Group recommender systems: A multi-agent solution

Providing recommendations to groups of users has become a promising research area, since many items tend to be consumed by groups of people. Various techniques have been developed aiming at making recommendations to a group as a whole. Most works use aggregation techniques to combine preferences, re...

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Veröffentlicht in:Knowledge-based systems 2019-01, Vol.164, p.436-458
Hauptverfasser: Villavicencio, Christian, Schiaffino, Silvia, Andres Diaz-Pace, J., Monteserin, Ariel
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container_end_page 458
container_issue
container_start_page 436
container_title Knowledge-based systems
container_volume 164
creator Villavicencio, Christian
Schiaffino, Silvia
Andres Diaz-Pace, J.
Monteserin, Ariel
description Providing recommendations to groups of users has become a promising research area, since many items tend to be consumed by groups of people. Various techniques have been developed aiming at making recommendations to a group as a whole. Most works use aggregation techniques to combine preferences, recommendations or profiles. However, satisfying all group members in an even way still remains as a challenge. To deal with this problem, we propose an extension of a multi-agent approach based on negotiation techniques for group recommendation. In the approach, we use the multilateral Monotonic Concession Protocol (MCP) to combine individual recommendations into a group recommendation. In this work, we extend the MCP protocol to allow users to personalize the behavior of the agents. This extension was evaluated in two different domains (movies and points of interest) with satisfactory results. We compared our approach against different baselines, namely: a preference aggregation algorithm, a recommendation aggregation algorithm, and a simple one-step negotiation. The results show evidence that, when using our negotiation approach, users in the groups are more uniformly satisfied than with traditional aggregation approaches. •A group recommender approach based on multi-agent systems is proposed.•The approach replaces the traditional aggregation techniques with negotiation.•The group members are satisfied in a more even way than with traditional approaches.
doi_str_mv 10.1016/j.knosys.2018.11.013
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subjects Agglomeration
Algorithms
Domains
Group recommendations
Groups
Multi-agent systems
Multiagent systems
Negotiation
Recommender systems
User satisfaction
title Group recommender systems: A multi-agent solution
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