重新审视高频投资组合优化中的EWMA:一项比较评估

Revisiting EWMA in High‐Frequency‐Based Portfolio Optimization: A Comparative Assessment

Journal of Applied Econometrics · 2026
被引 0 · 同刊同年前 5%
人大 AABS 3

中文导读

比较了复杂的高频多变量波动率模型与简单EWMA滤波器在投资组合优化中的统计和经济表现,发现EWMA在日度和周度预测中难以被超越,考虑交易成本后甚至带来显著效用增益。

Abstract

ABSTRACT This paper compares the statistical and economic performance of state‐of‐the‐art high‐frequency (HF) based multivariate volatility models with a simpler, widely used alternative, the Exponentially Weighted Moving Average (EWMA) filter. Using over two decades of 100 U.S. stock returns (2002–2023), we assess model performance through a Global Minimum Variance portfolio optimization exercise, with and without short‐selling restrictions across multiple forecast horizons. We find that the EWMA model cannot consistently be outperformed by more complex HF‐based volatility models at the daily and weekly forecast horizons, even delivering significant utility gains when including transaction costs due to a favorable balance between turnover and ex‐post portfolio volatility. At the monthly horizon, the EWMA remains competitive against most of its competitors. Our findings hold across alternative specifications, including different estimation window lengths, portfolio sizes and smoothing parameter values, emphasizing the continued relevance of parsimonious volatility specifications, such as the EWMA model, in realistic investment settings.

EWMA模型高频波动率模型投资组合优化最小方差组合