首页> 外文期刊>Journal of Risk and Financial Management >An Ensemble Classifier-Based Scoring Model for Predicting Bankruptcy of Polish Companies in the Podkarpackie Voivodeship
【24h】

An Ensemble Classifier-Based Scoring Model for Predicting Bankruptcy of Polish Companies in the Podkarpackie Voivodeship

机译:基于集群的基于分类器的评分模型,用于预测Podkarpackie Voivodeh中的波兰公司破产

获取原文
       

摘要

This publication presents the methodological aspects of designing of a scoring model for an early prediction of bankruptcy by using ensemble classifiers. The main goal of the research was to develop a scoring model (with good classification properties) that can be applied in practice to assess the risk of bankruptcy of enterprises in various sectors. For the data sample, which included 1739 Polish businesses (of which 865 were bankrupt and 875 had no risk of bankruptcy), a genetic algorithm was applied to select the optimum set of 19 bankruptcy indicators, on the basis of which the classification accuracy of a number of ensemble classifier model variants (boosting, bagging and stacking) was estimated and verified. The classification effectiveness of ensemble models was compared with eight classical individual models which made use of single classifiers. A GBM-based ensemble classifier model offering superior classification capabilities was used in practice to design a scoring model, which was applied in comparative evaluation and bankruptcy risk analysis for businesses from various sectors and of different sizes from the Podkarpackie Voivodeship in 2018 (over a time horizon of up to two years). The approach applied can also be used to assess credit risk for corporate borrowers.
机译:本出版物介绍了使用集合分类器的破产预测的评分模型的方法的方法。该研究的主要目标是开发得分模型(具有良好的分类属性),可以在实践中应用,以评估各个部门企业破产的风险。对于数据示例包括1739个波兰企业(其中865个破产和875年没有破产的风险),应用了一个遗传算法,以选择一个最佳的19个破产指标组,其中一个分类准确性估计和验证了集合分类器模型变体(升压,装袋和堆叠)的数量。与八种古典个体模型进行了比较了合奏模型的分类效果,这是使用单一分类器的八种古典个体模型。在实践中使用了提供卓越分类功能的基于GBM的集合分类器模型,以设计评分模型,该模型应用于来自各个部门的企业和2018年Podkarpackie Voivodeh的企业的比较评估和破产风险分析(多次地平线长达两年)。所应用的方法也可用于评估公司借款人的信用风险。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号