Beyond De Prado and Cotton: Hierarchical and Iterative Methods for General Mean-Variance Portfolios
Bernd Johannes Wuebben

TL;DR
This paper introduces three novel methods that incorporate alpha signals into hierarchical and regularised portfolio construction, extending beyond minimum-variance approaches to improve out-of-sample Sharpe ratios.
Contribution
The paper presents HRP-$\mu$, HRP-$\Sigma\mu$, and CRISP, which integrate alpha signals into hierarchical and iterative portfolio optimization, outperforming existing methods.
Findings
HRP-$\Sigma\mu$ consistently outperforms HRP-$\mu$ in experiments.
CRISP with intermediate $\gamma$ outperforms traditional methods across regimes.
Proposed methods improve out-of-sample Sharpe ratios in Monte Carlo tests.
Abstract
Hierarchical Risk Parity (De Pardo) and the Schur-complement generalization of Cotton are among the most widely adopted regularised portfolio construction methods, yet both are signal-blind: they solve only the minimum-variance problem and cannot accommodate an arbitrary expected-return forecast. This paper introduces three methods that incorporate alpha signals into hierarchical and regularised portfolio construction. HRP- is a hierarchical allocator that accepts an arbitrary signal and nests standard HRP when and . It preserves the tree-based structure of HRP while extending it beyond the minimum-variance setting. HRP- strengthens this construction by replacing inverse-variance representatives with recursive local mean-variance optima, thereby using richer within-cluster covariance information at the same asymptotic cost.…
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