Efficiency of the Girsanov Transformation Approach for Parametric Sensitivity Analysis of Stochastic Chemical Kinetics
Abstract: The most common Monte Carlo methods for sensitivity analysis of stochastic reaction networks are the finite difference (FD), Girsanov transformation (GT), and regularized pathwise derivative (RPD) methods. It has been numerically observed in the literature that the biased FD and RPD methods tend to have lower variance than the unbiased GT method and that centering the GT method (CGT) reduces its variance. We provide a theoretical justification for these observations in terms of system size asymptotic analysis under what is known as the classical scaling. Our analysis applies to GT, CGT, and FD and shows that the standard deviations of their estimators when normalized by the actual sensitivity scale as , and , respectively, as system size . In the case of the FD methods, the asymptotics are obtained keeping the finite difference perturbation fixed. Our numerical examples verify that our order estimates are sharp and that the variance of the …
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