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Incorporating sequential information in bankruptcy prediction with predictors based on Markov for discrimination

机译:将破产预测中的顺序信息与基于马尔可夫的预测因子相结合进行判别

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In this paper we make a contribution to the body literature that incorporates a dynamic view on bankruptcy into bankruptcy prediction modelling In addition to using financial ratios measured over multiple time periods, we introduce variables based on the Markov for discrimination (MFD) model. MFD variables are able to extract the sequential information from time-series of financial ratios and concentrate it in one score. Our results obtained from multiple samples of Belgian bankruptcy data show that using data collected from multiple time periods outperforms snap-shot data that contains financial ratios measured at one point in time. In addition, we demonstrate that inclusion of MFD variables in non-ensemble bankruptcy prediction models considered in the study can lead to better classification performance. The latter type of models, despite not achieving the top performance based on metric considered in our study, can still be used by practitioners who prefer simpler, more interpretable models. (C) 2017 Elsevier B.V. All rights reserved.
机译:在本文中,我们对将动态的破产观点纳入破产预测模型的机构文献做出了贡献。除了使用在多个时间段内测得的财务比率之外,我们还引入了基于马尔可夫歧视(MFD)模型的变量。 MFD变量能够从财务比率的时间序列中提取顺序信息,并将其集中在一个分数中。我们从多个比利时破产数据样本中获得的结果表明,使用从多个时间段收集的数据要优于快照数据,快照数据包含在某个时间点测得的财务比率。此外,我们证明了在研究中考虑的非整体破产预测模型中包含MFD变量可以导致更好的分类性能。后一种类型的模型尽管未达到我们研究中所考虑的指标所能达到的最佳性能,但仍可供偏爱更简单,更易解释的模型的从业人员使用。 (C)2017 Elsevier B.V.保留所有权利。

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