Resum
Risk parity portfolio methods rely solely on covariance estimates to minimize risk, ignoring expected returns due to their high estimation error. This approach can be unstable when dealing with a reduced number of observations. We address this limitation by improving the signal-to-noise ratio in covariance and correlation matrix estimation within hierarchical portfolio selection models. Our approach combines shrinkage covariance estimation, a backbone network extraction, and density-based clustering method. We test two workflows: one for covariance and one for correlation matrices across four real-world market datasets (S&P, Dow Jones, Euro Stoxx 50, Ibex 35) and a synthetic dataset. Results show improved out-of-sample performance in terms of value-at-risk and conditional value-at-risk, offering a more robust alternative to standard hierarchical risk parity.
| Idioma original | Anglès |
|---|---|
| Número d’article | 130304 |
| Nombre de pàgines | 15 |
| Revista | Expert Systems with Applications |
| Volum | 299 |
| Número | D |
| DOIs | |
| Estat de la publicació | Publicada - 1 de març 2026 |
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