Federated Adaptation of Reservoirs via Intrinsic Plasticity

Abstract

We propose a novel algorithm for performing federated learning with Echo State Networks (ESNs) in a client-server scenario. In particular, our proposal focuses on the adaptation of reservoirs by combining Intrinsic Plasticity with Federated Averaging. The former is a gradient-based method for adapting the reservoir’s non-linearity in a local and unsupervised manner, while the latter provides the framework for learning in the federated scenario. We evaluate our approach on real-world datasets from human monitoring, in comparison with the previous approach for federated ESNs existing in literature. Results show that adapting the reservoir with our algorithm provides a significant improvement on the performance of the global model.

Publication
In 30th European Symposium on Artificial Neural Networks
Valerio De Caro
Valerio De Caro

My research interests include Federated Learning, Continual Learning and Reservoir Computing Systems.