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首页> 外文期刊>The journal of applied business research >Predicting Auditor Changes Using Financial Distress Variables And The Multiple Criteria Linear Programming (MCLP) And Other Data Mining Approaches
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Predicting Auditor Changes Using Financial Distress Variables And The Multiple Criteria Linear Programming (MCLP) And Other Data Mining Approaches

机译:使用财务困境变量和多准则线性规划(MCLP)和其他数据挖掘方法来预测审计师的变化

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摘要

Our study evaluates a multiple criteria linear programming (MCLP) and other data mining approaches to predict auditor changes using a portfolio of financial statement measures to capture financial distress. The results of the MCLP approach and the other data mining approaches show that these methods perform reasonably well to predict auditor changes using financial distress variables. Overall accuracy rates are more than 60 percent, and true positive rates exceed 80 percent. Our study is designed to establish a starting point for auditor-change prediction using financial distress variables. Further research should incorporate additional explanatory variables and a longer study period to improve prediction rates.
机译:我们的研究评估了多准则线性规划(MCLP)和其他数据挖掘方法,以使用财务报表措施组合来捕获财务困境来预测审计师的变化。 MCLP方法和其他数据挖掘方法的结果表明,这些方法在使用财务困境变量来预测审计师变化方面表现合理。总体准确率超过60%,真实肯定率超过80%。我们的研究旨在为使用财务困境变量的审计师变更预测建立起点。进一步的研究应包括更多的解释变量和更长的研究时间以提高预测率。

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