Quantum Computing Approach to Realistic ESG-Friendly Stock Portfolios

IF 2 Q2 BUSINESS, FINANCE Risks Pub Date : 2024-04-12 DOI:10.3390/risks12040066
Francesco Catalano, Laura Nasello, Daniel Guterding
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Abstract

Finding an optimal balance between risk and returns in investment portfolios is a central challenge in quantitative finance, often addressed through Markowitz portfolio theory (MPT). While traditional portfolio optimization is carried out in a continuous fashion, as if stocks could be bought in fractional increments, practical implementations often resort to approximations, as fractional stocks are typically not tradeable. While these approximations are effective for large investment budgets, they deteriorate as budgets decrease. To alleviate this issue, a discrete Markowitz portfolio theory (DMPT) with finite budgets and integer stock weights can be formulated, but results in a non-polynomial (NP)-hard problem. Recent progress in quantum processing units (QPUs), including quantum annealers, makes solving DMPT problems feasible. Our study explores portfolio optimization on quantum annealers, establishing a mapping between continuous and discrete Markowitz portfolio theories. We find that correctly normalized discrete portfolios converge to continuous solutions as budgets increase. Our DMPT implementation provides efficient frontier solutions, outperforming traditional rounding methods, even for moderate budgets. Responding to the demand for environmentally and socially responsible investments, we enhance our discrete portfolio optimization with ESG (environmental, social, governance) ratings for EURO STOXX 50 index stocks. We introduce a utility function incorporating ESG ratings to balance risk, return and ESG friendliness, and discuss implications for ESG-aware investors.
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量子计算方法实现现实的 ESG 友好型股票投资组合
在投资组合中寻求风险与收益之间的最佳平衡是定量金融学的核心挑战,通常通过马科维茨投资组合理论(MPT)来解决。虽然传统的投资组合优化是以连续的方式进行的,就好像股票可以以小数增量购买一样,但在实际应用中,由于小数股票通常无法交易,因此通常采用近似方法。虽然这些近似方法对较大的投资预算很有效,但随着预算的减少,效果会越来越差。为了缓解这一问题,可以提出一种具有有限预算和整数股票权重的离散马科维茨投资组合理论(DMPT),但其结果是一个非多项式(NP)难题。量子处理单元(QPU)(包括量子退火器)的最新进展使得解决 DMPT 问题变得可行。我们的研究探讨了量子退火器上的投资组合优化,建立了连续和离散马科维茨投资组合理论之间的映射。我们发现,随着预算的增加,正确归一化的离散投资组合会向连续解决方案靠拢。我们的 DMPT 实现提供了高效的前沿解决方案,即使在中等预算情况下也优于传统的四舍五入方法。为了满足对环境和社会责任投资的需求,我们利用欧洲斯托克 50 指数股票的 ESG(环境、社会和治理)评级来增强离散投资组合优化。我们引入了一个包含 ESG 评级的效用函数,以平衡风险、收益和 ESG 友好性,并讨论了对具有 ESG 意识的投资者的影响。
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来源期刊
Risks
Risks Economics, Econometrics and Finance-Economics, Econometrics and Finance (miscellaneous)
CiteScore
3.80
自引率
22.70%
发文量
205
审稿时长
11 weeks
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