Using probabilistic machine learning methods to improve beef cattle price modeling and promote beef production efficiency and sustainability in Canada
Elham Rahmani,
Mohammad Khatami,
Emma Stephens
Abstract:Accurate agricultural commodity price models enable efficient allocation of limited natural resources, leading to improved sustainability in agriculture. Because of climate change, price volatility and uncertainty for the sector are expected to increase in the future, increasing the need for improved price modeling. With the emergence of machine learning (ML) algorithms, novel tools are now available to enhance the modeling of agricultural commodity prices. This research uses both univariate and multivariate M… Show more
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