CFP last date
20 May 2024
Reseach Article

A Back Propagation Artificial Neural Network based Model for Detecting and Predicting Fraudulent Financial Reporting

by Ahmed S. Salama, Amany A. Omar
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 106 - Number 2
Year of Publication: 2014
Authors: Ahmed S. Salama, Amany A. Omar
10.5120/18489-9521

Ahmed S. Salama, Amany A. Omar . A Back Propagation Artificial Neural Network based Model for Detecting and Predicting Fraudulent Financial Reporting. International Journal of Computer Applications. 106, 2 ( November 2014), 1-8. DOI=10.5120/18489-9521

@article{ 10.5120/18489-9521,
author = { Ahmed S. Salama, Amany A. Omar },
title = { A Back Propagation Artificial Neural Network based Model for Detecting and Predicting Fraudulent Financial Reporting },
journal = { International Journal of Computer Applications },
issue_date = { November 2014 },
volume = { 106 },
number = { 2 },
month = { November },
year = { 2014 },
issn = { 0975-8887 },
pages = { 1-8 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume106/number2/18489-9521/ },
doi = { 10.5120/18489-9521 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-06T22:38:17.372070+05:30
%A Ahmed S. Salama
%A Amany A. Omar
%T A Back Propagation Artificial Neural Network based Model for Detecting and Predicting Fraudulent Financial Reporting
%J International Journal of Computer Applications
%@ 0975-8887
%V 106
%N 2
%P 1-8
%D 2014
%I Foundation of Computer Science (FCS), NY, USA
Abstract

Fraudulent financial reporting has become an important issue in accounting profession, the implementation of self-assessment system appears as incentives to companies to misstate their financial reports to reduce tax obligation. Fraudulent financial reporting may cause fast losses to government income, as well as losses to the users of financial reports; several recent Studies have examined the feasibility of using various machine learning techniques in business and industrial applications. The purpose of this research is to propose a back propagation based artificial neural network model for Fraudulent Financial Reporting detection and prediction. Another main objective for this proposed model is using it in measuring the financial performance assessment by detecting the positive and negative deviations in certain important accounts balances such as net sales, and accounts receivable, which will support top managers in taking important strategic financial decisions for their companies. The proposed model was implemented using NeuronsSolution ANN software and has been applied on two large Egyptian companies managing electricity distribution in Egypt. The implementation results of this proposed model showed that the model is successful, efficient and reliable in detecting and predicting fraudulent financial reporting, and also the assessment of any company's financial performance.

References
  1. Beasley, M. S. , Carcello, J. V. , Hermanson, D. R. and Lapidos, P. D. 2000 Fraudlent Financial Reporting: Consideration of Industry Traits and Corporate Goverance Mechanisms. Accountig Horizons. Vol. 14. No. 4, 441-454.
  2. Bemardi, R. A. 1994 Fraud Detection : The effect of Client integrity and competence and Auditor Cognitive Style. Auditing:Journal of Practice & Theory. Vol. 13, 68-94.
  3. Eining, M. M. , Jones, D. R. and Loebbecke, J. K. 1997 Reliance on decision aids : An examination of Auditors Assessment of management Fraud. Auditing:Journal of Practice & Theory. 16(2), 1-18.
  4. Kaminski, K. A. , Wetzel, T. S. , and Guan, L. 2004 Can financial ratios detect fraudulent financial reporting?. Managerial Auditing Journal. 19 (1), 15-28.
  5. Siegel, P. H. , Omar, K. , Korvin, A. 1998 Applications of Fuzzy sets and the Theory of Evidence to Accounting. JAI Press Inc. , London England.
  6. Khormuji, M. K. , Bazrafkan, M. , Sharifian, M. 2014 Credit Card Fraud Detection with a Cascade Artificial Neural Network and Imperialist Competitive Algorithm. International Journal of Computer Applications. Vol. 96. No. 25, 1-9.
  7. Green, B. P. , and Choi, J. H. 1997 Assessing the risk of management fraud through neural network technology. Auditing: Journal of Practice & Theory. 16 (1), 14-28.
  8. Bell, T. B. , and Carcello, J. V. 2000 A decision aid for assessing the likelihood of fraudulent financial reporting. Auditing: Journal of Practice & Theory. 19 (1), 169-184.
  9. Lin, J. W. , Hwang, M. I. , and Becker, J. D. 2003 A fuzzy neural network for assessing the risk of fraudulent financial reporting. Managerial Auditing Journal. 18 (8), 657-665.
  10. Kotsiantis, S. , Koumanakos, E. , Tzelepis, D. and Tampakas, V. 2006 Financial Application of Neural Networks : two case studies in Greece. Artificial Neural Networks- ICANN 2006. Vol. 4132, 672-681.
  11. Kirkos S. , Spathis, C. and Manolopoulos, Y. 2007 Data Mining techniques for the detection of fraudulent financial statements. Expert Systems with Applications. Vol. 32. Issue 4, 995-1003.
  12. Nonyelum, O. F. and Chibueze, I. H. 2009 Credit Card Fraud Detection using Artificial Neural Networks with a Rule–Based Component. The ICFAI University. Journal of science & Technology. Vol. 5. No. 1, 40-47.
  13. Chen, H,J. , Huang, S, Y. , and Kuo, C, L. 2009 Using the Artificial Neural Network to predict Fraud Litigation: Some empirical evidence from emerging Markets. Department of accounting National Chung Hsing University. Taichung. Taiwan ,KPMG CPA Firms. Tainan. Taiwan, Science Direct. pp 1478:1484.
  14. Gupta, R. , and Gill, N. S. 2012 A Data Mining Framework for Prevention and Detection of Financial Statement Fraud. International Journal of Computer Applications. Vol. 50. No. 8, 7-14.
Index Terms

Computer Science
Information Sciences

Keywords

Machine Learning Multilayer Perceptron (MLP) Artificial Neural Networks Fraudulent Financial Reporting Prediction