Title of article :
Investigating Financial Crisis Prediction Power using Neural Network and Non-Linear Genetic Algorithm
Author/Authors :
Poorzamani، Zahra نويسنده Department of Accounting, assistant professor, Central Tehran branch, Islamic Azad University, Tehran, Iran , , Kalantari، Hassan نويسنده M.Sc. student in Accounting at Islamic Azad University, Central Tehran Branch ,
Issue Information :
فصلنامه با شماره پیاپی 0 سال 2012
Abstract :
Bankruptcy is an event with strong impacts on management, shareholders, employees,
creditors, customers and other stakeholders, so as bankruptcy challenges the country both
socially and economically. Therefore, correct prediction of bankruptcy is of high importance
in the financial world. This research intends to investigate financial crisis prediction power
using models based on Neural Networks and to compare it with Non-Linear Genetic
Algorithm. Based on the available information and statistics of the listed companies on
Tehran Stock Exchange (TSE) during 1997-2010, from among these companies subjected to
article 141 of the Commercial Law, 72 firms, and from among other firms, 72 firms were
selected.
Results of McNemar Test for Non-Linear Genetic Algorithm and Neural Network
indicated that although prediction accuracy of Non-Linear Genetic Algorithm (90%) was
greater than that of Neural Network (70%), yet this difference was not statistically
significant
Journal title :
International Journal of Finance, Accounting and Economics Studies
Journal title :
International Journal of Finance, Accounting and Economics Studies