English

Information-Theoretic Bounded Rationality

Machine Learning 2015-12-22 v1 Artificial Intelligence Systems and Control Optimization and Control

Abstract

Bounded rationality, that is, decision-making and planning under resource limitations, is widely regarded as an important open problem in artificial intelligence, reinforcement learning, computational neuroscience and economics. This paper offers a consolidated presentation of a theory of bounded rationality based on information-theoretic ideas. We provide a conceptual justification for using the free energy functional as the objective function for characterizing bounded-rational decisions. This functional possesses three crucial properties: it controls the size of the solution space; it has Monte Carlo planners that are exact, yet bypass the need for exhaustive search; and it captures model uncertainty arising from lack of evidence or from interacting with other agents having unknown intentions. We discuss the single-step decision-making case, and show how to extend it to sequential decisions using equivalence transformations. This extension yields a very general class of decision problems that encompass classical decision rules (e.g. EXPECTIMAX and MINIMAX) as limit cases, as well as trust- and risk-sensitive planning.

Keywords

Cite

@article{arxiv.1512.06789,
  title  = {Information-Theoretic Bounded Rationality},
  author = {Pedro A. Ortega and Daniel A. Braun and Justin Dyer and Kee-Eung Kim and Naftali Tishby},
  journal= {arXiv preprint arXiv:1512.06789},
  year   = {2015}
}

Comments

47 pages, 19 figures

R2 v1 2026-06-22T12:15:16.244Z