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AIJ 2007

Multi-agent learning for engineers

Journal Article journal-article Artificial Intelligence

Abstract

As suggested by the title of Shoham, Powers, and Grenager's position paper [Y. Shoham, R. Powers, T. Grenager, If multi-agent learning is the answer, what is the question? Artificial Intelligence 171 (7) (2007) 365–377, this issue], the ultimate lens through which the multi-agent learning framework should be assessed is “what is the question? ”. In this paper, we address this question by presenting challenges motivated by engineering applications and discussing the potential appeal of multi-agent learning to meet these challenges. Moreover, we highlight various differences in the underlying assumptions and issues of concern that generally distinguish engineering applications from models that are typically considered in the economic game theory literature.

Authors

Keywords

  • Multi-agent systems
  • Cooperative control
  • Distributed control
  • Learning in games
  • Nash equilibrium

Context

Venue
Artificial Intelligence
Archive span
1970-2026
Indexed papers
3976
Paper id
47101421557909945