Dynamic portfolio decisions with climate risk and model uncertainty

IF 3.8 Q1 BUSINESS, FINANCE Journal of Sustainable Finance & Investment Pub Date : 2022-04-26 DOI:10.1080/20430795.2022.2045890
Alexey Rubtsov, Sally Shen
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Abstract

ABSTRACT

We study the effect of investment horizon on the optimal stock–bond–cash portfolio in a dynamic model with uncertainty about climate change. The stock risk premium is assumed to be an affine function of the average global temperature and an unobserved factor which is estimated via Bayesian learning. We assume that the probability distribution of future temperature is uncertain. The optimal investment strategy, robust to the uncertainty about climate change, is derived in closed form and analyzed for returns on the S&P500 index and the S&P500 ESG index. We find that stock market investment is quite sensitive to climate uncertainty with allocation to the S&P500 index being the most sensitive. We also show that, even for relatively short time horizons, welfare losses from climate uncertainty could be large for investments in either the S&P500 index or the S&P500 ESG index.

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具有气候风险和模型不确定性的动态投资组合决策
摘要在考虑气候变化不确定性的动态模型中,研究了投资期限对股票-债券-现金最优投资组合的影响。假设股票风险溢价是全球平均温度的仿射函数和一个通过贝叶斯学习估计的不可观测因子。我们假定未来温度的概率分布是不确定的。对气候变化的不确定性稳健的最优投资策略以封闭形式导出,并对标准普尔500指数和标准普尔500 ESG指数的回报进行分析。我们发现股市投资对气候不确定性相当敏感,其中标普500指数的配置最为敏感。我们还表明,即使在相对较短的时间范围内,气候不确定性造成的福利损失对于标准普尔500指数或标准普尔500 ESG指数的投资来说也可能是巨大的。
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来源期刊
CiteScore
10.60
自引率
7.00%
发文量
55
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