• Title of article

    Mining business failure predictive knowledge using two-step clustering

  • Author/Authors

    Hui Li، نويسنده , , Jie Sun، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2011
  • Pages
    14
  • From page
    4107
  • To page
    4120
  • Abstract
    Despite increasing researches on business failure prediction by employing statistical techniques and intelligent ones, how to generate reasoning knowledge that can helps enterprise managers, investors, employees and governmental officials intuitively distinguish companies in distress from healthy ones has been only cursorily studied. The objective of this research is to fill this gap by utilizing the data mining technique of two-step clustering to outline relationships between listed companiesʹ various financial states and their financial ratios in China. Reasoning knowledge implying these relationships can be used as an ʹearly warningʹ expert system latter on. When assessing a companyʹs financial state before three years, companies whose values of these financial ratios, (net profit to fixed assets, account payable turnover, total assets turnover, the ratio of cash to current liability, ratio of liability to market value of equity, the proportion of fixed assets and net assets per share), are around 0.2059, 11.9769, 0.5923, 0.1940, 174.4857, 0.3540 and 2.7490, respectively, yield to be healthy in at least three years. While those are around 0.1145, 8.3363, 0.4469, 0.0212, 258.6049, 0.2697 and 2.3027, respectively, are possible to fall into distress in three years. For listed companies in China, long-time liability, activity, short-time liability, per share items and yields and structure ratios are important in descending sequence to guarantee them healthy companies. While activity, short-time liability, profitability and structural ratios are important in descending sequence to avoid them falling into distress.
  • Keywords
    Business failure predictive knowledge , Data mining , two-step clustering , Expert system
  • Journal title
    African Journal of Business Management
  • Serial Year
    2011
  • Journal title
    African Journal of Business Management
  • Record number

    686688