ARAÚJO, V. B.; http://lattes.cnpq.br/3806142714651615; ARAÚJO, Vinícius Brandão.
Resumen:
This study investigates the optimization of Federated Recommendation Systems (FRSs) by
applying Transfer Learning techniques. Facing challenges posed by high communication
costs and the necessity to preserve user data privacy, we propose an innovative methodology
that leverages pre-training and knowledge transfer strategies. This research uses well-known
datasets such as MovieLens and Netflix Prize to explore knowledge transfer from central
ized recommendation systems to a federated approach. Techniques such as PCA (Principal
Component Analysis) and Word2Vec are examined in conjunction with federated training to
evaluate and utilize the generated embeddings in the federated training process. The findings
demonstrate significant reductions in communication costs and the number of users required
for effective model training without compromising recommendation accuracy. Additionally,
a case study focusing on compliance with the General Data Protection Regulation (GDPR)
highlights the practical relevance of the developed techniques for data protection-compliant
recommendation systems. This work contributes to the field of Federated Recommendation
Systems by showing how integrating Transfer Learning with federated learning can optimize
FRSperformance, with practical implications for developing privacy-preserving recommen
dation systems in the current technological landscape.