“…While our primary focus is on investigating the role of investor sentiment in forecasting the of multiple agricultural commodities price returns, it is also essential to compare the performance of sentiment with that of realized moments. The literature on forecasting of agricultural commodities price returns has emphasized the importance of realized moments, such as leverage, realized skewness, realized kurtosis, realized upside volatility, realized downside volatility, realized jumps, realized upside tail risk, and realized downside tail risk (see, e.g., Bonato et al, 2022; Chatziantoniou et al, 2021; Degiannakis et al, 2022; Luo et al, 2019; Marfatia et al, 2022; Shiba et al, 2022; Tian et al, 2017a, 2017b; Yang et al, 2017). Given that we consider several realized moments as candidates for forecasting , we construct HAR‐RV‐Sentiment‐Moments forecasting models by two alternative approaches: the forward and backward stepwise predictor selection algorithm (see the textbook by Hastie et al, 2009) and a Model‐Based Averaging (MOBA) algorithm (Bonato et al, 2023).…”