预测印度制造业并购的多重模型:绩效比较

Venkateswaran Vinod, SUDARSANAM S K
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This research paper explores three models, namely Logistic Regression, Decision Tree, and Multilayer Perceptron, to predict acquisitions. Methodology: The methodology includes defining the accounting variables to be used in the model which have been selected based on strong theoretical foundations. The Indian manufacturing industry was selected as the focus, specifically, data for firms listed in the Bombay Stock Exchange (BSE) between 2010 and 2022 from the Prowess database. There were multiple techniques, such as data transformation and data scrubbing, that were used to mitigate bias and enhance the data reliability. The dataset was split into 70% training and 30% test data. The performance of the three models was compared using standard metrics. Contribution: The research contributes to the existing body of knowledge in multiple dimensions. First, a prediction model customized to the Indian manufacturing sector has been developed. 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引用次数: 0

摘要

目标/目的:收购在公司的成长战略中起着举足轻重的作用。公司投入大量的资源和时间来确定潜在的收购对象。通过收购,印度制造业目前正经历着有机和无机的显著增长。本研究的主要目的是探索可以预测收购的模型,并比较它们在印度制造业的表现。背景:并购(M&A)已经成为公司发展战略不可或缺的一部分。多年来,学术研究已经研究了多种预测收购的模型。在印度制造业的背景下,研究仅限于预测模型。本文探讨了三种模型,即逻辑回归,决策树和多层感知器,以预测收购。方法论:方法论包括定义模型中使用的会计变量,这些变量是基于强大的理论基础选择的。印度制造业被选为重点,特别是2010年至2022年期间在孟买证券交易所(BSE)上市的公司数据。为了减轻偏差,提高数据可靠性,采用了多种技术,如数据转换和数据清洗。数据集分为70%的训练数据和30%的测试数据。使用标准指标对三种模型的性能进行比较。贡献:本研究对现有的知识体系有多方面的贡献。首先,开发了适合印度制造业的预测模型。其次,有针对印度制造业的会计变量。第三,本文对研究有限的印度制造业的预测建模做出了贡献。研究发现:该研究为提出的四个假设发现了重要的支持证据,表明会计变量可以用来预测收购。已经确定了统计上显著的变量影响收购可能性:速动比率,股权周转率,税前利润率和总销售额。这些变量与流动性、增长-资源错配、盈利能力和企业规模等理论有着内在的联系。此外,比较性能指标表明,决策树模型的准确率最高,为62.3%,特异性为66.4%,假阳性率最低,为33.6%。相比之下,多层感知器模型的准确率最高,为61.4%,召回率为64.3%。对从业者的建议:研究结果可以帮助从业者为他们的公司建立定制的预测模型。该模型可以开发为一个实时参考模型,根据公司的结果不断更新。此外,行业从业者有机会建立一个基准分数,为收购提供参考。给研究人员的建议:研究人员可以通过包括额外的分类建模技术来扩展研究范围。通过与其他数据库进行交叉验证,可以提高数据质量。关于目标公司的文本评论,包括管理层和分析师的报价,提供了额外的洞察力,可以增强模型的预测能力。对社会的影响:该研究为利用新兴技术预测收购提供了见解。理论基础和建模属性为进一步扩展以适应特定行业和企业提供了基础。未来研究:通过跨行业并购预测模型、跨境并购与国内并购的比较,有机会在各个维度上拓展研究范围。此外,通过纳入非财务数据(如管理层评论)来探索进一步的研究,以增强收购预测模型是合理的。
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Multiple Models in Predicting Acquisitions in the Indian Manufacturing Sector: A Performance Comparison
Aim/Purpose: Acquisitions play a pivotal role in the growth strategy of a firm. Extensive resources and time are dedicated by a firm toward the identification of prospective acquisition candidates. The Indian manufacturing sector is currently experiencing significant growth, organically and inorganically, through acquisitions. The principal aim of this study is to explore models that can predict acquisitions and compare their performance in the Indian manufacturing sector. Background: Mergers and Acquisitions (M&A) have been integral to a firm’s growth strategy. Over the years, academic research has investigated multiple models for predicting acquisitions. In the context of the Indian manufacturing industry, the research is limited to prediction models. This research paper explores three models, namely Logistic Regression, Decision Tree, and Multilayer Perceptron, to predict acquisitions. Methodology: The methodology includes defining the accounting variables to be used in the model which have been selected based on strong theoretical foundations. The Indian manufacturing industry was selected as the focus, specifically, data for firms listed in the Bombay Stock Exchange (BSE) between 2010 and 2022 from the Prowess database. There were multiple techniques, such as data transformation and data scrubbing, that were used to mitigate bias and enhance the data reliability. The dataset was split into 70% training and 30% test data. The performance of the three models was compared using standard metrics. Contribution: The research contributes to the existing body of knowledge in multiple dimensions. First, a prediction model customized to the Indian manufacturing sector has been developed. Second, there are accounting variables identified specific to the Indian manufacturing sector. Third, the paper contributes to prediction modeling in the Indian manufacturing sector where there is limited research. Findings: The study found significant supporting evidence for four of the proposed hypotheses indicating that accounting variables can be used to predict acquisitions. It has been ascertained that statistically significant variables influence acquisition likelihood: Quick Ratio, Equity Turnover, Pretax Margin, and Total Sales. These variables are intrinsically linked with the theories of liquidity, growth-resource mismatch, profitability, and firm size. Furthermore, comparing performance metrics reveals that the Decision Tree model exhibits the highest accuracy rate of 62.3%, specificity rate of 66.4%, and the lowest false positive ratio of 33.6%. In contrast, the Multilayer Perceptron model exhibits the highest precision rate of 61.4% and recall rate of 64.3%. Recommendations for Practitioners: The study findings can help practitioners build custom prediction models for their firms. The model can be developed as a live reference model, which is continually updated based on a firm’s results. In addition, there is an opportunity for industry practitioners to establish a benchmark score that provides a reference for acquisitions. Recommendation for Researchers: Researchers can expand the scope of research by including additional classification modeling techniques. The data quality can be enhanced by cross-validation with other databases. Textual commentary about the target firms, including management and analyst quotes, provides additional insight that can enhance the predictive power of the models. Impact on Society: The research provides insights into leveraging emerging technologies to predict acquisitions. The theoretical basis and modeling attributes provide a foundation that can be further expanded to suit specific industries and firms. Future Research: There are opportunities to expand the scope of research in various dimensions by comparing acquisition prediction models across industries and cross-border and domestic acquisitions. Additionally, it is plausible to explore further research by incorporating non-financial data, such as management commentary, to augment the acquisition prediction model.
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