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dc.contributor.authorGolec, Anna
dc.date.accessioned2019-07-12T11:41:37Z
dc.date.available2019-07-12T11:41:37Z
dc.date.issued2019
dc.identifier.issn0208-6018
dc.identifier.urihttp://hdl.handle.net/11089/29426
dc.description.abstractThe aim of this study is to verify whether Beneish M‑Score model can be useful in detecting Polish companies involved in earning management practices that lead to adverse or disclaimer of auditors’ opinion. The sample covers 24 pairs of firms listed on Warsaw Stock Exchange or New Connect (alternative market). The findings generally indicate that with –2.22 point cut‑off the model was able to identify 67% of manipulators and 75% non‑manipulators correctly. The accuracy of the model improved from 71% to 75% after shifting the cut‑off point to –1.98. Another observation was that high changes in M‑Score values turned out to be better indicator of manipulation and the classification based on 35% change in year‑to‑year values reached 85% accuracy.en_GB
dc.description.abstractCelem artykułu jest ocena, czy model Beneisha może stanowić użyteczne narzędzie do wykrywania manipulacji wynikami finansowymi, które prowadziły do wydania negatywnej opinii biegłego rewidenta lub odmowy jej wydania w polskich spółkach kapitałowych. Badaniem objęto 24 pary przedsiębiorstw z głównego rynku Giełdy Papierów Wartościowych w Warszawie oraz z rynku alternatywnego New Connect. Z przeprowadzonych analiz wynika, że przy punkcie granicznym –2,22 model poprawnie identyfikował 67% manipulatorów i 75% niemanipulatorów. Dokładność modelu wzrastała z 71% do 75% wraz z przesuwaniem punktu odcięcia do –1,98. Kolejną obserwacją był fakt, że duże zmiany w wartościach M‑Score okazały się lepszym kryterium oceny. Klasyfikacja podmiotów na podstawie 35% zmiany wskaźnika rok do roku pozwoliła zwiększyć dokładność grupowania do 85%.pl_PL
dc.language.isoplpl_PL
dc.publisherWydawnictwo Uniwersytetu Łódzkiegopl_PL
dc.relation.ispartofseriesActa Universitatis Lodziensis. Folia Oeconomica; 341
dc.rightsThis work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.pl_PL
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0pl_PL
dc.subjectBeneish Modelen_GB
dc.subjectM-Scoreen_GB
dc.subjectfinancial statement manipulationen_GB
dc.subjectPolanden_GB
dc.subjectlisted companiesen_GB
dc.subjectmodel Beneishapl_PL
dc.subjectM‑Scorepl_PL
dc.subjectmanipulacje wynikami finansowymipl_PL
dc.subjectPolskapl_PL
dc.subjectrynek kapitałowypl_PL
dc.titleOcena skuteczności modelu Beneisha w wykrywaniu manipulacji w sprawozdaniach finansowychpl_PL
dc.title.alternativeEffectiveness of the Beneish Model in Detecting Financial Statement Manipulationsen_GB
dc.typeArticlepl_PL
dc.page.number161-182
dc.contributor.authorAffiliationUniwersytet Gdański
dc.identifier.eissn2353-7663
dc.referencesAnh N. H., Linh N. H. (2016), Using the M‑score Model in Detecting Earnings Management: Evidence from Non‑Financial Vietnamese Listed Companies VNU, „Journal of Science: Economics and Business”, t. 32, nr 2, s. 14–23.pl_PL
dc.referencesAta H., Seyrek I. (2009), The Use of Data Mining Techniques in Detecting Fraudulent Financial Statements: An Application on Manufacturing Firms, „The Journal of Faculty of Economics and Administrative Sciences”, nr 14(2), s. 157–170.pl_PL
dc.referencesBeneish M. D. (1999), The detection of earnings manipulation, „Financial Analysts Journal”, t. 55, nr 5, s. 24–36.pl_PL
dc.referencesBeneish M. D., Lee C. M.C., Nichols D. C. (2013), Earnings Manipulation and Expected Returns, „Financial Analysts Journal”, t. 69, nr 2, s. 57–82.pl_PL
dc.referencesDeAngelo L. (1986), Accounting numbers as market valuation substitutes: A study of management buyouts of public stockholders, „The Accounting Review”, nr 61, s. 400–420.pl_PL
dc.referencesDechow P. M., Dichev I. D. (2002), The quality of accruals and earnings: The role of accrual estimation errors, „The Accounting Review”, nr 77, s. 35–59.pl_PL
dc.referencesDechow P. M., Richardson S. A., Tuna I. (2003), Why are earnings kinky? An examination of the earnings management explanation, „Review of Accounting Studies”, nr 8, s. 355–384.pl_PL
dc.referencesDechow P. M., Sloan R. G. (1991), Executive incentives and the horizon problem: An empirical investigation, „Journal of Accounting and Economics”, nr 14, s. 51–89.pl_PL
dc.referencesDechow P. M., Sloan R. G., Sweeney A. P. (1995), Detecting earnings management, „The Accounting Review”, nr 70, s. 193–193.pl_PL
dc.referencesEl Diri M. (2018), Introduction to earning management, Springer International Publishing, Cham.pl_PL
dc.referencesFich E. M., Shivdasani A. (2007), Financial Fraud, Director Reputation, and Shareholder Wealth, „Journal of Financial Economics”, nr 86(2), s. 306–333.pl_PL
dc.referencesGlancy F. H., Yadav S. B. (2011), A computational model for financial reporting fraud detection, „Decision Support Systems”, t. 50, cz. 3, s. 595–601.pl_PL
dc.referencesGupta R., Gill N. (2012), Prevention and Detection of Financial Statement Fraud – An Implementation of Data Mining Framework, „Editorial Preface”, nr 3(8), s. 150–160.pl_PL
dc.referencesHashim H. A., Salleh Z., Ariff A. M. (2013), The Underlying Motives for Earnings Management: Directors, Perspective, „International Journal of Trade, Economics and Finance”, t. 4, nr 5, s. 296–299.pl_PL
dc.referencesJohnson S., Ryan H., Tian Y. (2009), Managerial Incentives and Corporate Fraud: The Sources of Incentives Matter, „Review of Finance”, nr 13(1), s. 115–145.pl_PL
dc.referencesJones J. (1991), Earnings management during import relief investigations, „Journal of Accounting Research”, nr 29(2), s. 193–228.pl_PL
dc.referencesKamal M. E.M., Salleh M. F.M., Ahmad A. (2016), Detecting financial statement fraud by Malaysian public listed companies: The reliability of the Beneish M‑Score model, „Journal Pengurusan”, nr 46, s. 23–32.pl_PL
dc.referencesKaminski K. A., Wetzel T. S., Guan L. (2004), Can financial ratios detect fraudulent financial reporting?, „Managerial Auditing Journal”, t. 19, cz. 1, s. 15–28.pl_PL
dc.referencesKanapickienė R., Grundienė Ž. (2015), The Model of Fraud Detection in Financial Statements by Means of Financial Ratios, „Procedia – Social and Behavioral Sciences”, nr 213, s. 321–327.pl_PL
dc.referencesKang S. H., Sivaramakrishnan K. (1995), Issues in testing earnings management and an instrumental variable approach, „Journal of Accounting Research”, nr 33, s. 353–367.pl_PL
dc.referencesKara E., Korpi M., Ugurlu M. (2015), Using Beneish model in identifying accounting manipulation: an empirical study in BIST manufacturing industry sector, „Journal of Accounting, Finance and Auditing Studies”, nr 1(1), s. 21–39.pl_PL
dc.referencesKaur R., Sharma K., Khanna A. (2014), Detecting Earnings Management in India – A sector‑wise Study on European, „Journal of Business and Management”, t. 6, nr 11, s. 11–18.pl_PL
dc.referencesKothari S. P., Leone A. J., Wasley C. E. (2005), Performance matched discretionary accrual measures, „Journal of Accounting and Economics”, nr 39, s. 163–197.pl_PL
dc.referencesKotsiantis S., Koumanakos E., Tzelepis D., Tampakas V. (2006), Forecasting Fraudulent Financial Statements Using Data Mining, „International Journal of Computational Intelligence”, nr 3(2), s. 104–110.pl_PL
dc.referencesMahama M. (2015), Detecting corporate fraud and financial distress using the Altman and Beneish models, „International Journal of Economics, Commerce and Management”, nr 3(1), s. 1–18.pl_PL
dc.referencesMarinakis P (2011), An investigation of earnings management and earnings manipulation in the UK, praca doktorska, Nottingham University.pl_PL
dc.referencesMcNichols M. F. (2002), Discussion of: The quality of accruals and earnings – The role of accrual estimation errors, „The Accounting Review”, t. 77, nr s–1, s. 61–69.pl_PL
dc.referencesOmar N., Koya R. K., Sanusi Z. M., Shafie N.A (2014), Financial statement fraud: A Case examination using beneish model and ratio analysis, „International Journal of Trade, Economics and Finance”, t. 5, nr 2, s. 184–186.pl_PL
dc.referencesPai P., Hsu M., Wang M. (2011), A Support Vector Machine‑Based Model for Detecting Top Management Fraud, „Knowledge‑Based Systems”, nr 24(2), s. 314–321.pl_PL
dc.referencesPaolone F., Magazzino C. (2014), Earnings manipulation among the main industrial sectors: Evidence from Italy, „Economia Aziendale”, nr 5, s. 253–261.pl_PL
dc.referencesPersons O. (1995), Using Financial Statement Data to Identify Factors Associated with Fraudulent Financial Reporting, „Journal of Applied Business Research”, nr 11(3), s. 38–46.pl_PL
dc.referencesPetrík V. (2016), Application of Beneish M‑Score on Selected Financial Statements, Conference: Bezpečné Slovensko a Európska Únia at: Košice, Slovakia – The University of Security Management in Košice, t. 1, https://www.researchgate.net/publication/311733912 [dostęp: 2.02.2018].pl_PL
dc.referencesRepousis S. (2016), Using Beneish model to detect corporate financial statement fraud in Greece, „Journal of Financial Crime”, t. 23 cz. 4, s. 1063–1073, https://doi.org/10.1108/JFC–11–2014–0055.pl_PL
dc.referencesSchilit H., Perler J. (2010), Financial Shenanigans: How to Detect Accounting Gimmicks & Fraud in Financial Reports, 3rd edition, McGraw‑Hill, New York.pl_PL
dc.referencesSkousen Ch.J., Twedt B. J. (2009), Fraud score analysis in emerging markets, „Cross Cultural Management: An International Journal”, t. 16, cz. 3, s. 301–316.pl_PL
dc.referencesSpathis C. (2002), Detecting False Financial Statements Using Published Data: Some Evidence From Greece, „Managerial Auditing Journal”, nr 17(4), s. 179–191.pl_PL
dc.referencesStubben S. R. (2010), Discretionary revenues as a measure of earnings management, „The Accounting Review”, t. 85, nr 2, s. 695–717.pl_PL
dc.referencesSummers S., Sweeney J. (1998), Fraudulently Misstated Financial Statements and Insider Trading: An Empirical Analysis, „Accounting Review”, nr 73(1), s. 131–146.pl_PL
dc.referencesSylwestrzak M. (2017), Wykorzystanie modelu CART‑Logit do analizy fałszerstw sprawozdań finansowych, „Finanse, Rynki Finansowe, Ubezpieczenia”, nr 4 (88/1), s. 403–412, http://dx.doi.org/10.18276/frfu.2017.88/1–39 [dostęp: 1.02.2018].pl_PL
dc.referencesTarjo, Herawati N. (2015), Application of Beneish M‑Score Models and Data Mining to Detect Financial Fraud, „Procedia – Social and Behavioral Sciences”, nr 211, s. 924–930.pl_PL
dc.referencesYe J., (2007), Accounting Accruals and Tests of Earnings Management, https://ssrn.com/abstract=1003101 [dostęp: 1.02.2018].pl_PL
dc.referencesZaki M., Theodoulidis B. (2013), Analyzing Financial Fraud Cases Using a Linguistics‑Based Text Mining Approach, https://ssrn.com/abstract=2353834 or http://dx.doi.org/10.2139/ssrn.2353834 [dostęp: 1.02.2018].pl_PL
dc.contributor.authorEmailanna.golec@ug.edu.pl
dc.identifier.doi10.18778/0208-6018.341.10
dc.relation.volume2pl_PL
dc.subject.jelM42pl_PL
dc.subject.jelG30pl_PL


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