Forthcoming in Review of Accounting Studies Bankruptcy prediction: the case of Japanese listed companies

نویسندگان

  • Ming Xu
  • Chu Zhang
  • Kevin Chen
  • Steven Wei
  • Xueping Wu
چکیده

This paper investigates if bankruptcy of Japanese listed companies can be predicted using data from 1992 to 2005. We find that the traditional measures, such as Altman’s (1968) , Ohlson’s (1980) and the option pricing theorybased distance-to-default, previously developed for the US market, are also individually useful for the Japanese market. Moreover, the predictive power is substantially enhanced when these measures are combined. Based on the unique Japanese institutional features of main banks and business groups (known as Keiretsu), we construct a new measure that incorporates bank dependence and Keiretsu dependence. The new measure further improves the ability to predict bankruptcy of Japanese listed companies. -score Z -score O JEL classification: G15; G33

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تاریخ انتشار 2007