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Understand Corporate Rationales for Engaging in Reverse Stock Splits - A Data Mining Application

机译:了解企业理论,用于逆转股票拆分 - 数据挖掘应用

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There has been much written on the individual topics of bankruptcy prediction, corporate performance, and reverse stock splits. However, there is little research into the relationship between reverse stock splits and corporate performance as well as bankruptcies. The purpose of this study is to provide and empirically support rationales for reverse splits by classifying reverse splitting firms into two groups, those declaring bankruptcy within 2 years and those remaining solvent. The apparent rationales for engaging in reverse splits differ between the two groups, i.e., weak firms attempting to increase their stock price while solid firms seeking to reposition their stock in the market. Two alternative approaches, Altman's Z-scores and artificial neural networks, are used for classifying reverse splitting firms into the two groups. A comparison is then made of the relative success of Z-scores and neural networks in the classification. This study should generate an understanding of corporate rationale for engaging in reverse splits and the relative success of Z-scores and artificial neural networks in forecasting the two groups.
机译:有很多关于破产预测,企业绩效和逆转股票拆分的各个主题。但是,逆转股票拆分与企业绩效以及破产之间的关系几乎没有研究。本研究的目的是通过将反向分割公司分为两组,在两组中,提供和经验支持对反向分裂的理由,在2年内宣布破产以及剩余的溶剂。用于接合反向分裂的表观理由不同于两组,即试图增加其股票价格的弱点,而稳固的公司寻求在市场上重新定位他们的股票。两种替代方法,Altman的Z分数和人工神经网络,用于将反向分割公司分类为两组。然后,对分类中的Z分数和神经网络的相对成功进行比较。本研究应了解对抗反比分裂的企业理由以及Z分数和人工神经网络的相对成功在预测两组中的理解。

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