Information Asymmetry with Emphasis on the Role of Financial and Managerial Criteria Based on Fuzzy Logic and Artificial Neural Networks
محورهای موضوعی : Financial AccountingMohammad Amir Golshani 1 , Mehrdad Ghanbari 2 , Babak Jamshidi Navid 3 , Forouzan Mohammadi Yarijani 4
1 - Department of Accounting, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran
2 - Department of Accounting, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran.
3 - Department of Accounting, Kermanshah Branch, Islamic Azad University ,Kermanshah ,Iran
4 - Department of Accounting, Kermanshah Branch, Islamic Azad University, Kermanshah, Iran
کلید واژه: Information Asymmetry, Corporate Profit Forecasting, Corporate Governance, Capital Market, Capital Return,
چکیده مقاله :
This paper addresses the absence of a suitable criterion for measuring information asymmetry between managers forecasting earnings and analysts forecasting earnings through statistical methods. Besides, this paper aims to provide a model of information asymmetry, emphasizing the role of financial and managerial criteria. This is applied qualitative and quantitative research (mixed method). The library method is used to prepare and formulate theoretical bases. In addition, the field method is used for collecting data to measure and identify indices and modeling. Factor analysis was used to analyze the data, following identifying the dimensions and variables of financial and managerial criteria of information symmetry to eliminate extraneous factors and classify. The following five main dimensions were determined, including corporate profit forecast, corporate governance, capital market, capital return, and management characteristics of the company. Then, the modeling was done using fuzzy mathematics through triangular numbers, Mamdani implication, and center of gravity methods. The final results of the study of the company listed on the Tehran Stock Exchange show that the level of information symmetry in the range of zero to 100 equals 55.1, to predict the company's profit is 48.54; corporate governance is 56.95; the capital market is 1/59; capital return is 61.07, and managerial characteristics of the company are 67.84. Finally, we examined the factors affecting the information asymmetry obtained from fuzzy neural networks. The findings show a higher prediction accuracy of fuzzy neural network methods than other related prediction methods.
This paper addresses the absence of a suitable criterion for measuring information asymmetry between managers forecasting earnings and analysts forecasting earnings through statistical methods. Besides, this paper aims to provide a model of information asymmetry, emphasizing the role of financial and managerial criteria. This is applied qualitative and quantitative research (mixed method). The library method is used to prepare and formulate theoretical bases. In addition, the field method is used for collecting data to measure and identify indices and modeling. Factor analysis was used to analyze the data, following identifying the dimensions and variables of financial and managerial criteria of information symmetry to eliminate extraneous factors and classify. The following five main dimensions were determined, including corporate profit forecast, corporate governance, capital market, capital return, and management characteristics of the company. Then, the modeling was done using fuzzy mathematics through triangular numbers, Mamdani implication, and center of gravity methods. The final results of the study of the company listed on the Tehran Stock Exchange show that the level of information symmetry in the range of zero to 100 equals 55.1, to predict the company's profit is 48.54; corporate governance is 56.95; the capital market is 1/59; capital return is 61.07, and managerial characteristics of the company are 67.84. Finally, we examined the factors affecting the information asymmetry obtained from fuzzy neural networks. The findings show a higher prediction accuracy of fuzzy neural network methods than other related prediction methods.
[1] Mashayekh, S., Arbabi, Z., Rahimi Far, M., Study of Earnings Management Incentives, Journal of Ac-counting Research, 2013; 3(2):53-70. (in Persian) Doi. 10.22051/IJAR.2014.460
[2] Shari Anaqiz, S., Rahimian, N., Salehi Sedghiani, J., Khorasani, A., Investigate and apply the accuracy of the results obtained from the revised models based on the Iranian economic environment in detecting and exposing fraudulent financial reporting, Financial Management Perspectives Quarterly, 1817) 2017; 105-123. (in Persian). Doi, 10.52547/JFMP.11.36.9.
[3] Moradi, M., Designing a profit quality model in the Tehran Stock Exchange with emphasis on the role of accruals, Journal of Accounting and Auditing Research, 2015; (25), 76-99. (in Persian). Doi. 10.22034/IAAR.2015.103918.
[4] Barton, J., Hansen, T., Pownall, G., Which performance measures do investors around the world value the most—and why? The Accounting Review, 2010; 85, 753–789. Doi:10.2308/accr.2010.85.3.753
[5] Kordestani, G., Tatli, R., Identification the Efficient and Opportunistic Earnings Management Ap-proaches in the Earnings Quality Levels. Accounting and Auditing Review, 2014; 21(3), 293–312. (in Per-sian) Doi:10.22059/ACCTGREV.2016.57021
[6] Beneish, M. D., The Detection of Earnings Manipulation, Financial Analysts Journal, 1999; 55(5), 24-36. Doi:10.2469/faj.v55.n5.2296.
[7] Jones, J.J., Earnings Management during Import Relief Investigations, Journal of Accounting Research, 1991 ;29(2), 193-228. Doi: 10.2307/2491047
[8] Healy, P., The effect of bonus schemes on accounting decisions, Journal of Accounting and Econom-ics, 1985; 7, 85-107. Doi. 10.1016/0165-4101(85)90029-1
[9] Watts, R., Zimmerman, J., Positive Accounting Theory, Prentice-Hall, Englewood Cliffs, New Jersy. 1986; Doi: 10.1016/0361-3682(88)90037-2.
[10] Najafizadeh, B., Kayhan, M., Investigating of the Relationship between Earnings Management and Information Asymmetry in Environmental Uncertainty in Companies Listed in Tehran Stock Exchange (TSE), 4th 2016
[11] Piri, P., Ghorbani, M., Assess the relationship between the type of independent auditor's opinion and the quality of the profit, Accounting and Auditing Reviews, 2017; 24 (4): 483-502. (in Persian. NDMCONFT04_257
[12] Salehi, M., Farrokhi Pilehroud, L., Predicting earnings management using neural network and deci-sion tree, Quarterly Journal of Financial Accounting and Auditing Research, 2018; 10(37):1-24. (in Per-sian)
[13] Tarjoa, N. H., Application of Beneish M-Score Models and Data Mining to Detect Financial Fraud. Social and Behavioral Sciences, 2015; 211, 924 -930. Doi: 10.1016/j.sbspro.2015.11.122
[14] Li, T., & Zaiats, N., Information environment and earnings management of dual class firms around the world. Journal of Banking & Finance, 2017 74, 1-23. Doi: 10.1016/j.jbankfin.2016.09.009
[15] Ramírez Orellana, A., Martinez Romero, M. J., Mariño Garrido, T., Measuring fraud and earnings management by a case of study: Evidence from an international family business, European Journal of Family Business, 2017; 7(1-2), 41-53. Doi: 10.1016/j.ejfb.2017.10.001
[16] Ajina, A., Habib, A., Examining the relationship between Earning management and market liquidi-ty,Research in International Business and Finance, 2017; 42, 1164-1172. Doi: 10.1016/j.ribaf.2017.07.054
[17] Rahul, K., Seth, N., Dinesh Kumar, U., Spotting Earnings Manipulation: Using Machine Learning for Financial Fraud Detection. In: Bramer M., Petridis M. (Eds) Artificial Intelligence. SGAI. Lecture Notes in Computer Science, Springer, 2018;343-356. Doi: 10.1007/978-3-030-04191-5_29
[18] Lazzem, S., Jilani, F., The impact of leverage on accrual-based earnings management: The case of listed French firms, Research in International Business and Finance, 2018; 44, 350-358.
Doi: 10.1016/j.ribaf.2017.07.103
[19] Mirjalili, S., Mirjalili, S. M., Lewis, A., Let a biogeography-based optimizer train your Multi-Layer Perceptron. Information Sciences, 2014; 269: 188–209. Doi: 10.1016/j.ins.2014.01.038