Factor Investing and ESG Integration in Regime-switching Models- An Empirical Study on ESG Factor Integration Using Infinite Hidden Markov Models
Abstract
ESG investing is an active area of interest, both for the investment and academic communities.
However, research is inconclusive on the financial benefits of integrating ESG factors in portfolio
construction. In this thesis, we propose a novel approach to examining the informational content in
ESG data using an infinite Hidden Markov framework to capture market regimes. Our objective is
to find if ESG factors can increase a portfolio’s risk-return characteristics by capturing additional
effects that other factors do not. We build a baseline model with the factors Value, Quality, Growth,
Momentum, and Risk. Next, we add layers of ESG data to the baseline model and analyze the
effect on portfolio performance. Our findings show that the infinite Hidden Markov Model portfolios
consistently outperform the market index EURO STOXX 50. However, we do not observe value
added by ESG scores in our regime-switching factor investing framework.
Degree
Master 2-years
Other description
MSc in Finance
Collections
View/ Open
Date
2022-06-29Author
Haghshenas, Arien
Karim, Martin
Keywords
ESG
Hidden Markov Models
Factor investing
Machine learning
Portfolio construction
Regime-switching models
Series/Report no.
2022:166
Language
eng