The Painful Double-Knock on Food Prices: 2008 Financial Crises and COVID-19 Pandemic

John M. Riveros

Department of Economics, Ludwig Maximilian University of Munich,80333, Munich, Germany M&S Research Hub, 34117, Kassel, Germany

Oluwaseun Samuel Oduniyi

Department of Agricultural and Applied Economics, Texas Tech University, Lubbock, 79409, USA. M&S Research Hub, 34117, Kassel, Germany. Department of Agriculture, College of agriculture and environmental science, Florida campus, University of South Africa, Johannesburg, 1709, South Africa.

Sherif. M. Hassan

M&S Research Hub, 34117, Kassel, Germany. Economics Department, Faculty of Commerce, Suez Canal University, Ismailia, 41111, Egypt.

DOI: https://doi.org/10.36956/rwae.v5i4.1179

18 July 2024 | Revised: 14 August 2024 | Accepted: 21 August 2024 | Published Online: 29 September 2024

Copyright © 2024 John M. Riveros , Oluwaseun Samuel Oduniyi, Sherif. M. Hassan. Published by Nan Yang Academy of Sciences Pte. Ltd.

Creative Commons LicenseThis is an open access article under the Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0) License.


Abstract

Food supply and demand chains are susceptible to global shocks. Unstable and sudden food price hikes cause serious malnutrition problems and increase the number of food-insecure people, especially in developing countries. Using the FAO Food Price Index (FFPI), this study makes one of the first attempts to utilize monthly observations of the FFPI in dynamic time series ARDL and ARX settings to identify the effects of food prices on COVID-19 infection rates and the 2008 global financial crisis. Our empirical findings confirm that the financial crisis significantly increased the FFPI, although its effects decreased as markets equilibrated between 2007 and 2009. The pandemic has had a mild impact on food prices in the short run compared to the 2008 crisis, but in the long run, the COVID-19 outbreak has a larger impact, with 1 million new COVID-19 infections associated with an increase of between 0.0464 and 0.0509 points in the FFPI. Food price volatility and hikes, even if short-term, increase poverty, malnutrition, and food insecurity, foster social unrest, and lower people’s living standards. This research implies that food prices are globally sensitive to both pandemics and financial crises, and the severity of the pandemic can drive global food prices higher, depending on the number of infections. Over the long run, the impact of the outbreak surpasses that of the financial crisis. The latter tends to have a major impact on food prices in the short run but subsequently declines as markets begin to equilibrate, reflecting asymmetries between the two phenomena in their effects on food prices. Overall, the results indicate that the financial crisis and the COVID-19 pandemic had a short-run, immediate, augmenting impact on food prices. However, while the 2008 crisis affected the supply side only, COVID-19 had impacts on both the demand and supply sides.

Keywords: COVID-19; Food Price Index; ARDL; Global shocks; Global financial crises


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