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A genetic-search model for first-day returns using IPO fundamentals

机译:使用IPO基本面的首日收益的遗传搜索模型

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In this paper, we present a study of genetic-based stock selection models using the data of fundamentals of initial public offerings (IPOs). The stock selection model intends to derive the relative quality of the IPOs in order to obtain their relative rankings. Top-ranked IPOs can be selected to form a portfolio. In this study, we also employ Genetic Algorithms (GA) for optimization of model parameters and feature selection for input variables to the stock selection model. We will show that our proposed models deliver above-average first-day returns. Based upon the promising results obtained, we expect our GA-based methodology to advance the research in soft computing for computational finance and provide an effective solution to stock selection for IPOs in practice.
机译:在本文中,我们使用首次公开募股(IPO)基本数据对基于基因的选股模型进行了研究。股票选择模型旨在得出IPO的相对质量,以获得其相对排名。可以选择排名最高的IPO来构成投资组合。在这项研究中,我们还采用遗传算法(GA)来优化模型参数和特征选择,以选择股票选择模型的输入变量。我们将证明我们提出的模型提供的首日收益高于平均水平。基于所获得的令人鼓舞的结果,我们期望基于GA的方法能够推动用于计算金融的软计算研究,并为实践中的IPO选股提供有效的解决方案。

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