Social Entropy: a New Metric for Learning Multi-robot Teams
نویسنده
چکیده
As robotics research expands into multiagent tasks and learning, investigators need new tools for evaluating the artiicial robot societies they study. Is it enough, for example, just to say a team is \hetero-geneous?" Perhaps heterogeneity is more properly viewed on a sliding scale. To address these issues this paper presents new metrics for learning robot teams. The metrics evaluate diversity in societies of mechanically similar but behaviorally heterogeneous agents. Behavior is an especially important dimension of diversity in learning teams since, as they learn, agents choose between hetero-or homogeneity based solely on their behavior. This paper introduces metrics of behavioral diierence and behavioral diversity. Behav-ioral diierence refers to disparity between two spe-ciic agents, while diversity is a measure of an entire society. Social Entropy, inspired by Shannon's Information Entropy 5], is proposed as a metric of be-havioral diversity. It captures important components of diversity including the number and size of castes in a society. The new metrics are illustrated in the evaluation of an example learning robot soccer team.
منابع مشابه
Hierarchic Social Entropy: An Information Theoretic Measure of Robot Group Diversity
As research expands in multiagent intelligent systems, investigators need new tools for evaluating the artificial societies they study. It is impossible, for example, to correlate heterogeneity with performance in multiagent robotics without a quantitative metric of diversity. Currently diversity is evaluated on a bipolar scale with systems classified as either heterogeneous or homogeneous, dep...
متن کاملTransient Diversity in Multi-Agent Systems
Diversity is an important aspect of highly efficient multi-agent teams. We introduce the main factors that drive a multi-agent system in either direction along the diversity scale. A metric for diversity is described, and we speculate on the concept of transient diversity. Finally, an experiment on social entropy using a RoboCup simulated soccer team is presented. This research area is quite ne...
متن کاملLong Term Modulation and Control of Neuronal Firing in Excitable Tissue Using Optogenetics
Coordination of Communication in Robot Teams by Reinforcement Learning p. 156 Self-organized Multi-agent System for Robot Deployment in Unknown Environments p. 165 Selective Method Based on Auctions for Map Inspection by Robotic Teams p. 175 Study of a Multi-Robot Collaborative Task through Reinforcement Learning p. 185 Design of Social Agents p. 192 Event-Based System for Generation of Traffic...
متن کاملThe Intersection of Robust Intelligence and Trust: Hybrid Teams, Firms, and Systems
We are developing the physics of interdependent uncertainty relations to efficiently and effectively control interdependence in autonomous hybrid teams (i.e., arbitrary combinations of humans, robots and machines), which cannot be done presently. Uncertainty is created in states of interdependence between social objects: at one extreme, interdependence reduces to independent agents and certaint...
متن کاملConcurrent Individual And Social Learning In Robot Teams
Despite the advancement of research and development on multi-robot teams, a key challenge still remains as to how to develop effective mechanisms that enable the robots to autonomously generate, adapt, and enhance team behaviours while improving their individual performance simultaneously. After a literature review of various multi-agent learning approaches, the two most promising learning para...
متن کامل