An improved boosting based on feature selection for corporate bankruptcy prediction

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140 Scopus citations

Abstract

With the recent financial crisis and European debt crisis, corporate bankruptcy prediction has become an increasingly important issue for financial institutions. Many statistical and intelligent methods have been proposed, however, there is no overall best method has been used in predicting corporate bankruptcy. Recent studies suggest ensemble learning methods may have potential applicability in corporate bankruptcy prediction. In this paper, a new and improved Boosting, FS-Boosting, is proposed to predict corporate bankruptcy. Through injecting feature selection strategy into Boosting, FS-Booting can get better performance as base learners in FS-Boosting could get more accuracy and diversity. For the testing and illustration purposes, two real world bankruptcy datasets were selected to demonstrate the effectiveness and feasibility of FS-Boosting. Experimental results reveal that FS-Boosting could be used as an alternative method for the corporate bankruptcy prediction.

Original languageEnglish
Pages (from-to)2353-2361
Number of pages9
JournalExpert Systems with Applications
Volume41
Issue number5
DOIs
StatePublished - Apr 2014

Keywords

  • Boosting
  • Corporate bankruptcy prediction
  • Ensemble learning
  • Feature selection

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