Forecasting the Realized Variance in the Presence of Intraday Periodicity
Journal of Banking & Finance (Forthcoming)
75 Pages Posted: 11 Jun 2019 Last revised: 17 Nov 2024
Date Written: November 14, 2024
Abstract
This paper examines the impact of intraday periodicity on forecasting realized volatility using a heterogeneous autoregressive model (HAR) framework. We show that periodicity inflates the variance of the realized volatility and biases jump estimators. This combined effect adversely affects forecasting. To account for this, we propose a periodicity-adjusted HAR model, HARP, where predictors are constructed from the periodicity-filtered data. We demonstrate empirically (using 30 stocks from various business sectors and the SPY for the period 2000--2020) and via Monte Carlo simulations that the HARP models produce significantly better forecasts across all forecasting horizons. We also show that adjusting for periodicity when estimating the variance risk premium improves return predictability.
Keywords: realized volatility, heterogeneous autoregressive models, intraday periodicity, forecast, variance risk-premium
JEL Classification: C14, C22, C58, G12, G17
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