Predicting the outcome following bankruptcy filing: a three-state classification using neural networks

Ran Barniv, Anurag Agarwal, R. Leach
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引用次数: 71

Abstract

This paper uses artificial neural networks (ANNs), multi-state ordered logit and nonparametric multiple discriminant analysis (NPDA) for predicting the three-state outcome of bankruptcy filing. The study compares the classification accuracy of these procedures. It differs from previous studies on predicting financial distress by focusing on the firm after the filing of bankruptcy using accounting data, market data, and court-related information. Following the filing and through court approval the bankruptcy is resolved as firms are either acquired by other firms, emerging as independent operating entities, or liquidated. Distinguishing this three-state outcome is more complex than discriminating between healthy and financially distressed firms. Models suggested in previous studies for predicting the two-group financial distress perform poorly for our three-state scenario. Therefore, we develop models which focus on characteristics relevant for the bankruptcy resolution. We use a sample of 237 publicly traded firms which have complete data. For the entire sample and estimation samples, ANNs provide significantly better three-state classification than logit and NPDA. However, for some holdout samples the differences in classification accuracies are statistically insignificant. © 1997 John Wiley & Sons, Ltd.
破产申请后的预测结果:使用神经网络的三状态分类
本文采用人工神经网络(ann)、多状态有序logit和非参数多元判别分析(NPDA)对破产申请的三状态结果进行预测。该研究比较了这些程序的分类精度。它不同于以往的研究,通过使用会计数据、市场数据和法院相关信息来关注申请破产后的公司,从而预测财务困境。在申请破产并通过法院批准后,公司要么被其他公司收购,要么作为独立的经营实体出现,要么被清算。区分这三种状态的结果比区分健康的公司和财务困难的公司要复杂得多。在先前的研究中提出的预测两组财务困境的模型在我们的三状态情景中表现不佳。因此,我们开发了侧重于破产解决相关特征的模型。我们选取了237家拥有完整数据的上市公司作为样本。对于整个样本和估计样本,人工神经网络提供了明显优于logit和NPDA的三态分类。然而,对于一些保留样本,分类准确率的差异在统计上不显著。©1997 John Wiley & Sons, Ltd
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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