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Open AccessJournal ArticleDOI

Decentralized Clustering and Linking by Networked Agents

TLDR
This work proposes a decentralized clustering algorithm aimed at identifying and forming clusters of agents of similar objectives, and at guiding cooperation to enhance the inference performance, and illustrates the performance of the proposed method in comparison to other useful techniques.
Abstract
We consider the problem of decentralized clustering and estimation over multitask networks, where agents infer and track different models of interest The agents do not know beforehand which model is generating their own data They also do not know which agents in their neighborhood belong to the same cluster We propose a decentralized clustering algorithm aimed at identifying and forming clusters of agents of similar objectives, and at guiding cooperation to enhance the inference performance One key feature of the proposed technique is the integration of the learning and clustering tasks into a single strategy We analyze the performance of the procedure and show that the error probabilities of types I and II decay exponentially to zero with the step-size parameter While links between agents following different objectives are ignored in the clustering process, we nevertheless show how to exploit these links to relay critical information across the network for enhanced performance Simulation results illustrate the performance of the proposed method in comparison to other useful techniques

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Citations
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Journal ArticleDOI

Wireless Networked Multirobot Systems in Smart Factories

TL;DR: Social learning can be used to extend the resilience of precision operation in a multirobot system by taking network topology into consideration, which also introduces a new vision for the cybersecurity of smart factories.
Journal ArticleDOI

Secure Distributed State Estimation for Networked Microgrids

TL;DR: A secure DSE method for networked microgrids to enhance system resiliency by addressing false data injection threat in distributed microgrid agent nodes by applying a trust-based diffusion algorithm using adaptive combination policy.
Journal ArticleDOI

Online Distributed Learning Over Graphs With Multitask Graph-Filter Models

TL;DR: In this paper, the problem of adaptive and distributed estimation of graph filters from streaming data is formulated as a consensus estimation problem over graphs, which can be addressed with diffusion LMS strategies.
Proceedings ArticleDOI

Learning to Collaborate in Decentralized Learning of Personalized Models

TL;DR: Thorough comparisons to both classical and recent methods for IID/non-IID decentralized and federated learning demonstrate the method's advantages in identifying collaborators among nodes, learning sparse topology, and producing better personalized models with low communication and computational cost.
Journal ArticleDOI

Decision Learning and Adaptation Over Multi-Task Networks

TL;DR: In this article, the authors study the performance of multi-agent networks engaged in multi-task decision problems under the paradigm of simultaneous learning and adaptation, and derive approximate bounds for the steady-state decision performance of the agents.
References
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Journal ArticleDOI

Distributed Subgradient Methods for Multi-Agent Optimization

TL;DR: The authors' convergence rate results explicitly characterize the tradeoff between a desired accuracy of the generated approximate optimal solutions and the number of iterations needed to achieve the accuracy.
Journal ArticleDOI

New exponential bounds and approximations for the computation of error probability in fading channels

TL;DR: New exponential bounds for the Gaussian Q function and its inverse are presented and a quite accurate and simple approximate expression given by the sum of two exponential functions is reported for the general problem of evaluating the average error probability in fading channels.
Book

Adaptation, Learning, and Optimization Over Networks

TL;DR: The limits of performance of distributed solutions are examined and procedures that help bring forth their potential more fully are discussed and a useful statistical framework is adopted and performance results that elucidate the mean-square stability, convergence, and steady-state behavior of the learning networks are derived.

Adaptive Networks

TL;DR: Under reasonable technical conditions on the data, the adaptive networks are shown to be mean square stable in the slow adaptation regime, and their mean square error performance and convergence rate are characterized in terms of the network topology and data statistical moments.