A simple realized factor-based portfolio: improving minimum variance portfolio performance by incorporating low-frequency betas
Wanbo Lu and
Yifu Wang
Quantitative Finance, 2025, vol. 25, issue 8, 1315-1332
Abstract:
Accurate estimation of large covariance and precision matrices is an essential prerequisite of portfolio selection and financial risk management. Among factor-based covariance estimators, high-frequency data provides additional information but also introduces noise, which could degrade the estimation of betas. In this paper, we propose a new Mixed-frequency and FActor-based (MFACE) combining high-frequency (intraday) data and low-frequency (daily) betas. We apply approximate factor structure to construct the high-dimensional minimum variance portfolio. We establish the consistency and obtain the convergence rate of the covariance estimator and the corresponding precision matrix estimator. A comprehensive simulation study investigates the estimation accuracy under different combinations of intrady sampling frequency, intraday sample size and daily sample size. Out-of-sample forecasts demonstrate that our estimator explains the daily volatility of the equally-weighted portfolio pretty well. The minimum variance portfolio that embodies low-frequency betas also achieves the minimum risk at relatively low cost among several estimators.
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:taf:quantf:v:25:y:2025:i:8:p:1315-1332
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DOI: 10.1080/14697688.2025.2538595
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