多分类器混合组合用于公司财务困境预测

Jie Sun, Hui Li, Meng Zhang
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引用次数: 5

摘要

为了控制单一分类器在财务困境预测中的不确定性和不稳定性,本研究提出了一种多分类器混合组合模型用于财务困境预测。该模型通过多分类器的组合,利用串行组合和并行组合的优势,提高了预测性能。以多样性原则和个体优化原则作为分类器选择的准则。在定义类最佳分类器选择算子的基础上,设计了混合组合中基本模块的构造算法、混合组合中并行模块的动态加权机制和多数投票机制。对中国上市公司数据的实证研究表明,该模型提高了平均预测精度,同时减小了变异程度。统计分析表明,混合组合模型在财务困境预测方面明显优于现有的单一分类器。
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Multiple Classifiers Hybrid Combination For Companies' Financial Distress Prediction

In order to control uncertainty and instability of single classifiers in financial distress prediction, this research proposed a multiple classifiers hybrid combination model for financial distress prediction. This model improves predictive performance by the combination of multiple classifiers and taking advantages of serial combination and parallel combination. Diversity principle and individual optimization principle were taken as criteria for classifier selection. On the foundation of defining selection operator for class's best classifier, algorithm for constructing basic modules in hybrid combination, dynamic weighting mechanism for parallel modules inside hybrid combination, and mechanism of majority voting were designed. Empirical research with data from Chinese listed companies indicates that the model improves average predictive accuracy and simultaneously reduces variation degree. Statistical analysis demonstrates that the hybrid combination model outperforms existing single classifiers in financial distress prediction significantly.

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