MiCRO for Multilateral Negotiations
By: David Aguilera-Luzon, Dave de Jonge, Javier Larrosa
Potential Business Impact:
Helps computers negotiate better with many people.
Recently, a very simple new bilateral negotiation strategy called MiCRO was introduced that does not make use of any kind of opponent modeling or machine learning techniques and that does not require fine-tuning of any parameters. Despite its simplicity, it was shown that MiCRO performs similar to -- or even better than -- most state-of-the-art negotiation strategies. This lead its authors to argue that the benchmark domains on which negotiation algorithms are typically tested may be too simplistic. However, one question that was left open, was how MiCRO could be generalized to multilateral negotiations. In this paper we fill this gap by introducing a multilateral variant of MiCRO. We compare it with the winners of the Automated Negotiating Agents Competitions (ANAC) of 2015, 2017 and 2018 and show that it outperforms them. Furthermore, we perform an empirical game-theoretical analysis to show that our new version of MiCRO forms an empirical Nash equilibrium.
Similar Papers
Introduction to Automated Negotiation
Multiagent Systems
Teaches computers how to bargain and make deals.
Dialogue Diplomats: An End-to-End Multi-Agent Reinforcement Learning System for Automated Conflict Resolution and Consensus Building
Multiagent Systems
Agents learn to agree and solve problems together.
Strategic Tradeoffs Between Humans and AI in Multi-Agent Bargaining
Artificial Intelligence
Computers and people negotiate deals differently.