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Salehi, Mahdi
- Effective Components on the Forecast of Companies' Dividends using Hybrid Neural Network and Binary Algorithm Model
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PDF Views:110
Authors
Affiliations
1 Department of Accounting, Ferdowsi University of Mashhad, IR
2 Department of Accounting, Science and Research of Hormozgan Branch, Islamic Azad University, Hormozgan, IR
1 Department of Accounting, Ferdowsi University of Mashhad, IR
2 Department of Accounting, Science and Research of Hormozgan Branch, Islamic Azad University, Hormozgan, IR
Source
Indian Journal of Science and Technology, Vol 5, No 9 (2012), Pagination: 3321-3327Abstract
The issue of accounting profit has been noticed from long time by investors, managers, financial analysts and creditors. Due to the importance of dividend per share is disclosed by companies and the role of dividend in decisions and because the most important source of information for investors and managers and other users in the stock, is the forecasted dividend by companies, this study follows to recognize the affecting factors on 23 chemical companies in the Tehran Stock Exchange dividend using genetic algorithms combined with artificial neural network. Finally, the variables affecting the output are used to predict dividends in the model that is by neural network designed. The error is calculated and be the basis of comparison with other methods. The study included chemical companies accepted in Tehran Stock Exchange during 2006-2010. The independent variables in this study are accounting ratios and stock cash dividend is dependent variable.Keywords
Prediction, Dividends, Neural Network, Binary AlgorithmReferences
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- Prediction of Financial Distress in Tehran Stock Exchange Using DEA Approach
Abstract Views :459 |
PDF Views:120
Authors
Affiliations
1 Department of Economics and Social Science, Payam-e-Noor University, Pobox 19395-4697, Tehran, IR
2 Department of Accounting, Ferdowsi University of Mashhad, Mashhad, IR
1 Department of Economics and Social Science, Payam-e-Noor University, Pobox 19395-4697, Tehran, IR
2 Department of Accounting, Ferdowsi University of Mashhad, Mashhad, IR
Source
Indian Journal of Science and Technology, Vol 5, No 10 (2012), Pagination: 3461-3473Abstract
Data Envelopment Analysis (DEA) is employed as a tool to evaluate the efficiency score of Tehran Stock Exchange. For predicting financial distress, it is designed and tested a model base on efficiency score. Its accuracy was verified by employing another model designed by financial ratios and variables based on Multivariate Discriminant Analysis (MDA). Ultimately, to investigate the effectiveness of firm's efficiency score on financial distress prediction, its score combined with financial ratios is entered in an MDA model. The results show that all the three proposed models, in this paper, have better ability of predicting financial distress in Tehran Stock Exchange for two years prior to its occurrence. It implies that, DEA efficiency score is an effective predictor variable.Keywords
Efficiency Score, Data Envelopment Analysis, Financial Distress, Tehran Stock ExchangeReferences
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