Affiliation:
1. University of Zurich
2. AlphaCrest Capital Management
Abstract
Abstract
This paper injects factor structure into the estimation of time-varying, large-dimensional covariance matrices of stock returns. Existing factor models struggle to model the covariance matrix of residuals in the presence of time-varying conditional heteroskedasticity in large universes. Conversely, rotation-equivariant estimators of large-dimensional time-varying covariance matrices forsake directional information embedded in market-wide risk factors. We introduce a new covariance matrix estimator that blends factor structure with time-varying conditional heteroskedasticity of residuals in large dimensions up to 1000 stocks. It displays superior all-around performance on historical data against a variety of state-of-the-art competitors, including static factor models, exogenous factor models, sparsity-based models, and structure-free dynamic models. This new estimator can be used to deliver more efficient portfolio selection and detection of anomalies in the cross-section of stock returns.
Publisher
Oxford University Press (OUP)
Subject
Economics and Econometrics,Finance
Reference43 articles.
1. Using Principal Component Analysis to Estimate a High Dimensional Factor Model with High-frequency Data;Aït-Sahalia;Journal of Econometrics,2017
2. Testing Conditional Factor Models;Ang;Journal of Financial Economics,2012
3. Asset Pricing Models and Financial Market Anomalies;Avramov;Review of Financial Studies,2006
4. Determining the Number of Factors in Approximate Factor Models;Bai;Econometrica,2002
5. Estimating High Dimensional Covariance Matrices and Its Applications;Bai;Annals of Economics and Finance,2011
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