基于粗糙约简和聚类的多级财务困境预测模型

Hongbao Wang, Fusheng Wang, X. Yu
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引用次数: 0

摘要

为了提高财务困境预测模型的动态适应性和预测性能,本研究提出了一种基于粗糙约简和聚类的多层次财务困境预测模型。该模型将改进的粗糙集属性约简方法与分层聚类算法BIRCH相结合,有效地处理增量数据,提高了预测性能。通过粗糙集属性约简,消除了噪声数据和冗余数据的影响,从而在预处理阶段识别出关键指标。在FDP阶段,提出的多层次模型可以处理不同的应用需求,从而可以从各个方面识别不同的财务困境场景。基于中国上市公司数据的实证结果表明,该模型具有良好的动态适应性和预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-level Financial Distress Prediction Model Based on Rough Reduction and Clustering
In order to improve the dynamic adaptability and predictive performance of the financial distress prediction model, this research proposed a multi-level financial distress prediction model based on rough reduction and clustering. This model improves predictive performance by the combination of an improved rough set attribute reduction method and the hierarchical clustering algorithm, BIRCH, which can process incremental data efficiently. Through attribute reduction by rough set, the influence of noisy data and redundant data were eliminated in order to identify the key indicators during the pre-processing phase. In the phase of FDP, the proposed multi-level model can deal with different application requirements so that different financial distress scenarios can be identified from various aspects. Empirical results with data from Chinese listed companies demonstrate that the model has a good dynamic adaptability and predictive performance.
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