• Title of article

    An Adaptive Fuzzy Neural Network Model for Bankruptcy Prediction of Listed Companies on the Tehran Stock Exchange

  • Author/Authors

    Azadnia ، A. H. Department of Industrial Engineering - Islamic Azad University, Ayatollah Amoli Branch , Siahi ، A. Department of Management - Islamic Azad University, Firuzkuh Branch , Motameni ، M. Department of Mathematics - Islamic Azad University, Qaemshahr Branch

  • From page
    1879
  • To page
    1884
  • Abstract
    Nowadays, prediction of corporate bankruptcy is one of the most important issues which have received great attentions among academia and practitioners. Although several studies have been accomplished in the field of bankruptcy prediction, less attention has been devoted for proposing a systematic approach based on fuzzy neural networks.  The present study proposes fuzzy neural networks to predict bankruptcy of the listed companies in the Tehran stock exchange. Four input variables including growth, profitability, productivity and asset quality were used for prediction purpose. Moreover, the Altman’s Z’score is used as the output variable. The results reveal that the proposed fuzzy neural network model has a high performance for the bankruptcy prediction of the companies.
  • Keywords
    Bankruptcy , prediction , Fuzzy Neural Network
  • Journal title
    International Journal of Engineering
  • Record number

    2502538