On a Stochastic Differential Equation with Correction Term Governed by a Monotone and Lipschitz Continuous Operator (2404.17986v1)
Abstract: In our pursuit of finding a zero for a monotone and Lipschitz continuous operator $M : \Rn \rightarrow \Rn$ amidst noisy evaluations, we explore an associated differential equation within a stochastic framework, incorporating a correction term. We present a result establishing the existence and uniqueness of solutions for the stochastic differential equations under examination. Additionally, assuming that the diffusion term is square-integrable, we demonstrate the almost sure convergence of the trajectory process $X(t)$ to a zero of $M$ and of $|M(X(t))|$ to $0$ as $t \rightarrow +\infty$. Furthermore, we provide ergodic upper bounds and ergodic convergence rates in expectation for $|M(X(t))|2$ and $\langle M(X(t), X(t)-x*\rangle$, where $x*$ is an arbitrary zero of the monotone operator. Subsequently, we apply these findings to a minimax problem. Finally, we analyze two temporal discretizations of the continuous-time models, resulting in stochastic variants of the Optimistic Gradient Descent Ascent and Extragradient methods, respectively, and assess their convergence properties.
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