Changing dividend payout behavior and predicting dividend policy in emerging markets: Evidence from India

Amit Kumar, Pankaj Sinha
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Abstract

Dividends have become increasingly important for capital market participants to achieve financial goals in the rapidly changing Indian economy. This study aims to simplify the evolving Indian dividend puzzle by analyzing the dividend trends, examining the evolving nature of firm and macroeconomic determinants of dividends, and developing a dividend policy prediction model. Dividend trends of 3,162 non-financial listed Indian firms from 2006–2022 are studied to gain insights about the Indian dividend puzzle. Regularization and logit models are used to explore the nature of impact of important dividend determinants. Data-mining methods are employed to build a robust model for dividend policy prediction. Trend analysis reveals a decline in the quantum of dividends and proportion of dividend-paying firms with approximately 90% of the dividend-payers belonging to the manufacturing and service sector. Further findings suggest that size, age, maturity, profitability, past dividends, earnings, and bank monitoring of firms had a favorable impact on the likelihood of dividend payments. Macroeconomic indicators such as GDP growth rate, repo rate, percentage change in equity issues, listings, gross fixed assets formation also had a positive impact. The annual percentage change in debt issues and new project announcements at the macro level with investment prospects at firm level negatively impacted dividends. Dividend prediction model based on the random forest technique achieved the highest prediction accuracy of 90.77% and 77.31% under binomial and multi-class situations. These findings are expected to help corporate executives, portfolio managers and investors proactively design optimal dividend policies and formulate their investment strategies.
新兴市场股利支付行为的变化与股利政策的预测:来自印度的证据
在瞬息万变的印度经济中,股息对于资本市场参与者实现财务目标越来越重要。本研究旨在通过分析股利趋势、研究公司和宏观经济决定股利的演变性质以及开发股利政策预测模型,简化不断演变的印度股利之谜。研究了 3,162 家非金融类上市印度公司 2006-2022 年的股利趋势,以深入了解印度股利之谜。采用正则化和对数模型来探讨重要股息决定因素的影响性质。采用数据挖掘方法建立了一个稳健的股利政策预测模型。趋势分析表明,分红数量和分红企业比例有所下降,约 90% 的分红企业属于制造业和服务业。进一步的研究结果表明,企业的规模、年龄、成熟度、盈利能力、过往分红情况、收益和银行监控对分红的可能性有有利影响。宏观经济指标,如国内生产总值增长率、回购利率、股票发行百分比变化、上市情况、固定资产形成总额也有积极影响。宏观层面的债务发行年度百分比变化和新项目公告与公司层面的投资前景对股利产生负面影响。基于随机森林技术的股利预测模型在二项式和多类情况下的预测准确率最高,分别达到 90.77% 和 77.31%。这些研究结果有望帮助企业高管、投资组合经理和投资者积极主动地设计最优股利政策和制定投资策略。
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