A Novel approach to portfolio construction
T. Di Matteo, L. Riso, M.G. Zoia

TL;DR
This paper introduces BPASGM, a machine learning framework that improves portfolio diversification and stability by selecting assets based on a sparse graphical model of dependencies, leading to better risk-adjusted returns.
Contribution
It develops a novel sparse graphical model-based asset selection method that enhances portfolio stability and performance in high-dimensional settings.
Findings
BPASGM portfolios show lower volatility and better risk-adjusted returns.
The method reduces portfolio size significantly while maintaining performance.
Empirical tests confirm improved stability across various asset classes.
Abstract
This paper proposes a machine learning-based framework for asset selection and portfolio construction, termed the Best-Path Algorithm Sparse Graphical Model (BPASGM). The method extends the Best-Path Algorithm (BPA) by mapping linear and non-linear dependencies among a large set of financial assets into a sparse graphical model satisfying a structural Markov property. Based on this representation, BPASGM performs a dependence-driven screening that removes positively or redundantly connected assets, isolating subsets that are conditionally independent or negatively correlated. This step is designed to enhance diversification and reduce estimation error in high-dimensional portfolio settings. Portfolio optimization is then conducted on the selected subset using standard mean-variance techniques. BPASGM does not aim to improve the theoretical mean-variance optimum under known population…
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Taxonomy
TopicsRisk and Portfolio Optimization · Stock Market Forecasting Methods · Financial Markets and Investment Strategies
