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SFFS-PC-NN optimized by genetic algorithm for dynamic prediction of financial distress with longitudinal data streams

机译:遗传算法优化的SFFS-PC-NN,用于纵向数据流动态预测财务困境

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Recently, research of financial distress prediction has become increasingly urgent. However, existing static models for financial distress prediction are not able to adapt to the situation that the sample data flows constantly with the lapse of time. Financial distress prediction with static models does not meet the demand of the dynamic nature of business operations. This article explores the theoretical and empirical research of dynamic modeling on financial distress prediction with longitudinal data streams from the view of individual enterprise. Based on enterprise's longitudinal data streams, dynamic financial distress prediction model is constructed by integrating financial indicator selection by using sequential floating forward selection method, dynamic evaluation of enterprise's financial situation by using principal component analysis at each longitudinal time point, and dynamic prediction of financial distress by using back-propagation neural network optimized by genetic algorithm. This model's ex-ante prediction efficiently combines its ex-post evaluation. In empirical study, three listed companies' half-year longitudinal data streams are used as the sample set. Results of dynamic financial distress prediction show that the longitudinal and dynamic model of enterprise's financial distress prediction is more effective and feasible than static model.
机译:近来,财务困境预测的研究变得越来越紧迫。但是,现有的财务困境预测静态模型无法适应样本数据随时间流逝不断流动的情况。使用静态模型进行财务困境预测无法满足业务运营动态性质的需求。本文从个体企业的角度探讨了纵向数据流对财务困境预测动态建模的理论和实证研究。在企业纵向数据流的基础上,建立了动态​​财务困境预测模型,该模型通过采用顺序浮点前向选择方法集成财务指标选择,通过在每个纵向时间点使用主成分分析对企业财务状况进行动态评估以及财务困境的动态预测来构建通过使用遗传算法优化的反向传播神经网络。该模型的事前预测有效地结合了事后评估。在实证研究中,将三个上市公司的半年纵向数据流用作样本集。动态财务困境预测结果表明,纵向和动态的企业财务困境预测模型比静态模型更为有效和可行。

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