Mean-Field Path-Integral Diffusion: From Samples to Interacting Agents

arXiv cs.AI / 5/4/2026

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Key Points

  • The paper challenges the standard independent-sampling approach in diffusion generative models by proposing that samples can coordinate through shared population statistics to move probability mass more efficiently.
  • It introduces Mean-Field Path-Integral Diffusion (MF-PID), turning samples into interacting mean-field agents whose drift is determined self-consistently by the evolving population density, linking generative modeling with multi-agent control via a Hamilton–Jacobi–Bellman/Kolmogorov–Fokker–Planck duality.
  • The authors show analytical tractability in two regimes: an LQG benchmark where the mean-field problem reduces to Riccati equations and linear ODEs, and a Gaussian-mixture setting with piecewise-constant protocols that retain closed-form solutions.
  • For a quadratic interaction potential with schedule β_t and zero base drift, MF-PID is proven to yield the exact linear interpolant between initial and target global means for any initial/target densities and any β_t.
  • In a demand-response energy control application, MF-PID achieves 19–24% reductions in cumulative control energy versus independent-agent baselines while exactly matching the required terminal distribution, highlighting how coordination reallocates effort across heterogeneous sub-populations.

Abstract

Independent sample generation is the prevailing paradigm in modern diffusion-based generative models of AI. We ask a different question: can samples \emph{coordinate} through shared population statistics to transport probability mass more efficiently? We introduce Mean-Field Path-Integral Diffusion (MF-PID), a framework in which samples are promoted to interacting agents whose drift depends self-consistently on the evolving population density. The coupling converts distribution matching into a McKean--Vlasov extension of the stochastic optimal transport problem, unifying generative modeling and multi-agent control under the same Hamilton--Jacobi--Bellman/Kolmogorov--Fokker--Planck duality. We identify two analytically tractable regimes: a Linear--Quadratic--Gaussian (LQG) benchmark in which the infinite-dimensional mean-field system reduces to a finite set of Riccati and linear ODEs, and a Gaussian-mixture regime governed by a piecewise-constant protocol that preserves closed-form solvability. For a quadratic interaction potential with schedule \beta_t and zero base drift we prove that the self-consistent MF guidance is the \emph{exact} linear interpolant between initial and target global means -- a result that holds for arbitrary initial and target densities and any \beta_t. Applied to demand-response control of energy systems, where agents aggregated into an ensemble are energy consumers (e.g.\ thermal zones within a building), MF-PID achieves 19--24\% reductions in cumulative control energy over independent-agent baselines while matching the prescribed terminal distribution exactly, and reveals how coordination redistributes actuation effort across heterogeneous sub-populations.