Merger and Acquisition Pricing Using Agent Based Modelling

Q1 Economics, Econometrics and Finance Economics, Management, and Financial Markets Pub Date : 2018-03-01 DOI:10.22381/emfm13120184
N. Agarwal, P. Kwan, David Paul
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引用次数: 10

Abstract

Merger & Acquisition pricing utilises traditional financial models like Discount Cash flow analysis and industry multiples. These methods do not consider behaviour finance biases, for example, prospect theory (Kahneman and Tversky 1979). This paper analyses merger & acquisition pricing using behavioural bias of risk aversion (acquiring company behavioural trait) and optimism (target company trait). It then extends the study to include loss aversion from prospect theory, differences in the way humans view gains and losses based on low or high probability based on cumulative prospect theory, and finally the certainty effect (where humans prefer certain outcome to probabilistic outcomes). All these factors have an impact on merger & acquisition pricing for potential deals as acquiring and target companies behave differently and such impacts are not considered by traditional finance models. Results show that as loss aversion reduces, the positive impact of risk taking and optimism behaviours improve. Also, probabilistic gains and losses can have a positive impact, but certainty has the greatest impact. Humans prefer certain outcomes and acquirers and target company behaviours are more effective in such conditions with increasing utility for both parties under such circumstances. However, in the multiple acquirer setting, competition between the acquirer significantly increases the utility, and the loss aversion co-efficient works in the opposite direction as the perceptive difference between gains and losses decreases.
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基于Agent模型的并购定价
并购定价采用传统的财务模型,如贴现现金流分析和行业倍数。这些方法没有考虑行为金融学的偏见,例如前景理论(Kahneman and Tversky, 1979)。本文利用风险规避(收购公司行为特征)和乐观主义(目标公司特征)的行为偏差来分析并购定价。然后,它将研究扩展到包括来自前景理论的损失厌恶,基于累积前景理论的基于低概率或高概率的人类看待收益和损失的方式的差异,以及最后的确定性效应(人类更喜欢某些结果而不是概率结果)。所有这些因素都会对潜在交易的并购定价产生影响,因为收购方和目标公司的行为不同,而传统的金融模型没有考虑到这种影响。结果表明,随着损失厌恶情绪的降低,风险承担和乐观行为的积极影响有所提高。此外,概率收益和损失也会产生积极影响,但确定性的影响最大。人类偏好某些结果,在这种情况下,收购方和目标公司的行为更有效,双方的效用都在增加。然而,在多收购者环境下,收购者之间的竞争显著增加了效用,而损失厌恶协同效率则相反,因为收益和损失之间的感知差异减小了。
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来源期刊
Economics, Management, and Financial Markets
Economics, Management, and Financial Markets Economics, Econometrics and Finance-Economics, Econometrics and Finance (miscellaneous)
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8
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