Prediction-Enhanced Monte Carlo: A Machine Learning View on Control Variate
Fengpei Li, Haoxian Chen, Jiahe Lin, Arkin Gupta, Xiaowei Tan, Honglei Zhao, Gang Xu, Yuriy Nevmyvaka, Agostino Capponi, Henry Lam

TL;DR
Prediction-Enhanced Monte Carlo (PEMC) integrates machine learning predictors with Monte Carlo methods to achieve unbiased, low-variance, and computationally efficient estimates across diverse complex simulation tasks.
Contribution
PEMC introduces a novel framework that uses ML models as predictors within Monte Carlo, enabling variance reduction without bias and bypassing the need for closed-form mean functions.
Findings
PEMC reduces variance in derivative pricing models.
PEMC achieves unbiased estimates in hospital load simulations.
PEMC demonstrates broad applicability across finance and healthcare scenarios.
Abstract
For many complex simulation tasks spanning areas such as healthcare, engineering, and finance, Monte Carlo (MC) methods are invaluable due to their unbiased estimates and precise error quantification. Nevertheless, Monte Carlo simulations often become computationally prohibitive, especially for nested, multi-level, or path-dependent evaluations lacking effective variance reduction techniques. While machine learning (ML) surrogates appear as natural alternatives, naive replacements typically introduce unquantifiable biases. We address this challenge by introducing Prediction-Enhanced Monte Carlo (PEMC), a framework that leverages modern ML models as learned predictors, using cheap and parallelizable simulation as features, to output unbiased evaluation with reduced variance and runtime. PEMC can also be viewed as a "modernized" view of control variates, where we consider the overall…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods
MethodsFocus
