The Bankruptcy Prediction by Neural Networks and Logistic Regression 

Abstract

Authors and Affiliations

Ahmad Ahmadpour Kasgari, Seyyed Hasan Salehnezhad, Fatemeh Ebadi

Keywords

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  • EP ID EP115445
  • DOI 10.6007/IJARAFMS/v3-i4/386
  • Views 96
  • Downloads 0

How To Cite

Ahmad Ahmadpour Kasgari, Seyyed Hasan Salehnezhad, Fatemeh Ebadi (2013). The Bankruptcy Prediction by Neural Networks and Logistic Regression . International Journal of Academic Research in Accounting, Finance and Management Sciences, 3(4), 146-152. https://europub.co.uk/articles/-A-115445