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Financial Distress Prediction Based On Serial Combination Of Multiple Classifiers

机译:基于多个分类器序列组合的财务困境预测

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Financial distress is the most synthetic form of business crisis and financial distress prediction (FDP) has been a widely and continually studied topic in the field of corporate finance. Recently, the advantage of FDP based on multiple classifiers' combination began to be emphasized. This paper attempts to put forward a FDP method based on serial combination of multiple classifiers, which tries to make use of class-wise expertise of diverse base classifiers in serial combination system. Framework of serial combination system for FDP, selection mechanism of base classifiers and algorithm of FDP based on serial combination are discussed in detail. With financial condition dividing into two categories, empirical experiment indicated that FDP method based on serial combination of multiple classifiers performs at least as well as the best base classifier in average accuracy and stability, but it did not show much advantage in information complementation from base classifiers and was easy to be dominated by the first base classifier in serial combination system. This may be attributed to the number of target categories and serial combination method was inferred to be more suitable for FDP with multiple categories, which leaves to be further studied.
机译:财务困境是企业危机的最综合形式,财务困境预测(FDP)已成为公司财务领域中广泛且持续研究的主题。最近,基于多个分类器组合的FDP的优势开始受到重视。本文试图提出一种基于多个分类器的序列组合的FDP方法,该方法试图在序列组合系统中利用各种基础分类器的类专业知识。详细讨论了FDP串行组合系统的框架,基本分类器的选择机制和基于串行组合的FDP算法。将财务状况分为两类,经验实验表明,基于多分类器序列组合的FDP方法在平均准确度和稳定性方面至少表现出与最佳基础分类器相同的性能,但在基础分类器的信息补充方面并没有表现出太多优势并且很容易被串行组合系统中的第一个基本分类器所控制。这可能归因于目标类别的数量,并且推断出串行组合方法更适合于具有多个类别的FDP,这有待进一步研究。

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