Black-Litterman Portfolio Optimization with Dynamic CAPM via ABC-MCMC

Flández, S; Rubilar-Torrealba, R; Chahuán-Jiménez, K; de la Fuente-mella, H; Elórtegui-Gómez, C

Keywords: optimization, stock market, 91-10, Black-Litterman, ABC-MCMC

Abstract

The present research proposes a methodology for portfolio construction that integrates the Black–Litterman model with expected returns generated through simulations under dynamic Capital Asset Pricing Model (CAPM) with conditional betas, estimated via Approximate Bayesian Computation Markov Chain Monte Carlo (ABC-MCMC). Bayesian estimation enables the incorporation of volatility regimes and the adjustment of each asset’s sensitivity to the market, thereby delivering expected returns that more accurately reflect the structural state of the assets compared to historical methods. This strategy is applied to the United States stock market, and the results suggest that the Black–Litterman portfolio performs competitively against portfolios optimised using the classic Markowitz model, even maintaining the same fixed weights throughout the month. Specifically, it has been demonstrated to outperform the minimum variance portfolio with regard to cumulative return and attains a Sharpe ratio that approaches the Markowitz maximum Sharpe portfolio, although it does so with a distinct and more concentrated asset allocation. It has been observed that, while the maximum return portfolio attains the highest absolute profit, it does so at the expense of significantly higher volatility. © 2025 by the authors.

Más información

Título según WOS: Black-Litterman Portfolio Optimization with Dynamic CAPM via ABC-MCMC
Título según SCOPUS: Black–Litterman Portfolio Optimization with Dynamic CAPM via ABC-MCMC
Título de la Revista: Mathematics
Volumen: 13
Número: 20
Editorial: Multidisciplinary Digital Publishing Institute (MDPI)
Fecha de publicación: 2025
Idioma: English
DOI:

10.3390/math13203265

Notas: ISI, SCOPUS