Data-Driven Sustainable Investment Strategies: Integrating ESG, Financial Data Science, and Time Series Analysis for Alpha Generation

IF 2.1 Q2 BUSINESS, FINANCE
Afreen Sorathiya, Pradnya Saval, Manha Sorathiya
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Abstract

In today’s investment landscape, the integration of environmental, social, and governance (ESG) factors with data-driven strategies is pivotal. This study delves into this fusion, employing sophisticated statistical techniques and Python programming to unveil insights often overlooked by traditional approaches. By analyzing extensive datasets, including S&P500 financial indicators from 2012 to 2021 and 2021 ESG metrics, investors can enhance portfolio performance. Emphasizing ESG integration for sustainable investing, the study underscores the potential for alpha generation. Time series analysis further elucidates market dynamics, empowering investors to align with both financial objectives and ethical values. Notably, the research uncovers a positive correlation between ESG risk and total risk, suggesting that companies with lower ESG risk tend to outperform those with higher ESG risk. Moreover, employing a long–short ESG risk strategy yields abnormal returns of approximately 4.37%. This integration of ESG factors not only mitigates risks associated with environmental, social, and governance issues but also capitalizes on opportunities for sustainable growth, fostering responsible investing practices and ensuring long-term financial returns, resilience, and value creation.
数据驱动的可持续投资战略:整合环境、社会和公司治理、金融数据科学以及时间序列分析,创造阿尔法收益
在当今的投资环境中,将环境、社会和治理(ESG)因素与数据驱动型战略相结合至关重要。本研究深入探讨了这一融合,采用了复杂的统计技术和 Python 编程,揭示了传统方法经常忽略的见解。通过分析广泛的数据集,包括 2012 年至 2021 年的 S&P500 财务指标和 2021 年的 ESG 指标,投资者可以提高投资组合的绩效。该研究强调了可持续投资中的环境、社会和治理整合,强调了产生阿尔法的潜力。时间序列分析进一步阐明了市场动态,使投资者能够同时实现财务目标和道德价值观。值得注意的是,研究发现了环境、社会和治理风险与总风险之间的正相关性,这表明环境、社会和治理风险较低的公司往往表现优于环境、社会和治理风险较高的公司。此外,采用做多做空环境、社会和治理风险的策略可获得约 4.37% 的非正常回报。对环境、社会和治理因素的整合不仅能降低与环境、社会和治理问题相关的风险,还能利用可持续增长的机会,促进负责任的投资实践,确保长期的财务回报、抗风险能力和价值创造。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
100
审稿时长
11 weeks
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