Author : Giorgio Costa Del Pozo
Release : 2021
Genre :
Kind : eBook
Book Rating : /5 ( reviews)
Book Synopsis Advances in Risk Parity Portfolio Optimization by : Giorgio Costa Del Pozo
Download or read book Advances in Risk Parity Portfolio Optimization written by Giorgio Costa Del Pozo. This book was released on 2021. Available in PDF, EPUB and Kindle. Book excerpt: Risk parity is an asset allocation strategy that seeks to equalize the risk contributions of the constituent assets in a portfolio. The resulting portfolio is fully diversified from a risk perspective. However, like other asset allocation strategies, risk parity is susceptible to estimation errors. Moreover, its mathematical formulation imposes some fundamental limitations. This thesis aims to modernize risk parity by addressing all of the aforementioned issues. We address the susceptibility to estimation errors through three different frameworks. First, we introduce a robust framework that quantifies estimation error and embeds this information during optimization to construct a robust risk parity portfolio. Our second framework takes a different approach, introducing robustness during the parameter estimation step. This is formulated as a game-theoretic minimax problem to make an optimal investment decision against the most adversarial estimate of our parameters. Our third framework improves the quality of our estimated parameters before optimization takes place. We posit that we can embed the cyclical information of financial markets directly into our estimates, resulting in risk parity portfolios aligned with the current market regime. The result is a Markov regime-switching factor model of asset returns from which we can naturally derive regime-dependent parameters for use during optimization. The final component of this thesis addresses the fundamental limitations of risk parity: its lack of accountability for the investor's risk and reward appetite and its prohibition of short sales. We propose a generalized risk parity framework where the investor's risk and reward appetite define our objective, while still enforcing a desirable degree of risk-based diversification. Moreover, we propose an algorithm that allows us to consider portfolios with short positions. Thus, our generalized framework addresses the fundamental limitations of risk parity while retaining the desirable property of risk-based diversification. The frameworks proposed in this thesis can be used independently or in tandem, depending on the investor's needs and goals. The unifying subject of this thesis is to advance risk parity by addressing its fundamental weaknesses. This is achieved by proposing different frameworks and algorithms, with the overarching property of preserving the interpretability and computational tractability of our solutions.