Food Science and Technologynpj Science of Food
Applying federated learning to combat food fraud in food supply chains
A. Gavai, Y. Bouzembrak, et al.
This research highlights the innovative use of federated learning technology for predicting food fraud, employing Bayesian Networks while ensuring data privacy. Conducted by a team of experts including Anand Gavai, Yamine Bouzembrak, and others, it demonstrates how confidential data can enhance decision-making in food safety.
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