Federated Constrastive Learning and Visual Transformers for Personal Recommendation
Asma Belhadi,
Youcef Djenouri,
Fabio Augusto de Alcantara Andrade
et al.
Abstract:This paper introduces a novel solution for personal recommendation in consumer electronic applications. It addresses, on the one hand, the data confidentiality during the training, by exploring federated learning and trusted authority mechanisms. On the other hand, it deals with data quantity, and quality by exploring both transformers and consumer clustering. The process starts by clustering the consumers into similar clusters using contrastive learning and k-means algorithm. The local model of each consumer … Show more
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