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      Convergence of Deep Fictitious Play for Stochastic Differential Games

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          Abstract

          Stochastic differential games have been used extensively to model agents' competitions in Finance, for instance, in P2P lending platforms from the Fintech industry, the banking system for systemic risk, and insurance markets. The recently proposed machine learning algorithm, deep fictitious play, provides a novel efficient tool for finding Markovian Nash equilibrium of large \(N\)-player asymmetric stochastic differential games [J. Han and R. Hu, Mathematical and Scientific Machine Learning Conference, 2020]. By incorporating the idea of fictitious play, the algorithm decouples the game into \(N\) sub-optimization problems, and identifies each player's optimal strategy with the deep backward stochastic differential equation (BSDE) method parallelly and repeatedly. In this paper, under appropriate conditions, we prove the convergence of deep fictitious play (DFP) to the true Nash equilibrium. We can also show that the strategy based on DFP forms an \(\epsilon\)-Nash equilibrium. We generalize the algorithm by proposing a new approach to decouple the games, and present numerical results of large population games showing the empirical convergence of the algorithm beyond the technical assumptions in the theorems.

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          Author and article information

          Journal
          12 August 2020
          Article
          2008.05519
          0d3bd1e9-d8a8-48fc-98c1-f1555424dcaf

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          math.OC cs.GT cs.LG q-fin.MF

          Theoretical computer science,Numerical methods,Artificial intelligence,Quantitative finance

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