Multi-fidelity Monte Carlo: a pseudo-marginal approach
–Neural Information Processing Systems
Markov chain Monte Carlo (MCMC) is an established approach for uncertainty quantification and propagation in scientific applications. A key challenge in applying MCMC to scientific domains is computation: the target density of interest is often a function of expensive computations, such as a high-fidelity physical simulation, an intractable integral, or a slowly-converging iterative algorithm. Thus, using an MCMC algorithms with an expensive target density becomes impractical, as these expensive computations need to be evaluated at each iteration of the algorithm.
Neural Information Processing Systems
Dec-24-2025, 17:11:26 GMT
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