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A novel classifier ensemble approach for financial distress prediction

机译:一种新的分类器集合方法,用于财务困境预测

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Financial distress prediction is very important to financial institutions who must be able to make critical decisions regarding customer loans. Bankruptcy prediction and credit scoring are the two main aspects considered in financial distress prediction. To assist in this determination, thereby lowering the risk borne by the financial institution, it is necessary to develop effective prediction models for prediction of the likelihood of bankruptcy and estimation of credit risk. A number of financial distress prediction models have been constructed, which utilize various machine learning techniques, such as single classifiers and classifier ensembles, but improving the prediction accuracy is the major research issue. In addition, aside from improving the prediction accuracy, there have been very few studies that specifically consider lowering the Type I error. In practice, Type I errors need to receive careful consideration during model construction because they can affect the cost to the financial institution. In this study, we introduce a classifier ensemble approach designed to reduce the misclassification cost. The outputs produced by multiple classifiers are combined by utilizing the unanimous voting (UV) method to find the final prediction result. Experimental results obtained based on four relevant datasets show that our UV ensemble approach outperforms the baseline single classifiers and classifier ensembles. Specifically, the UV ensemble not only provides relatively good prediction accuracy and minimizes Type I/II errors, but also produces the smallest misclassification cost.
机译:财务困境预测对金融机构非常重要,金融机构必须能够对客户贷款作出关键决策。破产预测和信贷评分是财务困境预测中考虑的两个主要方面。为了协助这一决定,从而降低金融机构承担的风险,有必要开发有效的预测模型,以预测破产和信贷风险估算的可能性。已经构建了许多财务困境预测模型,其利用各种机器学习技术,例如单个分类器和分类器集合,但提高预测精度是主要的研究问题。此外,除了提高预测精度之外,还有很少的研究,特别考虑降低I误差。在实践中,I型错误需要在模型施工期间仔细考虑,因为它们可以影响金融机构的成本。在这项研究中,我们介绍了一个旨在降低错误分类成本的分类器集合方法。通过利用一定的投票(UV)方法来找到最终预测结果,组合由多分类器产生的输出。基于四个相关数据集获得的实验结果表明,我们的UV集合方法优于基线单分类器和分类器组合。具体地,UV集合不仅提供了相对良好的预测精度并最小化I / II型错误,而且产生最小的错误分类成本。

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