Oil Price Volatility is Effective in Predicting Food Price Volatility. Or is it?

Volatility spillovers between food commodities and oil prices have been identified in the literature, yet, there has been no empirical evidence to suggest that oil price volatility improves real out-of-sample forecasts of food price volatility. In this study we provide new evidence showing that oil...

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Veröffentlicht in:The Energy journal (Cambridge, Mass.) Mass.), 2021-11, Vol.42 (6), p.25-48
Hauptverfasser: Chatziantoniou, Ioannis, Degiannakis, Stavros, Filis, George, Lloyd, Tim
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container_issue 6
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container_title The Energy journal (Cambridge, Mass.)
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creator Chatziantoniou, Ioannis
Degiannakis, Stavros
Filis, George
Lloyd, Tim
description Volatility spillovers between food commodities and oil prices have been identified in the literature, yet, there has been no empirical evidence to suggest that oil price volatility improves real out-of-sample forecasts of food price volatility. In this study we provide new evidence showing that oil price volatility does not improve forecasts of agricultural price volatility. This finding is based on extensive and rigorous testing of five internationally traded agricultural commodities (soybeans, corn, sugar, rough rice and wheat) and two oil benchmarks (Brent and WTI). We employ monthly and daily oil and food price volatility data and two forecasting frameworks, namely, the HAR and MIDAS-HAR, for the period 2nd January 1990 until 31st March 2017. Results indicate that oil volatility-enhanced HAR or MIDAS-HAR models cannot systematically outperform the standard HAR model. Thus, contrary to what has been suggested by the existing literature based on in-sample analysis, we are unable to find any systematic evidence that oil price volatility improves out-of-sample forecasts of food price volatility. The results remain robust to the choice of different out-of-sample forecasting periods and three different volatility measures.
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source SAGE Complete; EBSCOhost Business Source Complete
subjects Agricultural commodities
Agricultural prices
Analysis
Benchmarks
Commodities
Crude oil
Economic aspects
Food
Forecasting
Oils & fats
Petroleum
Prices and rates
Soybeans
Volatility
Volatility (Finance)
title Oil Price Volatility is Effective in Predicting Food Price Volatility. Or is it?
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