A Collective Variational Principle Unifying Bayesian Inference, Game Theory, and Thermodynamics

arXiv cs.AI / 5/1/2026

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Key Points

  • The paper introduces the Game-Theoretic Free Energy Principle, a unified framework linking the Free Energy Principle with game theory for multi-agent systems.
  • It proves that, given bounded rationality and local information constraints, stationary points of collective free energy correspond to approximate Nash equilibria in an induced stochastic game.
  • It also shows the converse: many cooperative games can be expressed variationally, where equilibria emerge as Gibbs distributions over coalitions, connecting Bayesian inference to strategic interaction.
  • To capture higher-order multi-agent effects, the authors formulate the Harsanyi dividend using free energy to quantify irreducible synergy among agents.
  • The work proposes and experimentally validates a falsifiable non-monotonic relationship between sensory precision and agent influence across neural, biological, and artificial multi-agent settings.

Abstract

Collective intelligence emerges across biological, physical, and artificial systems without central coordination, yet a unifying principle governing such behaviour remains elusive. The Free Energy Principle explains how individual agents adapt through variational inference, while game theory formalises strategic interactions. Here we introduce the Game-Theoretic Free Energy Principle, a unified framework showing that multi-agent systems performing local free-energy minimisation implicitly implement a stochastic game. We prove that, under bounded rationality and local information constraints, stationary points of collective free energy correspond to approximate Nash equilibria of an induced game. Conversely, a broad class of cooperative games admits a variational representation in which equilibria arise as Gibbs distributions over coalitions, establishing a bridge between Bayesian inference and strategic interaction. To characterise higher-order effects, we introduce a free-energy formulation of the Harsanyi dividend, isolating irreducible multi-agent synergy. This yields a predictive theory of cooperation, including a falsifiable non-monotonic relationship between sensory precision and agent influence. We validate this prediction across neural, biological, and artificial multi-agent systems. These results identify a common variational principle underlying inference, thermodynamics, and game-theoretic equilibrium.