Negotiation Considering Privacy Loss on Asymmetric Multi-objective Decentralized Constraint Optimization Problem

Reducing the information revealed by agents is an important requirement in multiagent systems. Privacy preservation has been studied in several research areas including automated negotiating agents and Distributed Constraint Optimization Problems (DCOPs). Although one of recent approaches for privac...

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Published inAgents and Artificial Intelligence Vol. 13251; pp. 85 - 110
Main Author Matsui, Toshihiro
Format Book Chapter
LanguageEnglish
Published Switzerland Springer International Publishing AG 2022
Springer International Publishing
SeriesLecture Notes in Computer Science
Subjects
Online AccessGet full text
ISBN9783031101601
303110160X
ISSN0302-9743
1611-3349
DOI10.1007/978-3-031-10161-8_5

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Abstract Reducing the information revealed by agents is an important requirement in multiagent systems. Privacy preservation has been studied in several research areas including automated negotiating agents and Distributed Constraint Optimization Problems (DCOPs). Although one of recent approaches for privacy preservation is applying secure computation to negotiation process, publishing some information during the negotiation is necessary in the cases where agents should evaluate the reason of their agreement. We propose a negotiation framework consisting of two types of Asymmetric Multi-Objective DCOPs that are repeatedly solved to gradually publish the utility values of agents until an agreement is reached. One problem defines the selection of utility values that are gradually published by agents while another is the problem consist of the published utility values and related assignments to variables. With the general formalization of DCOPs, there are opportunities to represent several classes of negotiation problems. We define several constraints for heuristic strategies that choose the utility values to be published in the next negotiation step. The criterion of social welfare to consider the multiple objectives among individual agents are also introduced. Moreover, we apply two additional preprocessing methods to adjust the utilities among agents by transferring some amount of utility values and to reduce the complexity of the original problem by approximating several relationships of agent pairs. We experimentally evaluate the effect and influence of our proposed approaches including the heuristics to select the published utility information and the additional preprocessing methods.
AbstractList Reducing the information revealed by agents is an important requirement in multiagent systems. Privacy preservation has been studied in several research areas including automated negotiating agents and Distributed Constraint Optimization Problems (DCOPs). Although one of recent approaches for privacy preservation is applying secure computation to negotiation process, publishing some information during the negotiation is necessary in the cases where agents should evaluate the reason of their agreement. We propose a negotiation framework consisting of two types of Asymmetric Multi-Objective DCOPs that are repeatedly solved to gradually publish the utility values of agents until an agreement is reached. One problem defines the selection of utility values that are gradually published by agents while another is the problem consist of the published utility values and related assignments to variables. With the general formalization of DCOPs, there are opportunities to represent several classes of negotiation problems. We define several constraints for heuristic strategies that choose the utility values to be published in the next negotiation step. The criterion of social welfare to consider the multiple objectives among individual agents are also introduced. Moreover, we apply two additional preprocessing methods to adjust the utilities among agents by transferring some amount of utility values and to reduce the complexity of the original problem by approximating several relationships of agent pairs. We experimentally evaluate the effect and influence of our proposed approaches including the heuristics to select the published utility information and the additional preprocessing methods.
Author Matsui, Toshihiro
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Snippet Reducing the information revealed by agents is an important requirement in multiagent systems. Privacy preservation has been studied in several research areas...
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StartPage 85
SubjectTerms Asymmetric constraint optimization
Decentralized problem solving
Multi-objective
Multiagent system
Negotiation
Privacy
Social welfare
Title Negotiation Considering Privacy Loss on Asymmetric Multi-objective Decentralized Constraint Optimization Problem
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