Financial Distress Prediction Based on Decision Tree Models

Qin Zheng, Jia Yanhui
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引用次数: 16

Abstract

Predicting Corporation's financial distress accurately and efficiently is very important for banks, investors, enterprises and regulatory authorities. This paper analyzes the use of decision tree for corporate financial distress prediction. Linear models, although simple and easy to interpret, require statistical assumptions which may be unrealistic; meanwhile, neural networks are usually too complicated to comprehend. Decision tree, as one of the most efficient data mining methods, is not only able to discriminate patterns which are not linearly separable, but also can be easily understood. In this paper, an algorithm is proposed to select dilation and translation parameters that yield a decision tree classifier with good parsimony characteristics. The models are built in a case study involving both failed and continuing Chinese listed firms in the period of 2003-2005. The results, supported by a test study, show that decision trees may be a valid model to predict listed firms' financial distress in China.
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基于决策树模型的财务困境预测
准确有效地预测企业财务困境对银行、投资者、企业和监管部门都具有重要意义。本文分析了决策树在企业财务困境预测中的应用。线性模型虽然简单且易于解释,但需要可能不切实际的统计假设;同时,神经网络通常太复杂而难以理解。决策树作为最有效的数据挖掘方法之一,不仅能够识别不可线性分离的模式,而且易于理解。本文提出了一种选择扩张和平移参数的算法,从而产生具有良好简约性的决策树分类器。这些模型是建立在一个案例研究的基础上的,该案例研究涉及2003-2005年期间的中国破产上市公司和继续上市公司。研究结果表明,决策树可以作为预测中国上市公司财务困境的有效模型。
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