Multi-Task and Transfer Learning for Federated Learning Applications Institutional Repository Document uri icon

abstract

  • Federated learning enables many applications benefiting distributed and private datasets of a large number of potential data-holding clients. However, different clients usually have their own particular objectives in terms of the tasks to be learned from the data. So, supporting federated learning with meta-learning tools such as multi-task learning and transfer learning will help enlarge the set of potential applications of federated learning by letting clients of different but related tasks share task-agnostic models that can be then further updated and tailored by each individual client for its particular task. In a federated multi-task learning problem, the trained deep neural network model should be fine-tuned for the respective objective of each client while sharing some parameters for more generalizability. We propose to train a deep neural network model with more generalized layers closer to the input and more personalized layers to the output. We achieve that by introducing layer types such as pre-trained, common, task-specific, and personal layers. We provide simulation results to highlight particular scenarios in which meta-learning-based federated learning proves to be useful.

author list (cited authors)

  • Keeci, C., Shaqfeh, M., Mbayed, H., & Serpedin, E.

citation count

  • 0

complete list of authors

  • Keçeci, Cihat||Shaqfeh, Mohammad||Mbayed, Hayat||Serpedin, Erchin

Book Title

  • arXiv

publication date

  • July 2022