A new non-parametric classifier to predict small-business failures in Italy via performance ratios

F. D. Donato, L. Nieddu
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引用次数: 1

Abstract

We considered the case of small-medium enterprises (SMEs) in Italy introducing a new classifier to predict bankruptcy up to eight years prior to failure. We considered a stratified random sample of 100 non-listed Italian SMEs, 50 of which filed for bankruptcy during the years 2000 to 2011. Results suggest that the proposed method more than holds its own when compared with standard non-parametric classification techniques. The performance of the proposed method based on recognition rate, sensitivity and specificity shows that the proposed technique is effective in predicting the failure of a firm up to eight years prior to the event. The high specificity makes the proposed technique very effective as a warning signal to determine if a firm is in distress with a sufficient enough time to take proper actions. The performance assessment has been achieved via cross-validation to get unbiased estimates of the performances.
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一种新的非参数分类器,通过绩效比率预测意大利小企业的失败
我们考虑了意大利中小型企业(sme)的案例,引入了一种新的分类器来预测破产长达8年的失败。我们考虑了100家非上市意大利中小企业的分层随机样本,其中50家在2000年至2011年期间申请破产。结果表明,与标准的非参数分类技术相比,所提出的方法具有更大的优势。基于识别率、灵敏度和特异性的方法的性能表明,所提出的技术可以有效地在事件发生前8年预测公司的失败。高特异性使得所提出的技术作为一个警告信号非常有效,以确定一个公司是否有足够的时间采取适当的行动。性能评估是通过交叉验证来实现的,以获得无偏的性能估计。
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