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From linear to non-linear kernel based classifiers for bankruptcy prediction

机译:从线性到非线性基于核的分类器用于破产预测

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摘要

Bankruptcy prediction has been a topic of research for decades, both within the financial and the academic world. The implementations of international financial and accounting standards, such as Basel II and IFRS, as well as the recent credit crisis, have accentuated this topic even further. This paper describes both regularized and non-linear kernel variants of traditional discriminant analysis techniques, such as logistic regression. Fisher discriminant analysis (FDA) and quadratic discriminant analysis (QDA). Next to a systematic description of these variants, we contribute to the literature by introducing kernel QDA and providing a comprehensive benchmarking study of these classification techniques and their regularized and kernel versions for bankruptcy prediction using 10 real-life data sets. Performance is compared in terms of binary classification accuracy, relevant for evaluating yeso credit decisions and in terms of classification accuracy, relevant for pricing differentiated credit granting. The results clearly indicate the significant improvement for kernel variants in both percentage correctly classified (PCC) test instances and area under the ROC curve (AUC), and indicate that bankruptcy problems are weakly non-linear. On average, the best performance is achieved by LSSVM, closely followed by kernel quadratic discriminant analysis. Given the high impact of small improvements in performance, we show the relevance and importance of considering kernel techniques within this setting. Further experiments with backwards input selection improve our results even further. Finally, we experimentally investigate the relative ranking of the different categories of variables: liquidity, solvency, profitability and various, and as such provide new insights into the relative importance of these categories for predicting financial distress.
机译:数十年来,破产预测一直是金融和学术界的研究主题。巴塞尔协议II和国际财务报告准则等国际财务和会计标准的实施,以及最近的信贷危机,使这一话题更加突出。本文介绍了传统判别分析技术(例如逻辑回归)的正则化和非线性核变体。 Fisher判别分析(FDA)和二次判别分析(QDA)。除了对这些变体的系统描述之外,我们还通过介绍内核QDA并为这些分类技术及其用于破产预测的正则化和内核版本(使用10个真实数据集)进行全面的基准研究,为文献做出了贡献。根据二进制分类准确性(与评估是/否信用决策相关)和分类准确性(与定价差异化信用授予有关)进行性能比较。结果清楚地表明,在正确分类的百分比(PCC)测试实例和ROC曲线下的面积(AUC)方面,内核变体都有显着改善,并且表明破产问题是非线性的。平均而言,LSSVM可实现最佳性能,紧随其后的是内核二次判别分析。鉴于性能小幅提高的巨大影响,我们展示了在这种情况下考虑内核技术的相关性和重要性。向后输入选择的进一步实验将进一步改善我们的结果。最后,我们通过实验研究了不同类别变量的相对排名:流动性,偿付能力,获利能力和各种变量,因此,这些变量对于预测财务困境的相对重要性提供了新的见解。

著录项

  • 来源
    《Neurocomputing》 |2010年第18期|p.2955-2970|共16页
  • 作者单位

    Quantification and Pricing, Dexia Croup, Belgium;

    Department of Decision Sciences & Information Management, K.U.Leuven, Belgium,University of Southampton, School of Management, UK;

    Department of Decision Sciences & Information Management, K.U.Leuven, Belgium,Department of Business Administration and Public Management, University College Ghent, Ghent University, Belgium;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    kernel classifiers; least squares-support vector machine; bankruptcy prediction;

    机译:内核分类器;最小二乘支持向量机破产预测;

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