负选择算法在并购目标识别中的应用理论与案例研究

Satyakama Paul, A. Janecek, Fernando Buarque de Lima-Neto, T. Marwala
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引用次数: 1

摘要

在本文中,我们提出了一种基于负选择算法的新方法,该方法属于计算智能(特别是人工免疫系统- AIS)领域,用于识别收购目标。尽管基于习惯统计技术和一些当代计算智能技术的大量研究已经致力于确定收购目标,但大多数现有研究都是基于以前的多次并购。与以往的研究相反,这一建议的新颖之处在于,该方法能够为刚刚开始并购狂潮的新公司提出收购目标。我们首先讨论了理论观点,然后提供了一个具有实际实施细节的案例研究,两者都利用了AIS算法的独特泛化能力。
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Applying the Negative Selection Algorithm for Merger and Acquisition Target Identification Theory and Case Study
In this paper, we propose a new methodology based on the Negative Selection Algorithm that belongs to the field of Computational Intelligence (specifically, Artificial Immune Systems - AIS) to identify takeover targets. Although considerable research based on customary statistical techniques and some contemporary Computational Intelligence techniques have been devoted to identify takeover targets, most of the existing studies are based upon multiple previous mergers and acquisitions. Contrary to previous research, the novelty of this proposal lies in the methodology's ability to suggest takeover targets for novice firms that are at the beginning of their merger and acquisition spree. We first discuss the theoretical perspective and then provide a case study with details for practical implementation, both capitalizing from unique generalization capabilities of AIS algorithms.
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