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Time-Series Methods for Forecasting and Modeling Uncertainty in the Food Price Outlook

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  • MacLachlan, Matthew
  • Chelius, Carolyn
  • Short, Gianna

Abstract

This technical bulletin describes a time-series-based approach for forecasting food prices that includes prediction intervals to communicate uncertainty. The performance of forecasts created with this approach was compared to that of previously published USDA, Economic Research Service (ERS) Food Price Outlook (FPO) forecast ranges. The methods in this new approach are intended to be used in FPO data releases that provide monthly forecasts of annual food price changes and may also prove useful in other forecasting endeavors. The new approach used an autoregressive integrated moving average (ARIMA) model that was selected based on performance (information loss), generating a more accurate forecast than previously used methods as measured by root-mean-square errors. With the parameter estimates and estimated error distribution from the optimal ARIMA model, Monte Carlo simulations are used to develop prediction intervals, which reflect uncertainty about future food prices. These prediction intervals more often included the actual annual price changes than the archived fore-cast ranges. On average, the prediction intervals also included the actual annual price change earlier in the forecasting process. These properties generally held whether we used a higher (95 percent) or lower (90 percent) confidence level. The use of standardized econometric models and model selection also allowed for the inclusion of data not currently included in FPO. The methods easily tested whether including external variables improved forecast accuracy or could be used to create new forecasts. This report considered new price change forecasts of apples, seafood, and limited-service restaurants in 2020 and the potential forecast performance improvement from incorporating futures prices as case studies.

Suggested Citation

  • MacLachlan, Matthew & Chelius, Carolyn & Short, Gianna, 2022. "Time-Series Methods for Forecasting and Modeling Uncertainty in the Food Price Outlook," USDA Miscellaneous 327370, United States Department of Agriculture.
  • Handle: RePEc:ags:usdami:327370
    DOI: 10.22004/ag.econ.327370
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    References listed on IDEAS

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    1. Beghin, John C. & Meade, Birgit Gisela Saager & Rosen, Stacey, 2014. "A Consistent Food Demand Framework for International Food Security Assessment," 2014: Food, Resources and Conflict, December 7-9, 2014. San Diego, California 197167, International Agricultural Trade Research Consortium.
    2. Good, Darrel L. & Irwin, Scott H., 2006. "Understanding USDA Corn and Soybean Production Forecasts: Methods, Performance and Market Impacts over 1970 - 2005," AgMAS Project Research Reports 37514, University of Illinois at Urbana-Champaign, Department of Agricultural and Consumer Economics.
    3. Nord, Mark, 2012. "Assessing Potential Technical Enhancements to the U.S. Household Food Security Measures," Technical Bulletins 142549, United States Department of Agriculture, Economic Research Service.
    4. Michael K. Adjemian & Valentina G. Bruno & Michel A. Robe, 2020. "Incorporating Uncertainty into USDA Commodity Price Forecasts," American Journal of Agricultural Economics, John Wiley & Sons, vol. 102(2), pages 696-712, March.
    5. Nathan M. Koffsky, 1966. "Agricultural Economic in the USDA: An Inside View," American Journal of Agricultural Economics, Agricultural and Applied Economics Association, vol. 48(2), pages 413-421.
    6. Nord, Mark, 2012. "Assessing Potential Technical Enhancements to the U.S. Household Food Security Measures," Technical Bulletins 142549, United States Department of Agriculture, Economic Research Service.
    7. Matthew J. MacLachlan & Michael R. Springborn & Paul L. Fackler, 2017. "Learning about a Moving Target in Resource Management: Optimal Bayesian Disease Control," American Journal of Agricultural Economics, Agricultural and Applied Economics Association, vol. 99(1), pages 140-162.
    8. Kumcu, Aylin & Okrent, Abigail M ., 2014. "Methodology for the Quarterly Food-Away-From-Home Prices Data," Technical Bulletins 184292, United States Department of Agriculture, Economic Research Service.
    9. Mosheim, Roberto, 2012. "A Quarterly Econometric Model for Short-Term Forecasting of the U.S. Dairy Industry," Technical Bulletins 184305, United States Department of Agriculture, Economic Research Service.
    10. Kumcu, Aylin & Okrent, Abigail M., 2014. "Methodology for the Quarterly Food-Away-from-Home Prices Data," Technical Bulletins 291972, United States Department of Agriculture, Economic Research Service.
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    Keywords

    Consumer/Household Economics; Demand and Price Analysis; Research Methods/ Statistical Methods; Risk and Uncertainty;
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