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A Study on The Factors Influencing Post-merger Performance of China's Listed Firms Based on Data Mining

机译:基于数据挖掘的中国上市公司职业后绩效的因素研究

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Based on a sample of Mergers and Acquisitions of China's A-share listed companies during 2003-2005, this paper adopts multivariate adaptive regression splines model which is a newly developed data mining technique to analyze the nonlinear relationship between post-merger operating performance and M&A characteristics such as corporate free cash flow, holding proportion of large shareholders, State-owned share ratio, M&A premium, relative target size and industry relatedness of target and merger. The result demonstrates that corporate free cash flow per share has a nonlinear threshold effect on the first-year performance of merger subsequent to the M&A transaction. For the second year following M&A transaction, corporate free cash flow per share significantly negatively impacts the performance. However, there are no significant evidence that the M&A characteristics affect the performance of merger for the third year after M&A transaction and the year of M&A. The explanational powers of our regression models for the first two years following M&A transaction are obviously higher than that of previous research, which suggests that our regression models adequately reflect the nonlinear relationship between M&A characteristics and post-merger performance.
机译:基于2003 - 2005年中国A股上市公司的兼并和收购的样本,本文采用多变量自适应回归均值模型,是一种新开发的数据挖掘技术,用于分析合并后运行性能与并购特征之间的非线性关系如公司自由现金流,持有大股东,国有股票比例,并购溢价,相对目标规模和行业相关目标和合并。结果表明,每股的企业自由现金流量对并购交易后的合并的第一年绩效具有非线性阈值影响。在并购交易后的第二年,每股的企业自由现金流量会对绩效产生显着负面负面负面影响。但是,没有明显的证据表明,并购特征影响了在并购交易和并购年份后第三年的合并性能。在并购交易之后前两年的回归模型的解释权显然高于先前研究的权力,这表明我们的回归模型充分反映了并购特征与合并后性能之间的非线性关系。

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