Reward-Based Negotiating Agent Strategies

Authors

  • Ryota Higa NEC Corporation, Japan National Institute of Advanced Industrial Science and Technology(AIST), Japan
  • Katsuhide Fujita Tokyo University of Agriculture and Technology, Japan National Institute of Advanced Industrial Science and Technology(AIST), Japan
  • Toki Takahashi Tokyo University of Agriculture and Technology, Japan National Institute of Advanced Industrial Science and Technology(AIST), Japan
  • Takumu Shimizu Tokyo University of Agriculture and Technology, Japan National Institute of Advanced Industrial Science and Technology(AIST), Japan
  • Shinji Nakadai NEC Corporation, Japan National Institute of Advanced Industrial Science and Technology(AIST), Japan

DOI:

https://doi.org/10.1609/aaai.v37i10.26367

Keywords:

MAS: Agreement, Argumentation & Negotiation, GTEP: Negotiation and Contract-Based Systems, ML: Applications, ML: Reinforcement Learning Algorithms, MAS: Agent/AI Theories and Architectures, MAS: Coordination and Collaboration

Abstract

This study proposed a novel reward-based negotiating agent strategy using an issue-based represented deep policy network. We compared the negotiation strategies with reinforcement learning (RL) by the tournaments toward heuristics-based champion agents in multi-issue negotiation. A bilateral multi-issue negotiation in which the two agents exchange offers in turn was considered. Existing RL architectures for a negotiation strategy incorporate rich utility function that provides concrete information even though the rewards of RL are considered as generalized signals in practice. Additionally, in existing reinforcement learning architectures for negotiation strategies, both the issue-based representations of the negotiation problems and the policy network to improve the scalability of negotiation domains are yet to be considered. This study proposed a novel reward-based negotiation strategy through deep RL by considering an issue-based represented deep policy network for multi-issue negotiation. Comparative studies analyzed the significant properties of negotiation strategies with RL. The results revealed that the policy-based learning agents with issue-based representations achieved comparable or higher utility than the state-of-the-art baselines with RL and heuristics, especially in the large-sized domains. Additionally, negotiation strategies with RL based on the policy network can achieve agreements by effectively using each step.

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Published

2023-06-26

How to Cite

Higa, R., Fujita, K., Takahashi, T., Shimizu, T., & Nakadai, S. (2023). Reward-Based Negotiating Agent Strategies. Proceedings of the AAAI Conference on Artificial Intelligence, 37(10), 11569-11577. https://doi.org/10.1609/aaai.v37i10.26367

Issue

Section

AAAI Technical Track on Multiagent Systems