Forecasting Agriculture Commodity Futures Prices with Convolutional Neural Networks with Application to Wheat Futures

Author:

Thaker Avi1,Chan Leo H.2ORCID,Sonner Daniel1

Affiliation:

1. Co-Founder, Tauroi Technologies, Pacifica, CA 94044, USA

2. Department of Finance and Economics, Woodbury School of Business, Utah Valley University, Orem, UT 84058, USA

Abstract

In this paper, we utilize a machine learning model (the convolutional neural network) to analyze aerial images of winter hard red wheat planted areas and cloud coverage over the planted areas as a proxy for future yield forecasts. We trained our model to forecast the futures price 20 days ahead and provide recommendations for either a long or short position on wheat futures. Our method shows that achieving positive alpha within a short time window is possible if the algorithm and data choice are unique. However, the model’s performance can deteriorate quickly if the input data become more easily available and/or the trading strategy becomes crowded, as was the case with the aerial imagery we utilized in this paper.

Publisher

MDPI AG

Reference44 articles.

1. Quantifying the WASDE announcement effect;Adjemian;American Journal of Agricultural Economics,2012

2. Using USDA forecasts to estimate the price flexibility of demand for agricultural commodities;Adjemain;American Journal of Agricultural Economics,2012

3. Forecasting a Moving Target: The Roles of Quality and Timing for Determining Northern U.S. Wheat Basis;Bekkerman;Journal of Agricultural and Resource Economics,2016

4. A new approach to measure speculation in the oil futures market and some policy implications;Chan;Energy Policy,2015

5. Chopra, Ritika, and Sharma, Gagan (2021). Application of Artificial Intelligence in Stock Market Forecasting: A Critique, Review, and Research Agenda. Journal of Risk and Financial Management, 14.

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