POPPONENT: Highly accurate, individually and socially efficient opponent preference model in bilateral multi issue negotiations

作者:

摘要

In automated bilateral multi issue negotiations, two intelligent automated agents negotiate on behalf of their owners regarding many issues in order to reach an agreement. Modeling the opponent can excessively boost the performance of the agents and increase the quality of the negotiation outcome. State of the art models accomplish this by considering some assumptions about the opponent which restricts the applicability of the models in real scenarios. In this study, a less restricted technique where perceptron units (POPPONENT) are applied in modeling the preferences of the opponent is proposed. This model adopts the Multi Bipartite version of the Standard Gradient Descent search algorithm (MBGD) to find the best hypothesis, which is the best preference profile. In order to evaluate the accuracy and performance of this proposed opponent model, it is compared with the state of the art models available in the Genius repository. This results in the devised setting which approves the higher accuracy of POPPONENT compared to the most accurate state of the art model. Evaluating the model in the real world negotiation scenarios in the Genius framework also confirms its high accuracy in relation to the state of the art models in estimating the utility of offers. The findings here indicate that this proposed model is individually and socially efficient. This proposed MBGD method could also be adopted in other practical areas of Artificial Intelligence.

论文关键词:Bilateral multi issue negotiation,Opponent modeling,Bidding strategy,Acceptance strategy,Perceptron,Multi bipartite gradient descent

论文评审过程:Received 4 December 2014, Revised 27 March 2016, Accepted 1 April 2016, Available online 8 April 2016, Version of Record 18 April 2016.

论文官网地址:https://doi.org/10.1016/j.artint.2016.04.001