to 2017.
4. Descriptive analysis
4.1 descriptive analysis of paper-specifics.
Since the purpose of meta-analysis is to examine the effect sizes as well as the potential impact of other qualitative characteristics on the intervention effects, it is essential to take a look at the descriptive summary of these paper-specific data.
As stated in Table 2 , the data collection takes into account all papers with no regard to publication status. Consequently, 71% of studies were published as review and journal articles, while 29% were not, since they are either graduate dissertations or master thesis (See Table 3 ).
Out of 245 studies, 17.1% analyze the relationship between capital structure and firm performance by classifying each group of firms by the industry that they are operating in. For the remaining researches, external environments such as industrial factors are neglected during analysis (See Table 4 ).
In terms of firm value indicators, number of studies employing accounting measures (ROA, ROE) amount up to 73.1% compared with 26.9% using market ratio (Tobin's Q). The prevalence of accounting-based indices is nearly three times higher than its counterpart, which means ROA and ROE are generally more favorable as representatives for firm performance than Tobin's Q (See Table 5 ).
Regarding statistical approaches, pooled OLS is a dominant method with the use of nearly 41% of the selected papers. Next, fixed-effects model ranks second in popularity with 30.2%, closely followed by its counterpart. Meanwhile, a modest 3% of the studies use GMM as their preferable method.
4.2 Descriptive analysis of study results
The development of meta-analysis is to provide a comparison and synthesis on the findings of individual researches; hence, it is no surprise to see inconsistent results collected from 245 separate studies. Table 6 shows a summary of conclusions according to their statistical outcomes at 5% level of significance.
As illustrated in Table 6 , negative relationship between capital structure and firm performance seems to be a prevalent result, accounting for nearly 50% of the consequences, whereas the proportions of positive and insignificant outcomes similarly vary around 26%.
Descriptive analysis of study results supports H1 : There is a negative relationship between capital structure and firm performance.
5. Quantitative analysis: overall effect size
Quantitative analysis is a crucial part of meta-analysis which generally concerns the determination of effect sizes. With regard to the rapid increase in the total number of studies and the evolution of statistics means, Gene Glass, an American statistician and researcher who originated the term “meta-analysis,” believed that “statistical significance is the least interesting thing about the results” as they should be able to answer not just the question of whether or not a relationship between two variable exists, but rather how strong the relation can be.
In general, the following section of quantitative analysis will cover two main parts, described below.
5.1 Hedges et al. 's method (1985,1988)
Based on the framework of Hedges et al. , effect sizes are represented by the Pearson “r” correlation coefficient of individual studies, which is appropriate and widely used for comparing results of two continuous variables.
The procedure from analyzing to interpreting the overall effect size is demonstrated in Figure 1 .
In general, each study is expected to produce one Pearson “ r ” correlation which will be transformed into its z -scale statistic by Fisher's method. Then, the combined effect size represented by z -score is obtained and converted back to receive the overall correlation for further interpretation ( Borenstein and Hedges, 2011 ; Higgins and Green, 2011 ).
5.1.1 Standardized effect sizes
It is noted that the values of “ r ” obtained from separate papers remain dependent on different research designs and not yet synthesized; thus, they are not directly interpretable. It explains why Pearson “ r ” should be transformed into a standardized measure of Fisher score “ Zr ” before combining the average true effect. According to Hedges and Olkin (1985) , Rosenthal (1991) and Hedges and Vevea (1998) , the transformation of “ r ” into “ Zr ” is proved to be capable of correcting skewness problems in the distribution of Pearson correlation coefficient. This statement is also supported by prior research of Silver and Dunlap (1987) who also observed a less distorted distribution in “ r ” with the complement of Fisher standardization.
One noticeable problem detected during data collection is that not all studies in management and finance provide Pearson “ r ” correlation in their analysis ( Rocca, 2010 ). Fortunately, Cooper and Hedges (1994) suggested a way of retrieving “ r ” using the t -Students as illustrated by Eqn 1 . (1) r i = t i 2 t i 2 + ⅆ f i where r i is the correlation coefficient of study i ; t i is the t -statistic of beta coefficients of study i ; df i is the degree of freedom that equals to n − ( k ′ + 1 ) ; n is the sample size and k ′ is the number of independent variables of study i .
Next step is to convert r i into Fisher Z -score by Eqn 2 ( Field and Gillett, 2010 ). (2) Z r i = 1 2 ln ( 1 + r i 1 − r i ) where Z r i is the standardized Z -score of the corresponding r i in study i; r i is the correlation coefficient of study i .
5.1.2 Weights under fixed-effects model
The first approach is based on a model which states that if the sample size is large enough, residual errors will converge toward 0 ( Hedges and Olkin, 1985 ), thus indicating an increase in the level of accuracy as more subjects are added to the sample of interest: (3) w i = n i − 3 where w i is the weight of study i among a total of k studies; n i is the sample size of study i.
In the second approach, it is recalled that fixed-effects model assumes one true effect size θ for every study, and its only source of error is reflected in the within-study variances, σ i 2 . In particular, with a smaller standard error, the estimation of effect size is appraised as more rigorous. Consequently, it leads to Eqn 4 , which simply shows the reverse relation between within-study variances and weights allocated to selected studies ( Hedges and Vevea, 1998 ). (4) w i = 1 σ i 2 = 1 SE i 2 where w i is the weight of study i among a total of k studies; SE i is the standard error of the estimate in study i.
5.1.3 Weights under random-effects model
While fixed-effects model allows no heterogeneity, random-effects model does the exact opposite, which results in the appearance of second variance component, τ 2 , during the computation of weights. Accordingly, the value of between-study variance must be incorporated as illustrated in Eqn 5 ( Hedges and Olkin, 1985 , Hedges and Vevea, 1998 ). (5) w i = 1 σ i 2 + τ 2
The estimation of between-study variance, τ 2 , proposed by Hedges and Olkin (1985) , is provided below. (6) τ HO 2 = max { 0 , 1 k − 1 ∑ ( y i − y ¯ ) 2 − 1 k ∑ σ i 2 }
where k is the total number of studies; y i is the effect size in study i ; y ¯ is the average effect size of k studies; σ i 2 is the within-study variance in study i.
However, this method only works when τ 2 is non-negative. In practice, several researches have shown the possibility of negative value of τ 2 . It is then set back to 0 according to the rule stated above and seemingly denies the existence of heterogeneity. To promote a more effective measure, Chung et al. (2013) suggested the use of DerSimonian and Laird's (1986) estimate that employs method of moment estimator as follows: (7) τ DL 2 = ∑ i s i − 2 ( y i − μ ˆ ) 2 − ( n − 1 ) ∑ i s i − 2 − ∑ i s i − 4 ∑ i s i − 2 where s i is the standard error of the estimate [2] in study i ;
y i is the effect size in study i ;
n is the total number of studies;
μ ˆ is defined by the formula μ ˆ = ∑ i y i / s i 2 ∑ i 1 / s i 2
5.1.4 Overall effect size
Eqn 8 provides the calculation of “ Zr ” as suggested by Hedges and Olkin (1985) and Hedges and Vevea (1998) , which takes into account the distribution of the weights: (8) Z r ¯ = ∑ i = 1 k w i Z r i ∑ i = 1 k w i where Z r ¯ is the weighted mean of effect sizes from k studies ;
Z r i is the standardized effect size of study i;
w i is the corresponding weight of study i among a total of k studies.
The standard error for weighted average “ Zr ” is calculated as below. (9) SE ( Z r ¯ ) = 1 ∑ i = 1 k w i where SE ( Z r ¯ ) is the standard error of the weighted mean of effect sizes from k studies ;
After achieving the mean value of “ Zr ,” it must be converted into its correlation form for final conclusions on the strength of relationship between capital structure and firm performance. Borenstein et al. (2011) introduced the conversion formula for “ r ” in the following equation. (10) r overall = e ( 2 × Z r ¯ ) − 1 e ( 2 × Z r ¯ ) + 1 where r overall is the overall effect size as measured by correlations;
Z r ¯ is the weighted mean of effect sizes from k studies.
For the interpretation of results, Cohen (1977) proposed the “rules of thumb” as Table 8 .
5.2 Discussion of findings
Given all essential elements, the calculation of overall effect size (ES) between capital structure and firm value was performed on MS Excel spreadsheets in several different ways with the aim to provide diverse perspectives on the same subject. The main statistics are summarized in Table 9 .
It is evident that the combined effect sizes under z -scale, despite standardized or unstandardized measurements, are all negative. Five out of six 95% confidence intervals stay below zero, except for case (3) where the upper limit of confidence surpasses this value. However, the third method only accounts for unweighted outcomes from statistically significant studies.
Interestingly, the confidence interval under random-effects model is closely similar to that of fixed-effects model weighted by the within-study variances, while it is generally expected to be larger. However, as compared to method (5) where “ Zr ” is weighted based on adjusted sample size, the random-effects approach indeed provides a wider interval, hence showing a more conservative result (See Table 10 ).
Quantitative analysis of overall effect size confirms H1 : There is a negative relationship between capital structure and firm performance.
6. Moderator analysis
While the main interest of a simple meta-analysis is the combination of an overall effect size, moderator analysis is rather an extension which performs meta-regression to investigate relevant factors that may be influential to the relationship of interest ( Rocca, 2010 ). In particular, the magnitude of impact measured between two variables is expected to diverse from study to study, partially due to the differences in paper-specific characteristics, such as clinical diversity and methodological diversity ( Harbord, 2010 ). By the use of meta-regression, the amount of statistical heterogeneity among empirical results can be examined to further understand how much of the variation stems from one or more elements of paper-specifics ( Thompson and Higgins, 2002 ).
6.1 Specification of variables and methods
6.1.1 moderating variables.
In moderator analysis, the standardized effect size of leverage on firm performance, “ Zr ”, becomes the dependent variable since it represents the magnitude of impacts and is sensitive to different strength across studies ( Rocca, 2010 ). Meanwhile, other paper-specific features that potentially induce controversial results should be chosen as the explanatory variables ( Wolf, 1986 ; Rosenthal, 1991 ). In particular, the examination of heterogeneity utilizes dichotomous covariates and subgroups of observations according to various categorical characteristics. Since dummy variables are employed in the regression, the coefficients would emphasize on the differences of effect sizes between subgroups in comparison with another nominated subgroup of which all dummy variables are assigned to 0 ( Higgins and Green, 2011 ). We use the moderator variables as dummy variable. For example, D-publication = 1 if the study is published, and = 0 otherwise. Theses moderating variables are based on hypotheses H2 - H8 .
6.1.2 Econometric method
Many researchers suggest the use of random-effects model as the proper method for meta-regression, such as Hedges and Olkin (1985) , Cooper and Hedges (1994) and Hedges and Vevea (1998) . This method considers both within-study variance, σ i 2 , and between-study variance, τ 2 , which means two sources of errors due to two levels of sampling are addressed simultaneously . Furthermore, in contrast to fixed-effect model that assumes homogeneity across studies, random-effects model accepts “residual heterogeneity,” which is the between-study variance component that cannot be explained by the covariates. In conclusion, for the reasons above, random-effects meta-regression is selected as the appropriate method for moderator investigation.
In fact, the default estimation method for τ 2 by “metareg” is the restricted maximum likelihood (REML) since this model takes into account the problem of autocorrelation and works well with unbalanced or correlated data ( Rocca, 2010 ). Hence, it is suggested by both Thompson and Sharp (1999) and Viechtbauer (2005) , who also perform comparison among methods and conclude that REML is generally the preferable approach in meta-regression. Therefore, based on the aforementioned opinions, REML is decided to be the benchmark model for this moderator analysis. However, two other options of moment-estimator and empirical Bayes will also be included to increase the robustness of investigation.
6.2 Regression models
6.2.1 initial regression models.
After performing “metareg” command in Stata 14, the initial regression model uses eight independent variables such as D_publication, D_development, D_listed, D_industry, D_strategy, D_proxy, D_ols, D_fem and D_rem. In general, the moderating effect on the relationship between capital structure and firm performance is the joint contribution of publication status, factor of industry and proxy of firm performance . Hence, three hypotheses with respect to these moderators, including H2, H5 and H7, are statistically supported, while the remaining statements are rejected.
6.2.2 Final regression models
The final models are conducted with the participation of three significant variables discovered in previous section, including D_publication, D_industry and D_proxy.
In comparison with Table 11 , all values of the adjusted R 2 generally increase, especially in the case of moments method where it turns from an abnormal negative figure to a positive number despite remaining extremely low (0.32%), confirmed together with the F -statistics, which implies a considerable rise in overall significance of each model.
On the other hand, VIF test shows remarkable reduction in value for all regressors, and hence produces smaller mean VIF at only 2.02, much below 10, confirming the absence of multicollinearity in the regression.
Meanwhile, no change is observed in the index of variability, I 2 . It is understandable since the proportion of variation due to between-study variance is independent of the moderators taken into account.
7. Conclusion
As indicated in the Introduction, the paper is expected to answer the following research questions: What is the overall effect size between capital structure and firm performance?
In particular, two analyses are included to address the first inquiry: a descriptive analysis to predict the sign that should be expected from the relationship of interest, and a standard meta-analysis, or quantitative analysis, to standardize individual outcomes and estimate the overall effect size that leverage imposes on the firm performance. These two approaches are employed to test Hypothesis 1 which states that there is a negative relationship between the two variables of concern.
At first, the descriptive analysis of study results has clearly shown the number of studies proposing negative outcomes dominate those with positive and insignificant conclusions. Hence, H1 is initially supported. Consequently, based on Hedges and his colleagues' framework, the quantitative analysis of the overall effect size is conducted, which produces confidence intervals with the upper limits generally below 0. Thus, as a matter of fact, values of the mean effect size are negative despite the use of standardized or unstandardized methods, fixed-effects or random-effects models. The consistent results statistically confirm H1 , and possibly imply the prevailing relevance of trade-off theory with agency costs as well as the theory of pecking order in financial practices. In addition, Cohen's “rule of thumbs” ( 1977 ) suggests that the combined effect between capital structure and firm performance is relatively small, which does not mean it is insignificant in the real market, but rather recommends future research concerning this subject affords a sufficiently large sample size of 452 participants to investigate the underlying impacts in the most effective way. In this part, Q -test for homogeneity is also performed, and the result indicates the existence of heterogeneity across studies, which emphasizes the need of meta-regression for the next question to obtain appropriate answers.
7.1 Moderator analysis confirms the following hypotheses:
There is a negatively statistically significant effect of publication status as a moderator on the relationship between capital structure and firm performance.
There is a positively statistically significant effect of industry as a moderator on the relationship between capital structure and firm performance.
There is a negatively statistically significant effect of proxy of firm performance as a moderator on the relationship between capital structure and firm performance.
The analysis of the paper still encounters some limitations. Firstly, besides small-study effects, the concept of publication bias in meta-analysis also refers to many other problems as well, including bias during the process of data collection. In fact, all the studies collected are either in English or in Vietnamese, indicating a language-bias issue. Furthermore, they are completely free of charge due to financial capability, which implies the possibility of selection bias in which the collection of data is dependent on free academic resources.
Secondly, the estimation of effect sizes in quantitative analysis requires the presence of t -statistics. However, after the evaluation of data, 30 studies were excluded due to zero p -values, which make it impossible to infer the corresponding t -statistics by all means. In other words, 30 studies with statistically significant results were omitted from the analysis.
Procedure to analyze overall effect size on correlation.
Hypothesis testing on the relationship between leverage and firm performance
Number of studies categorized by publication status
Number of studies considering influence of industry
Number of studies categorized by proxies of firm performance
Number of studies categorized by statistical methods
Study results on the relationship between leverage and firm performance
Descriptive statistics of beta coefficients for the effect of capital structure
Benchmarks for the magnitude of effect and suggested sample size
Overall effect sizes by correlation
Random-effects meta-regression final results
Source(s) : Author's summary (2019)
Please refer to TableA1 for the list of journals, reviews and university presses originally collected.
Note that s i − 2 = 1 / s i 2 and s i − 4 = 1 / s i 4 .
Appendix 2List of journals for data collection
Indian Journal of Finance.
Review of European Studies.
Review of Finance.
The Singapore Economic Review.
Journal of Marine Science and Technology.
External Economics Review.
Journal of Science.
Science of Management and Economics Review.
Economics and Business Review.
University of Twente Press Journal.
Journal of Economics and Finance.
Accounting and Taxation Review.
Applied Economics and Finance.
Proceedings of the Academy of Finance.
International Journal of Business and Commerce.
Journal of Competitiveness.
Journal of Risk and Financial Management.
Journal of Natural and Social Science.
Journal of Business Perspective.
Global Journal of Management and Business Research.
Science Review of Ho Chi Minh Open University.
The Quarterly Review of Economics and Finance.
International Journal of Academic Research in Economics and Management Sciences.
Journal of Emerging Trends in Economics and Management.
Eurasian Journal of Business and Management.
Turkish Journal of Economics and Administrative Sciences.
Global Illuminators Publishing.
International Journal of Accounting and Financial Reporting.
International Journal of Environment, Agriculture and Biotechnology.
Management Science and Engineering.
Journal of Finance and Economics Research.
Afza , T. and Ahmed , N. ( 2017 ), “ Capital structure, business strategy and firm's performance in Pakistan ”, European Journal of Natural and Social Sciences , Vol. 6 No. 2 , pp. 302 - 328 .
Avci , E. ( 2016 ), “ Capital structure and Firm performance: an application on manufacturing industry ”, Marmara University Journal of Economics and Administrative Sciences , pp. 15 - 30 .
Baker , H. and Martin , G. ( 2011 ), Capital Structure and Corporate Financing Decisions: Theory, Evidence, and Practice , John Wiley and Sons .
Borenstein , M. , Hedges , L.V. , Higgins , J.P. and Rothstein , H.R. ( 2011 ), Introduction to Meta-Analysis , John Wiley and Sons .
Chadha , S. and Sharma , A.K. ( 2016 ), “ Capital structure and firm performance: empirical evidence from India ”, Vision , Vol. 19 No. 4 , pp. 295 - 302 .
Chung , Y. , Rabe-Hesketh , S. and Choi , I.-H. ( 2013 ), “ Avoiding zero between-study variance estimates in random-effects meta-analysis ”, Statistics in Medicine , pp. 4071 - 4089 .
Cohen , J. ( 1977 ), Statistical Power Analysis for the Behavioral Sciences , Academic Press , New York, NY .
Cooper , H. and Hedges , L. ( 1994 ), The Handbook of Research Synthesis , Russell Sage Foundation , New York, NY .
DerSimonian , R. and Laird , N. ( 1986 ), “ Meta-analysis in clinical trials ”, Controlled Clinical Trials , pp. 177 - 188 .
Field , A.P. and Gillett , R. ( 2010 ), “ How to do a meta-analysis ”, British Journal of Mathematical and Statistical Psychology , pp. 665 - 694 .
Fosu , S. ( 2013 ), “ Capital structure, product market competition and firm performance: evidence form South Africa ”, The Quartely Review of Economics and Finance , pp. 140 - 151 .
Glass , G.V. ( 1976 ), “ Primary, secondary and meta-analysis of research ”, Educational Researcher , pp. 3 - 8 .
Hang , M. , Geyer-Klingeberg , J. , Rathgeber , A. and Stöckl , S. ( 2018 ), “ A meta-study of the determinants of corporate capital structure ”, Quarterly Review of Economics and Finance , Vol. 68 , pp. 211 - 225 .
Harbord , R. ( 2010 ), “ Investigating heterogeneity: subgroup analysis and meta-regression ”, Cochrane Statistical Methods Group Training Course , University of Bristol , Cardiff .
Harbord , R.M. and Higgins , J.P. ( 2008 ), “ Meta-regression in stata ”, The Stata Journal , pp. 493 - 519 .
Hedges , L. and Olkin , I. ( 1985 ), Statistical Methods for Meta-Analysis , Academic Press , FL .
Hedges , L. and Vevea , J. ( 1998 ), “ Fixed- and random-effects models in meta-analysis ”, Psychological Methods , pp. 486 - 504 .
Higgins , J.P. and Green , S. ( 2011 ), Cochrane Handbook for Systematic Reviews of Interventions , The Cochrane Collaboration .
Hoang , T.T. ( 2015 ), “ The effect of capital structure on corporate performance: evidence in Vietnam ”, Proceeding GSTAR , Global Illuminators Publishing , pp. 140 - 155 .
Jensen , M.C. and Meckling , W.H. ( 1976 ), “ Theory of the firm: managerial behavior, agency costs and ownership structure ”, Journal of Financial Economics , pp. 305 - 360 .
Jiahui , M.A. ( 2015 ), “ Relationship between capital structure and firm performance: evidence from growing enterprise market in China ”, Management Science and Engineering , pp. 45 - 49 .
Kraus , W. and Litzenberger , R. ( 1973 ), “ A state-preference model of optimal financial leverage ”, Journal of Finance , pp. 911 - 922 .
Mehmood , R. , Hunjra , A.I. and Chani , M.I. ( 2019 ), “ The impact of corporate diversification and financial structure on firm performance: evidence from South Asian countries ”, Journal of Risk and Financial Management .
Miller , M. and Modigliani , F. ( 1963 ), “ Taxes and the cost of capital: a correction ”, American Economic Review , pp. 433 - 443 .
Modigliani , F. and Miller , M. ( 1958 ), “ The cost of capital, corporate finance and the theory of investment ”, American Economic Review , pp. 261 - 297 .
Myers , S. ( 1984 ), “ The capital structure puzzle ”, Journal of Finance , pp. 575 - 592 .
Myers , S.C. ( 1977 ), “ Determinants of corporate borrowing ”, Journal of Financial Economics , pp. 147 - 175 .
Myers , S. and Majluf , N. ( 1984 ), “ Corporate financing and investment decisions when firms have information that investors do not have ”, Journal of Financial Economics , pp. 31 - 49 .
Nguyen , T.M. and Dang , T.L. ( 2017 ), “ Impact of ownership structure on the performance of Vietnam's listed companies on stock exchange ”, VNU Journal of Science: Economics and Business , pp. 23 - 33 .
Olajide , O.S. , Funmi , S.R. and Olayemi , S.O. ( 2017 ), “ Capital structure - firm performance relationship: EMpirical evidence from African countries ”, Journal of Emerging Trends in Economics and Management Sciences , pp. 82 - 95 .
Phan , T.H. ( 2016 ), “ Impact of capital structure on firm performance ”, Tạp Chí Tài Chính- Journal of Finance .
Pigott and Terri , D. ( 2012 ), Advances in Meta-Analysis , 1st ed. , Springer-Verlag New York, NY .
Rocca , M.L. ( 2010 ), Is Ownership a Complement to Debt in Affecting Firm's Value? A Meta-Analysis , University of Calabria .
Rosenthal , R. ( 1991 ), Meta-analytic Procedures for Social Research , Sage , Newbury Park .
Ross , S.A. ( 1977 ), “ The determination of financial structure: the incentive-signalling approach ”, The Bell Journal of Economics , pp. 23 - 40 .
Ross , S.A. , Westerfield , R.W. and Jaffe , J.F. ( 2013 ), Corporate Finance , 10th ed. , McGraw-Hill Irwin , New York, NY .
Sánchez-Ballesta , J. and García-Meca , E. ( 2007 ), “ A meta-analytic vision of the effect of ownership structure on firm performance ”, Corporate Governance: An International Review , Vol. 15 No. 5 , pp. 879 - 892 .
Silver , N. and Dunlap , W. ( 1987 ), “ Averaging correlation coefficients: should Fisher's Z transformation be used? ”, Journal of Applied Psychology , pp. 146 - 148 .
Thompson , S. and Higgins , J. ( 2002 ), “ How should meta-regression analyses be undertaken and interpreted? ”, Statistics in Medicine , pp. 1559 - 1573 .
Thompson , S. and Sharp , S. ( 1999 ), “ Explaining heterogeneity in meta-analysis: a comparison of methods ”, Statistics in Medicine , pp. 2693 - 2708 .
Tran , T.B. , Nguyen , V.Đ. and Pham , H.C. ( 2017 ), “ Analyzing the impact of capital structure on the performance of joint stock companies in Thua Thien Hue province ”, Journal of Management Science and Economics .
Viechtbauer , W. ( 2005 ), “ Bias and efficiency of meta‐analytic variance estimators in the random‐effects model ”, Journal of Educational and Behavioral Statistics , pp. 261 - 293 .
Vijayakumaran , R. ( 2017 ), “ Capital structure decisions and corporate performance: evidence from Chinese listed industrial firms ”, International Journal of Accounting and Financial Reporting , Vol. 7 No. 2 , pp. 562 - 576 .
Vo , M.L. ( 2016 ), “ Impact of capital structure on the value of non-financial companies ”, Journal of Finance .
Vuong , B.N. , Vu , T.Q. and Mitra , P. ( 2017 ), “ Impact of capital structure on firm's financial performance ”, Journal of Finance and Economics Research , Vol. 2 No. 1 , pp. 18 - 31 .
Vuong , Q.D. ( 2017 ), “ The impact of capital structure on performance of industrial commodity and services firms llisted on Vietnamese stock exchange ”, International Journal of Environment, Agriculture and Biotechnology , Vol. 2 No. 3 , pp. 1162 - 1168 .
Wolf , S. ( 1986 ), Meta-analysis , Sage , Newbury Park, CA .
Corresponding author
Related articles, we’re listening — tell us what you think, something didn’t work….
Report bugs here
All feedback is valuable
Please share your general feedback
Join us on our journey
Platform update page.
Visit emeraldpublishing.com/platformupdate to discover the latest news and updates
Questions & More Information
Answers to the most commonly asked questions here
Free Research Paper Samples, Research Proposal Examples and Tips | UsefulResearchPapers.com
Research proposal on financial performance.
April 9, 2014 UsefulResearchPapers Research Proposals 0
Financial performance is the indicator of the financial activity of the firm and the success and effectiveness of its work. Naturally, financial performance can be divided into two categories: positive and negative financial performance. The positive performance is the one which is characterized with high cash flow, high profit of the company and the total increase of its potential.
Negative financial performance is the opposite process which is described with the loss of the capital, crisis and total reduction of the productiveness and possible improvement of the work of the firm. A successful businessman is obliged to follow the indicator of financial performance all the time if he wants to evaluate the effectiveness of his firm objectively. Financial performance is divided into a few periods of the company’s activity. the expert can follow the performance of the company in short and long terms, for example, the financial performance of the week, month, season, year and several years of work.
Click here to get research proposal writing help on Financial Performance topics!
The indicator is very useful for statistics making and decision making, because enables to compare the success and failure of the firm in different periods of time. If the employer understands that the new strategy of production has increased the financial performance of the company in comparison with the previous months, it is a signal that the strategy is a constructive and useful one. On the contrary, if the financial performance reduces, the new strategy is a failure and should be improved rapidly. It is important to react to the changes in the scale of the financial performance rapidly in order to be able to change the situation for the better and avoid negative consequences and crises.
Financial performance is an important indicator of the effectiveness of the work of the chosen firm. The student is able to observe the issue on financial performance form the alternative point of view and suggest his own vision and explanation to the problem. Everyone understands the need of the constant monitoring of the indicator of the firm’s financial performance if he wants to reach success in business. A professional research proposal should contain a quality project which would present the purpose of the research, the problematic points of the matter on financial performance and the methodology of the improvement of the problem.
A research proposal is written for the persuasive purpose and the student should be informed about the right order of its writing. The Internet is a constructive and multitasking helper and can provide the student with a free example research proposal on financial performance explaining the process of writing form all sides. The young person is able to demonstrate his skills and knowledge following the advice of a free sample research proposal on financial performance and the manner of its composition.
At EssayLib.com writing service you can order a custom research proposal on Financial Performance topics. Your proposal will be written from scratch. We hire top-rated PhD and Master’s writers only to provide students with professional research proposal help at affordable rates. Each customer will get a non-plagiarized paper with timely delivery. Just visit our website and fill in the order form with all proposal details:

Enjoy our professional research proposal writing service!
Similar Posts:
- Financial Analysis Research Paper
- Research Report on Customer Satisfaction
- Research Proposal on Employee Performance
Copyright © 2023 | WordPress Theme by MH Themes
Research Papers on Financial Analysis
Financial Analysis is the process of evaluating businesses, projects, budgets and other finance-related entities to determine their suitability for investment. Typically, financial analysis research paper is used to analyze whether an entity is stable, solvent, liquid, or profitable enough to be invested in. Researchomatic offers thousands of research papers on Financial Analysis, enabling students to write effectively on a wide range of related topics.
Nike - Financial Performance
- Click to Read More
Managing Financial Performance
Remuneration and performance, lowe’s corporation, performance measurement of apple, inc, financial instruments, should we rent or buy a house, financial reporting and analysis: barnes & nobles, target's strategic and financial planning, generate free bibliography in all citation styles.
Researchomatic helps you cite your academic research in multiple formats, such as APA, MLA, Harvard, Chicago & Many more. Try it for Free!

IMAGES
VIDEO
COMMENTS
RESEARCHES ON FINANCIAL PERFORMANCE October 2020 Publisher: Nobel Akademik Yayıncılık ISBN: 978-625-7258-23-4 Authors: Bener Güngör Ceyda Yerdelen Kaygın Kafkas University Musa Gün Recep Tayyip...
In this paper, we adopt this broader view of corporate purpose, as the meaning of a firm's work beyond quantitative measures of financial performance. For example, a firm's purpose may be to fundamentally upend how an industry operates. Relatedly, one of the authors of this study, prior to joining
This paper seeks to understand corporate financial performance during the Covid-19 period, collected from various related sources. This research is designed using a qualitative approach...
Financial performance is the achievement of the company's financial performance for a certain period covering the collection and allocation of finance measured by capital adequacy,...
Executive Summary Meta-studies examining the relationship between ESG and financial performance have a decades-long history. Almost all the articles they cover, however, were written before 2015. Those analyses found positive correlations between ESG performance and operational eficiencies, stock performance and lower cost of capital.
In this paper, fuzzy-set qualitative comparative analysis (fsQCA) is used to identify the configurations of conditions that lead to high or low financial performance (return on equity) for a sample of companies in the IBEX 35.
Based on a sample of 45 articles which analyzed the corporate financial performance, published during 2014-2019, was established a database which details: the researches' topic; dependent and independent analyzed variables (and the indicators used for their assessment); samples; sources of data and periods in which they have been collected; resu...
In this paper, I provide an overview of the research on the real effects of financial reporting on investing and financing decisions made by firms. Accounting can improve investment efficiency and affect nearly every aspect of the financing decision by reducing information asymmetry and improving monitoring.
Abstract: This study aims at empirically exploring the influence of sustainability *Duc Cuong Pham School of Accounting and Auditing, the National Economics University, practices on the finan cial performance of 116 listed Swedish companies in the year Vietnam Email: [email protected] 2019.
Financial performance is an indicator of the financial stability and the health of a firm. It is a measure of how well a firm uses its assets to generate revenues, a firm's credibility, and its ability to pay off debts. To study the theoretical development, empirical examinations, and growing trend of financial performance research, this study reviewed the financial performance literature ...
The author suggests the future research in the areas of financial measures and value relevance that researchers should focus on comparing operational performance on the same sorts of business especially for intellectual capital which becomes the major cost of competition. Furthermore, in the area of performance, measures should be expanded to ...
The impact of sustainability practices on financial performance: empirical evidence from Sweden Duc Cuong Pham , Thi Ngoc Anh Do , Thanh Nga Doan , Thi Xuan Hong Nguyen & Thi Kim Yen Pham | Albert W. K. Tan (Reviewing editor) Article: 1912526 | Received 01 Jan 2021, Accepted 31 Mar 2021, Published online: 20 Apr 2021 Cite this article
17 Aug 2023 Research & Ideas 'Not a Bunch of Weirdos': Why Mainstream Investors Buy Crypto by Ben Rand Bitcoin might seem like the preferred tender of conspiracy theorists and criminals, but everyday investors are increasingly embracing crypto.
Analysis of Financial Performance: A Study of Selected Pharmaceutical Companies Authors: Ashok Panigrahi Narsee Monjee Institute of Management Studies Abstract A firm's performance...
There were 50 papers with 340 studies chosen from 2004 to 2019, of which data range from 1998 to 2017.,Using Hedges et al. (1985,1988), descriptive and quantitative analysis have been conducted to confirm that corporate performance is negatively related to capital decisions, which inclines toward trade-off model with agency costs and pecking ...
Abstract. Working capital management is one of the most important decisions that affect an organisation's financial performance. Despite the importance of this topic, the empirical evidence for emerging economies is scarce; therefore, this research attempts to estimate and compare how investment in working capital impacts the financial performance of companies listed on the stock exchanges ...
Financial Performance Analysis-A Case Study Authors: Amalendu Bhunia University of Kalyani Somnath Mukhuti University of Calcutta Gautam Roy University of Kalyani Discover the world's research...
The identified internal financial determinants were Export Intensity (EXIN), Growth (GRT), Capital Structure (CS), Profitability Ratio (PR), Research and Development Intensity (RDI), Liquidity (LIQ), Non-Debt Tax Shield (NDTS), Interest Coverage Ratio (ICR), Tax (TAX), Operating Efficiency (Dividend Pay Out (DPOT), Capital Intensity (CIN), Tangi...
Financial Performance Analysis (MBA project) January 2019 DOI:10.13140/RG.2.2.33643.39203 Authors: Wesen Legessa Tekatel Jimma University Download file PDFRead file Preprints and early-stage...
In our research approach we use bibliometric technique to analyze 10 years of publications in Web of Science (WoS) database and present a comprehensive contextual picture of financial risk research. We analyzed 3024 publications by identifying the most prominent journals, authors, articles, countries and collaboration among authors and countries.
Results: From the results in the regression coefficient table it was observed that financial performance is influenced by budgeting process. This was indicated by (Beta of 0.268) and (Sig =0.033<0.05), meaning that financial performance is influenced by employee participation by 26.8%.
April 9, 2014 UsefulResearchPapers Research Proposals 0. Financial performance is the indicator of the financial activity of the firm and the success and effectiveness of its work. Naturally, financial performance can be divided into two categories: positive and negative financial performance. The positive performance is the one which is ...
Financial Analysis is the process of evaluating businesses, projects, budgets and other finance-related entities to determine their suitability for investment. Typically, financial analysis research paper is used to analyze whether an entity is stable, solvent, liquid, or profitable enough to be invested in. Researchomatic offers thousands of ...
Hiring committees should "measure the egotism of candidates" for the roles, say researchers who compared leaders' traits and institutional outcomes. Self-important university leaders have long been the scourge of faculty, and a British study supports that view—finding evidence that "narcissistic" vice chancellors, who are equivalent to American university presidents, really do make ...