Game-Theoretic Learning and Distributed Optimization in Memoryless Multi-Agent Systems /

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Bibliographic Details
Author / Creator:Tatarenko, Tatiana.
Imprint:Cham : Springer International Publishing : Imprint : Springer, 2017.
Description:1 online resource (IX, 171 pages 38 illustrations) : online resource
Language:English
Subject:
Format: E-Resource Book
URL for this record:http://pi.lib.uchicago.edu/1001/cat/bib/11361642
Hidden Bibliographic Details
ISBN:9783319654799
3319654799
9783319654782
3319654780
Digital file characteristics:text file PDF
Notes:Includes bibliographical references.
Summary: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.
Other form:Printed edition: 9783319654782
Standard no.:10.1007/978-3-319-65479-9