面向社会责任投资组合优化的机器学习

Taeisha Nundlall, Terence L van Zyl
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引用次数: 0

摘要

对社会负责的投资者建立投资组合,目的是在获得财务回报的同时促进社会和环境进步。尽管均值-方差(MV)模型基于投资者的风险承受能力成功地产生了最高可能的回报,但MV模型并没有为社会责任(SR)投资者提供相关的额外约束。为了应对这个问题,MV模型必须考虑环境、社会和治理(ESG)的优化得分。本研究以著名的MV模型为基础,对社会责任投资者进行投资组合优化。修正后的MV模型允许SR投资者进入具有竞争力的SR投资组合市场,尽管他们面临投资夏普比率和投资组合的平均ESG得分之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Socially Responsible Portfolio Optimisation
Socially responsible investors build investment portfolios intending to incite social and environmental advancement alongside a financial return. Although Mean-Variance (MV) models successfully generate the highest possible return based on an investor’s risk tolerance, MV models do not make provisions for additional constraints relevant to socially responsible (SR) investors. In response to this problem, the MV model must consider Environmental, Social, and Governance (ESG) scores in optimisation. Based on the prominent MV model, this study implements portfolio optimisation for socially responsible investors. The amended MV model allows SR investors to enter markets with competitive SR portfolios despite facing a trade-off between their investment Sharpe Ratio and the average ESG score of the portfolio.
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