Joint Estimation of Conditional Mean and Covariance for Unbalanced Panels
52 Pages Posted: 1 Nov 2024 Last revised: 27 Mar 2025
Date Written: October 28, 2024
Abstract
We develop a nonparametric, kernel-based joint estimator for conditional mean and covariance matrices in large and unbalanced panels. The estimator is supported by rigorous consistency results and finite-sample guarantees, ensuring its reliability for empirical applications. We apply it to an extensive panel of monthly US stock excess returns from 1962 to 2021, using macroeconomic and firm-specific covariates as conditioning variables. The estimator effectively captures time-varying cross-sectional dependencies, demonstrating robust statistical and economic performance. We find that idiosyncratic risk explains, on average, more than 75% of the cross-sectional variance.
Keywords: nonparametric estimation, conditional mean, conditional covariance matrix, unbalanced panels, mean-variance efficient portfolio
JEL Classification: C14, C58, G11
Suggested Citation: Suggested Citation
Filipovic, Damir and Schneider, Paul Georg, Joint Estimation of Conditional Mean and Covariance for Unbalanced Panels (October 28, 2024). Swiss Finance Institute Research Paper No. 24-60, Available at SSRN: https://ssrn.com/abstract=5006799 or http://dx.doi.org/10.2139/ssrn.5006799
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