@techreport{07da1c6719904cf58c7210e46a4e8926,
title = "Forecasting the Realized Volatility of Agricultural Commodity Prices: Does Sentiment Matter?",
abstract = "We analyze the out-of-sample predictive power of sentiment for the realized volatility of agricultural commodity price returns. We use high-frequency intra-day data covering the period from 2009 to 2020 to estimate realized volatility. Our baseline forecasting model is a heterogeneous autoregressive (HAR) model, which we extend to include sentiment. We further enhance this model by incorporating various key realized moments such as leverage, realized skewness, realized kurtosis, realized upside (``good”) volatility, realized downside (``bad”) volatility, realized jumps, realized upside tail risk, and realized downside tail risk. In order to setup a forecasting model, we use (i) forward and backward stepwise predictor selection, and, (ii) a model-based averaging algorithm. The forecasting models constructed through these algorithms outperform both the baseline HAR-RV model and the HAR-RV-sentiment model. We conclude that, for the agricultural commodities studied in our research, realized moments play a more significant role in forecasting realized volatility compared to sentiment.",
keywords = "Realized volatility, Agricultural commodities, Realized moments, Sentiment, Forecasting, Realized volatility, Agricultural commodities, Realized moments, Sentiment, Forecasting",
author = "Matteo Bonato and Oguzhan Cepni and Rangan Gupta and Christian Pierdzioch",
year = "2023",
language = "English",
series = "Working Paper Series / Department of Economics. University of Pretoria ",
publisher = "University of Pretoria",
number = "202316",
address = "South Africa",
type = "WorkingPaper",
institution = "University of Pretoria",
}