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Game-theoretic learning and distributed optimization in memoryless multi-agent systems

This book presents new efficient methods for optimization in realistic large-scale, multi-agent systems. These methods do not require the agents to have the full information about the system, but instead allow them to make their local decisions based only on the local information, possibly obtained...

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Detalles Bibliográficos
Autor principal: Tatarenko, Tatiana
Lenguaje:eng
Publicado: Springer 2017
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-319-65479-9
http://cds.cern.ch/record/2287908
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author Tatarenko, Tatiana
author_facet Tatarenko, Tatiana
author_sort Tatarenko, Tatiana
collection CERN
description This book presents new efficient methods for optimization in realistic large-scale, multi-agent systems. These methods do not require the agents to have the full information about the system, but instead allow them to make their local decisions based only on the local information, possibly obtained during scommunication with their local neighbors. The book, primarily aimed at researchers in optimization and control, considers three different information settings in multi-agent systems: oracle-based, communication-based, and payoff-based. For each of these information types, an efficient optimization algorithm is developed, which leads the system to an optimal state. The optimization problems are set without such restrictive assumptions as convexity of the objective functions, complicated communication topologies, closed-form expressions for costs and utilities, and finiteness of the system’s state space. .
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spelling cern-22879082021-04-21T19:03:05Zdoi:10.1007/978-3-319-65479-9http://cds.cern.ch/record/2287908engTatarenko, TatianaGame-theoretic learning and distributed optimization in memoryless multi-agent systemsMathematical Physics and MathematicsThis book presents new efficient methods for optimization in realistic large-scale, multi-agent systems. These methods do not require the agents to have the full information about the system, but instead allow them to make their local decisions based only on the local information, possibly obtained during scommunication with their local neighbors. The book, primarily aimed at researchers in optimization and control, considers three different information settings in multi-agent systems: oracle-based, communication-based, and payoff-based. For each of these information types, an efficient optimization algorithm is developed, which leads the system to an optimal state. The optimization problems are set without such restrictive assumptions as convexity of the objective functions, complicated communication topologies, closed-form expressions for costs and utilities, and finiteness of the system’s state space. .Springeroai:cds.cern.ch:22879082017
spellingShingle Mathematical Physics and Mathematics
Tatarenko, Tatiana
Game-theoretic learning and distributed optimization in memoryless multi-agent systems
title Game-theoretic learning and distributed optimization in memoryless multi-agent systems
title_full Game-theoretic learning and distributed optimization in memoryless multi-agent systems
title_fullStr Game-theoretic learning and distributed optimization in memoryless multi-agent systems
title_full_unstemmed Game-theoretic learning and distributed optimization in memoryless multi-agent systems
title_short Game-theoretic learning and distributed optimization in memoryless multi-agent systems
title_sort game-theoretic learning and distributed optimization in memoryless multi-agent systems
topic Mathematical Physics and Mathematics
url https://dx.doi.org/10.1007/978-3-319-65479-9
http://cds.cern.ch/record/2287908
work_keys_str_mv AT tatarenkotatiana gametheoreticlearninganddistributedoptimizationinmemorylessmultiagentsystems