Détail du document
Identifiant

oai:arXiv.org:2410.23379

Sujet
Computer Science - Multiagent Syst...
Auteur
Kotturu, Monish Reddy Movahed, Saniya Vahedian Robinette, Paul Jerath, Kshitij Redlich, Amanda Azadeh, Reza
Catégorie

Computer Science

Année

2024

Date de référencement

06/11/2024

Mots clés
using consensus multi-agent
Métrique

Résumé

We introduce an approach to improve team performance in a Multi-Agent Multi-Armed Bandit (MAMAB) framework using Fastest Mixing Markov Chain (FMMC) and Fastest Distributed Linear Averaging (FDLA) optimization algorithms.

The multi-agent team is represented using a fixed relational network and simulated using the Coop-UCB2 algorithm.

The edge weights of the communication network directly impact the time taken to reach distributed consensus.

Our goal is to shrink the timescale on which the convergence of the consensus occurs to achieve optimal team performance and maximize reward.

Through our experiments, we show that the convergence to team consensus occurs slightly faster in large constrained networks.

;Comment: Accepted for publication in Modeling, Estimation, and Control Conference (MECC) 2024

Kotturu, Monish Reddy,Movahed, Saniya Vahedian,Robinette, Paul,Jerath, Kshitij,Redlich, Amanda,Azadeh, Reza, 2024, Relational Weight Optimization for Enhancing Team Performance in Multi-Agent Multi-Armed Bandits

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