English

Adaptation and learning over networks for nonlinear system modeling

Machine Learning 2017-05-01 v1 Machine Learning

Abstract

In this chapter, we analyze nonlinear filtering problems in distributed environments, e.g., sensor networks or peer-to-peer protocols. In these scenarios, the agents in the environment receive measurements in a streaming fashion, and they are required to estimate a common (nonlinear) model by alternating local computations and communications with their neighbors. We focus on the important distinction between single-task problems, where the underlying model is common to all agents, and multitask problems, where each agent might converge to a different model due to, e.g., spatial dependencies or other factors. Currently, most of the literature on distributed learning in the nonlinear case has focused on the single-task case, which may be a strong limitation in real-world scenarios. After introducing the problem and reviewing the existing approaches, we describe a simple kernel-based algorithm tailored for the multitask case. We evaluate the proposal on a simulated benchmark task, and we conclude by detailing currently open problems and lines of research.

Keywords

Cite

@article{arxiv.1704.08913,
  title  = {Adaptation and learning over networks for nonlinear system modeling},
  author = {Simone Scardapane and Jie Chen and Cédric Richard},
  journal= {arXiv preprint arXiv:1704.08913},
  year   = {2017}
}

Comments

To be published as a chapter in `Adaptive Learning Methods for Nonlinear System Modeling', Elsevier Publishing, Eds. D. Comminiello and J.C. Principe (2018)

R2 v1 2026-06-22T19:30:50.390Z