Litcius/Paper detail

Deep reinforcement learning for acceptance strategy in bilateral negotiations

Yousef Razeghi, Ozan YAVUZ, Reyhan Aydoğan

2020TURKISH JOURNAL OF ELECTRICAL ENGINEERING & COMPUTER SCIENCES22 citationsDOIOpen Access PDF

Abstract

<p>This paper introduces an acceptance strategy based on reinforcement learning for automated bilateral negotiation, where negotiating agents bargain on multiple issues in a variety of negotiation scenarios. Several acceptance strategies based on predefined rules have been introduced in the automated negotiation literature. Those rules mostly rely on some heuristics, which take time and/or utility into account. For some negotiation settings, an acceptance strategy solely based on a negotiation deadline might perform well; however, it might fail in another setting. Instead of following predefined acceptance rules, this paper presents an acceptance strategy that aims to learn whether to accept its opponent's offer or make a counter offer by reinforcement signals received after performing an action. In an experimental setup, it is shown that the performance of the proposed approach improves over time.</p>

Topics & Concepts

NegotiationReinforcement learningHeuristicsComputer scienceVariety (cybernetics)AdversaryArtificial intelligenceComputer securityLawOperating systemPolitical scienceMulti-Agent Systems and NegotiationConflict Management and NegotiationDispute Resolution and Class Actions
Deep reinforcement learning for acceptance strategy in bilateral negotiations | Litcius