MCTS-based Automated Negotiation Agent (Extended Abstract)

03/29/2019
by   Cédric Buron, et al.
0

This paper introduces a new Negotiating Agent for automated negotiation on continuous domains and without considering a specified deadline. The agent bidding strategy relies on Monte Carlo Tree Search, which is a trendy method since it has been used with success on games with high branching factor such as Go. It uses two opponent modeling techniques for its bidding strategy and its utility: Gaussian process regression and Bayesian learning. Evaluation is done by confronting the existing agents that are able to negotiate in such context: Random Walker, Tit-for-tat and Nice Tit-for-Tat. None of those agents succeeds in beating our agent; moreover the modular and adaptive nature of our approach is a huge advantage when it comes to optimize it in specific applicative contexts.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/12/2019

MCTS-based Automated Negotiation Agent

This paper introduces a new negotiating agent model for automated negoti...
research
10/16/2018

MoCaNA, un agent de négociation automatique utilisant la recherche arborescente de Monte-Carlo

Automated negotiation is a rising topic in Artificial Intelligence resea...
research
07/15/2019

Automated Playtesting of Matching Tile Games

Matching tile games are an extremely popular game genre. Arguably the mo...
research
09/04/2009

A Monte Carlo AIXI Approximation

This paper introduces a principled approach for the design of a scalable...
research
03/31/2020

Automated Configuration of Negotiation Strategies

Bidding and acceptance strategies have a substantial impact on the outco...
research
12/30/2016

Curiosity-Aware Bargaining

Opponent modeling consists in modeling the strategy or preferences of an...
research
12/20/2016

AIVAT: A New Variance Reduction Technique for Agent Evaluation in Imperfect Information Games

Evaluating agent performance when outcomes are stochastic and agents use...

Please sign up or login with your details

Forgot password? Click here to reset