Rating the skill of synthetic agents in competitive multi-agent environments
作者:Chairi Kiourt, Dimitris Kalles, George Pavlidis
摘要
A very effective and promising approach to simulate real-life conditions in multi-agent virtual environments with intelligent agents is to introduce social parameters and dynamics. Introduction of social parameters in such settings reshapes the overall performance of the synthetic agents, so a new challenge of reconsidering the methods to assess agents’ evolution emerges. In a number of studies regarding such environments, the rating of the agents is being considered in terms of metrics (or measures or simple grading) designed for humans, such as Elo and Glicko. In this paper, we present a large-scale evaluation of existing rating methods and a proposal for a new rating approach named Relative Skill-Level Estimator (RSLE), which can be regarded as a base for developing rating systems for multi-agent systems. The presented comparative study highlights an inconsistency in rating synthetic agents in the context described by the widely used methods and demonstrates the efficiency of the new RSLE.
论文关键词:Competitive social environments, Multi-agent systems, Synthetic agents, Rating systems
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10115-018-1234-6