Learning Personalized Models with Clustered System Identification

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Publication:6431958

arXiv2304.01395MaRDI QIDQ6431958

Author name not available (Why is that?)

Publication date: 3 April 2023

Abstract: We address the problem of learning linear system models from observing multiple trajectories from different system dynamics. This framework encompasses a collaborative scenario where several systems seeking to estimate their dynamics are partitioned into clusters according to their system similarity. Thus, the systems within the same cluster can benefit from the observations made by the others. Considering this framework, we present an algorithm where each system alternately estimates its cluster identity and performs an estimation of its dynamics. This is then aggregated to update the model of each cluster. We show that under mild assumptions, our algorithm correctly estimates the cluster identities and achieves an approximate sample complexity that scales inversely with the number of systems in the cluster, thus facilitating a more efficient and personalized system identification process.




Has companion code repository: https://github.com/jd-anderson/cluster-sysid








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