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Particle system approximation of Nash equilibria in large games (2510.19211v1)

Published 22 Oct 2025 in math.PR and math.OC

Abstract: We develop a probabilistic framework to approximate Nash equilibria in symmetric $N$-player games in the large population regime, via the analysis of associated mean field games (MFGs). The approximation is achieved through the analysis of a McKean-Vlasov type Langevin dynamics and their associated particle systems, with convergence to the MFG solution established in the limit of vanishing temperature parameter. Relying on displacement monotonicity or Lasry-Lions monotonicity of the cost function, we prove contractility of the McKean-Vlasov process and uniform-in-time propagation of chaos for the particle system. Our results contribute to the general theory of interacting diffusions by showing that monotonicity can ensure convergence without requiring small interaction assumptions or functional inequalities.

Summary

  • The paper develops a particle system approach utilizing McKean–Vlasov Langevin dynamics to approximate Nash equilibria in large symmetric games.
  • It provides rigorous guarantees on contractivity and uniform-in-time propagation of chaos under key monotonicity and convexity conditions.
  • The framework delivers explicit convergence rates and scalable methods for equilibrium computation in multi-agent systems.

Particle System Approximation of Nash Equilibria in Large Games

Introduction and Motivation

The paper develops a probabilistic framework for approximating Nash equilibria in symmetric NN-player games in the large population regime, leveraging the theory of mean field games (MFGs). The central challenge addressed is the computational intractability of finding Nash equilibria in high-dimensional, non-cooperative games, especially as NN grows. Traditional gradient-based methods suffer from slow convergence and may fail to find true Nash equilibria in the absence of strong convexity. The authors propose a particle system approach based on McKean–Vlasov type Langevin dynamics, providing both theoretical guarantees and quantitative convergence rates under monotonicity conditions on the cost functions.

Mathematical Framework

Symmetric NN-Player Games and Mean Field Limit

The setting considers NN agents, each with a cost function Fi:(Rd)NRF_i: (\mathbb{R}^d)^N \to \mathbb{R}, seeking a Nash equilibrium x=(x1,,,xN,)x^* = (x^{1,*}, \ldots, x^{N,*}) such that

Fi(x)Fi(xi,,y),yRd,i.F_i(x^*) \leq F_i(x^{-i,*}, y), \quad \forall y \in \mathbb{R}^d, \forall i.

For symmetric games, the cost functions are of the form Fi(x)=F(xi,μxN)F_i(x) = F(x^i, \mu^N_x), where μxN\mu^N_x is the empirical measure of the players' strategies. The mean field game (MFG) limit is defined via a cost F:Rd×P(Rd)RF: \mathbb{R}^d \times \mathcal{P}(\mathbb{R}^d) \to \mathbb{R}, and the MFG equilibrium is a measure mm such that

supp(m)argminxRdF(x,m).\operatorname{supp}(m) \subset \arg\min_{x \in \mathbb{R}^d} F(x, m).

Particle System and McKean–Vlasov Dynamics

The core approximation is via the interacting particle system:

dXti=[xF(Xti,μXtN)+σU(Xti)]dt+2σdWti,dX^i_t = -\left[ \nabla_x F(X^i_t, \mu^N_{X_t}) + \sigma \nabla U(X^i_t) \right] dt + \sqrt{2\sigma} dW^i_t,

where UU is a confining potential, σ>0\sigma > 0 is a temperature parameter, and WtiW^i_t are independent Brownian motions. As NN \to \infty, the empirical measure converges to the law of the McKean–Vlasov SDE:

dXt=[xF(Xt,mXt)+σU(Xt)]dt+2σdWt.dX_t = -\left[ \nabla_x F(X_t, m_{X_t}) + \sigma \nabla U(X_t) \right] dt + \sqrt{2\sigma} dW_t.

Monotonicity and Contractivity

The analysis relies on two monotonicity notions for FF:

  • Lasry–Lions monotonicity: For all m,mP(Rd)m, m' \in \mathcal{P}(\mathbb{R}^d),

[F(x,m)F(x,m)](mm)(dx)0.\int [F(x, m) - F(x, m')] (m - m')(dx) \geq 0.

  • Displacement monotonicity: For all m,mm, m' and couplings πΠ(m,m)\pi \in \Pi(m, m'),

[xF(x,m)xF(x,m)](xx)π(dx,dx)0.\int [\nabla_x F(x, m) - \nabla_x F(x', m')] \cdot (x - x') \, \pi(dx, dx') \geq 0.

These conditions, together with convexity of UU or FF, are shown to guarantee contractivity of the McKean–Vlasov process and uniform-in-time propagation of chaos for the particle system, even without smallness assumptions on the interaction term.

Main Results

Existence and Uniqueness of Invariant Measures

  • For any σ>0\sigma > 0, the McKean–Vlasov SDE admits an invariant measure mσm^\sigma.
  • The family (mσ)σ>0(m^\sigma)_{\sigma > 0} is tight, and any accumulation point as σ0\sigma \to 0 is an MFG equilibrium.
  • Uniqueness of the invariant measure and the MFG equilibrium is established under strict Lasry–Lions or displacement monotonicity.

Quantitative Convergence and Propagation of Chaos

  • Contractivity: If FF is F\ell_F-displacement semimonotone and UU is U\ell_U-convex with F+σU>0\ell_F + \sigma \ell_U > 0, then

supt>0e2(F+σU)tW22(mXt,mσ)<.\sup_{t > 0} e^{2(\ell_F + \sigma \ell_U)t} W_2^2(m_{X_t}, m^\sigma) < \infty.

  • Uniform-in-time propagation of chaos: Under additional regularity, for all NN,

supt0NE[Xt1,NXt2]<.\sup_{t \geq 0} N \mathbb{E}[|X^{1,N}_t - X_t|^2] < \infty.

  • Approximation error: For FF Lasry–Lions monotone and F\ell_F-convex,

W2(mXt,m0)Ce(F+σU)t+CσF+σU,W_2(m_{X_t}, m^0) \leq C e^{-(\ell_F + \sigma \ell_U)t} + C \frac{\sigma}{\ell_F + \sigma \ell_U},

and for the particle system,

W2(mXtσ,N,m0)CN+Ce(F+σU)t+CσF+σU.W_2(m_{X^{\sigma,N}_t}, m^0) \leq \frac{C}{N} + C e^{-(\ell_F + \sigma \ell_U)t} + C \frac{\sigma}{\ell_F + \sigma \ell_U}.

Approximate Nash Equilibria

  • For any MFG equilibrium m0m^0, the empirical measure of NN i.i.d. samples from m0m^0 yields an εN\varepsilon^N-Nash equilibrium for the NN-player game, with εN0\varepsilon^N \to 0 as NN \to \infty.
  • The convergence rate of empirical measures to the MFG equilibrium is characterized in terms of the Fournier–Guillin rate, with explicit concentration inequalities.

Avoidance of Smallness Assumptions

A key claim is that monotonicity in the measure argument, together with convexity of either FF or UU, suffices for contractivity and propagation of chaos, without requiring small interaction or functional inequalities. This is in contrast to much of the prior literature, which imposes smallness conditions on the Lipschitz constant of the interaction term.

Implications and Applications

Theoretical Implications

  • The results provide a rigorous justification for the use of mean field approximations in large symmetric games, with explicit quantitative error bounds.
  • The framework extends the applicability of particle-based methods for Nash equilibrium approximation to settings with strong interactions, provided monotonicity holds.
  • The analysis clarifies the role of monotonicity in ensuring uniqueness and stability of equilibria in both finite and infinite population limits.

Practical and Computational Implications

  • The particle system approach enables scalable approximation of Nash equilibria in high-dimensional, large-population games, relevant for multi-agent systems, economics, and engineering.
  • The convergence rates and concentration inequalities provide guidance for selecting the number of particles NN, simulation time tt, and temperature parameter σ\sigma to achieve a desired approximation accuracy.
  • The method is robust to the strength of interactions, provided monotonicity is satisfied, making it suitable for a broader class of games than previously addressed.

Potential for Future Developments

  • The framework can be extended to dynamic games, games with more general interaction structures, and settings with non-symmetric or heterogeneous agents.
  • The results suggest new directions for the design of scalable algorithms for equilibrium computation in large-scale multi-agent reinforcement learning and distributed control.
  • The avoidance of smallness assumptions opens the possibility of analyzing more realistic models in economics and social sciences, where strong interactions are prevalent.

Conclusion

This work establishes a comprehensive probabilistic framework for approximating Nash equilibria in large symmetric games via particle systems and mean field limits. By leveraging monotonicity properties, the authors provide strong theoretical guarantees for convergence, contractivity, and propagation of chaos, without restrictive smallness conditions on interactions. The results have significant implications for both the theory and practice of large-scale game-theoretic analysis, and open avenues for further research in mean field control, multi-agent learning, and beyond.

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