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Policy Gradient Optimal Correlation Search for Variance Reduction in Monte Carlo simulation and Maximum Optimal Transport

24 July 2023
Pierre Bras
Gilles Pagès
ArXiv (abs)PDFHTML
Abstract

We propose a new algorithm for variance reduction when estimating f(XT)f(X_T)f(XT​) where XXX is the solution to some stochastic differential equation and fff is a test function. The new estimator is (f(XT1)+f(XT2))/2(f(X^1_T) + f(X^2_T))/2(f(XT1​)+f(XT2​))/2, where X1X^1X1 and X2X^2X2 have same marginal law as XXX but are pathwise correlated so that to reduce the variance. The optimal correlation function ρ\rhoρ is approximated by a deep neural network and is calibrated along the trajectories of (X1,X2)(X^1, X^2)(X1,X2) by policy gradient and reinforcement learning techniques. Finding an optimal coupling given marginal laws has links with maximum optimal transport.

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