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Financial Distress Prediction Based on Ensemble Classifiers of Multiple Reductions

机译:基于组合分类器的多次减少分类的财务困境预测

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Financial distress prediction is an important research topic in both academic and practical world. This paper puts forward a financial distress prediction model based on multiple reduction ensembles, which employs neighborhood rough set based attribute reduction to generate a set of reducts, then each reduct is used to train a base classifier, and finally their results are combined through simple majority voting. Taking Chinese listed companies' real world data as sample data, adopting 10-fold cross validation technique to assess predictive performance, an experiment study is carried out. By comparing the experiment results with the raw data and the single reduct based classifiers, it is concluded that this model can improve the average prediction accuracy or both accuracy and stability, so it is more suitable for financial distress prediction than the single reduct based classifiers.
机译:财务困境预测是学术和实践世界的重要研究课题。本文提出了一种基于多个减少集合的财务遇险预测模型,其中采用基于邻域粗糙集的属性减少来生成一组减少,然后每个还原用于训练基本分类器,最后它们的结果通过简单的大多数组合表决。将中国上市公司的现实世界数据作为样本数据,采用10倍的交叉验证技术来评估预测性能,进行实验研究。通过将实验结果与原始数据和单片机基分类器进行比较,得出结论,该模型可以提高平均预测精度或精度和稳定性,因此更适合于金融遇险预测,而不是基于单减置的分类器。

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