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Research of Bad Debt Risk Based on Rough sets and Binary Tree SVMMulti-layer Classifier

机译:基于粗糙集和二叉树支持向量机多层分类器的呆账风险研究

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In this paper, a bad-debt-risk evaluationmodel is established based on rough sets and binary tree SVM multi-layer classifier. First, we use rough sets topre-process a new set of index system including typical 5Cfinancial indices system which combines both financial andnon-financial factors on the basis of the evaluation method. We define the bad debt rating as four classes- normality, attention, doubt and loss via analyzing accounts payable. Then, BP neural network is used to assess the 180 sampleswhich are stochastically extracted from listed companies, and the four classes are identified by the trained classifierusing 65 samples. Finally the binary SVM multi-layerclassifier is also used to compare the result with which from BP neural network. The test results show that the classifierhas an excellent performance on training accuracy andreliability. The experiment results indicate that multi-layer SVM classifier is effective in credit risk assessment andachieves better performance than BP neural network.
机译:本文基于粗糙集和二叉树支持向量机多层分类器,建立了呆账风险评估模型。首先,我们使用粗糙集对一套新的指标体系进行预处理,其中包括典型的5C财务指标体系,该体系在评估方法的基础上结合了财务和非财务因素。通过分析应付账款,我们将坏账评级分为正常,注意,怀疑和损失四类。然后,使用BP神经网络评估从上市公司中随机抽取的180个样本,经过训练的分类器使用65个样本对这四个类别进行识别。最后,二进制SVM多层分类器也用于比较BP神经网络的结果。测试结果表明,该分类器在训练准确性和可靠性上具有优良的表现。实验结果表明,多层支持向量机分类器在信用风险评估中是有效的,并且比BP神经网络具有更好的性能。

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