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首页> 外文期刊>Procedia Computer Science >Predicting Financial Distress: A Comparison of Survival Analysis and Decision Tree Techniques
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Predicting Financial Distress: A Comparison of Survival Analysis and Decision Tree Techniques

机译:预测财务困境:生存分析和决策树技术的比较

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摘要

Financial distress and then the consequent failure of a business is usually an extremely costly and disruptive event. Statistical financial distress prediction models attempt to predict whether a business will experience financial distress in the future. Discriminant analysis and logistic regression have been the most popular approaches, but there is also a large number of alternative cutting – edge data mining techniques that can be used. In this paper, a semi-parametric Cox survival analysis model and non-parametric CART decision trees have been applied to financial distress prediction and compared with each other as well as the most popular approaches. This analysis is done over a variety of cost ratios (Type I Error cost: Type II Error cost) and prediction intervals as these differ depending on the situation. The results show that decision trees and survival analysis models have good prediction accuracy that justifies their use and supports further investigation.
机译:财务困境以及随之而来的企业倒闭通常是极其昂贵和破坏性的事件。统计财务困境预测模型试图预测企业将来是否会遇到财务困境。判别分析和逻辑回归是最流行的方法,但是也可以使用大量替代性的前沿数据挖掘技术。在本文中,半参数Cox生存分析模型和非参数CART决策树已应用于财务困境预测,并与最流行的方法进行了比较。此分析是根据各种成本比率(I类错误成本:II类错误成本)和预测间隔而进行的,因为这些间隔会根据情况而有所不同。结果表明,决策树和生存分析模型具有良好的预测准确性,证明了它们的合理使用并支持进一步的研究。

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