Decision-Making in M&A Under Market Mispricing: The Role of Deep Learning Models

IF 2.7 3区 经济学 Q2 ECONOMICS
Yuxuan Tang
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Abstract

In the ever-evolving landscape of financial markets, mergers and acquisitions (M&A) play a pivotal role in shaping the corporate ecosystem. However, the presence of market mispricing, driven by various factors such as information asymmetry, behavioral biases, and external shocks, has been a persistent challenge for investors and corporations alike. Understanding the intricate relationship between stock market mispricing and the M&A landscape is crucial for making informed investment decisions and fostering a resilient financial environment. This research explores how stock market mispricing impacts M&A within a fragmented market setting, utilizing deep learning methods to uncover complex patterns and relationships. By analyzing market inefficiencies, the study aims to provide a deeper understanding of how mispricing influences M&A strategies and outcomes. Employing a quantitative descriptive research design, the study gathered valid data through distributed questionnaires, yielding responses from 130 investors and traders, 115 market participants, and 99 regulators and policymakers. The analysis was conducted using the Statistical Package for the Social Sciences (SPSS). Firstly, it establishes the effectiveness of deep learning algorithms in detecting and quantifying stock market mispricing, providing a reliable measure of its extent. The study then explores the differential performance outcomes of companies engaging in M&A during periods of prevalent mispricing compared to those during efficient pricing. The study's novel contribution lies in the introduction of the role of sentiment analysis in deep learning models to incorporate market participants' sentiments, enhancing the accuracy of mispricing detection and its impact on M&A activity. Finally, this research contributes valuable insights into the integration of deep learning techniques in understanding and leveraging stock market mispricing for strategic decision-making in the context of M&A.

Abstract Image

市场错误定价下的并购决策:深度学习模型的作用
在不断变化的金融市场格局中,并购(M&;A)在塑造企业生态系统方面发挥着关键作用。然而,由信息不对称、行为偏差和外部冲击等各种因素驱动的市场错误定价的存在,对投资者和企业都是一个持续的挑战。了解股票市场错误定价与并购之间的复杂关系对于做出明智的投资决策和培育一个有弹性的金融环境至关重要。本研究探讨了股票市场错误定价如何影响分散市场环境中的M&;A,利用深度学习方法揭示复杂的模式和关系。通过分析市场效率低下,本研究旨在更深入地了解错误定价如何影响并购战略和结果。本研究采用定量描述性研究设计,通过分发问卷收集有效数据,获得来自130名投资者和交易员、115名市场参与者和99名监管机构和政策制定者的反馈。分析是使用社会科学统计软件包(SPSS)进行的。首先,它建立了深度学习算法在检测和量化股票市场错误定价方面的有效性,为其程度提供了可靠的衡量标准。然后,研究探讨了在普遍错误定价期间与在有效定价期间进行M&;A的公司的不同绩效结果。该研究的新颖贡献在于在深度学习模型中引入了情绪分析的作用,以纳入市场参与者的情绪,提高了错误定价检测的准确性及其对M&;A活动的影响。最后,本研究为整合深度学习技术以理解和利用股票市场错误定价进行战略决策提供了有价值的见解。
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来源期刊
CiteScore
1.40
自引率
18.20%
发文量
242
期刊介绍: Managerial and Decision Economics will publish articles applying economic reasoning to managerial decision-making and management strategy.Management strategy concerns practical decisions that managers face about how to compete, how to succeed, and how to organize to achieve their goals. Economic thinking and analysis provides a critical foundation for strategic decision-making across a variety of dimensions. For example, economic insights may help in determining which activities to outsource and which to perfom internally. They can help unravel questions regarding what drives performance differences among firms and what allows these differences to persist. They can contribute to an appreciation of how industries, organizations, and capabilities evolve.
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