IEEE Access (Jan 2022)

Indirect Dynamic Negotiation in the Nash Demand Game

  • Tatiana V. Guy,
  • Jitka Homolova,
  • Aleksej Gaj

DOI
https://doi.org/10.1109/ACCESS.2022.3210506
Journal volume & issue
Vol. 10
pp. 105008 – 105021

Abstract

Read online

The paper addresses a problem of sequential bilateral bargaining with incomplete information. We proposed a decision model that helps agents to successfully bargain by performing indirect negotiation and learning the opponent’s model. Methodologically the paper casts heuristically-motivated bargaining of a self-interested independent player into a framework of Bayesian learning and Markov decision processes. The special form of the reward implicitly motivates the players to negotiate indirectly, via closed-loop interaction. We illustrate the approach by applying our model to the Nash demand game, which is an abstract model of bargaining. The results indicate that the established negotiation: i) leads to coordinating players’ actions; ii) results in maximising success rate of the game and iii) brings more individual profit to the players.

Keywords