A Machine Learning Approach to Forecasting Honey Production with Tree-Based Methods
Brini, Alessio, Giovannini, Elisa, Smaniotto, Elia
–arXiv.org Artificial Intelligence
The beekeeping sector has undergone considerable production variations over the past years due to adverse weather conditions, occurring more frequently as climate change progresses. These phenomena can be high-impact and cause the environment to be unfavorable to the bees' activity. We disentangle the honey production drivers with tree-based methods and predict honey production variations for hives in Italy, one of the largest honey producers in Europe. The database covers hundreds of beehive data from 2019-2022 gathered with advanced precision beekeeping techniques. We train and interpret the machine learning models making them prescriptive other than just predictive. Superior predictive performances of tree-based methods compared to standard linear techniques allow for better protection of bees' activity and assess potential losses for beekeepers for risk management.
arXiv.org Artificial Intelligence
Mar-30-2023
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