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      Architecture Agnostic Federated Learning for Neural Networks

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          Abstract

          With growing concerns regarding data privacy and rapid increase in data volume, Federated Learning(FL) has become an important learning paradigm. However, jointly learning a deep neural network model in a FL setting proves to be a non-trivial task because of the complexities associated with the neural networks, such as varied architectures across clients, permutation invariance of the neurons, and presence of non-linear transformations in each layer. This work introduces a novel Federated Heterogeneous Neural Networks (FedHeNN) framework that allows each client to build a personalised model without enforcing a common architecture across clients. This allows each client to optimize with respect to local data and compute constraints, while still benefiting from the learnings of other (potentially more powerful) clients. The key idea of FedHeNN is to use the instance-level representations obtained from peer clients to guide the simultaneous training on each client. The extensive experimental results demonstrate that the FedHeNN framework is capable of learning better performing models on clients in both the settings of homogeneous and heterogeneous architectures across clients.

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          Author and article information

          Journal
          15 February 2022
          Article
          2202.07757
          c8310435-9c48-473e-a38d-6a88038aa7c1

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          cs.LG

          Artificial intelligence
          Artificial intelligence

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