From 9562b4167922a59450b2fc811673fa011efd8a77 Mon Sep 17 00:00:00 2001 From: KaiZTeh <142034896+KaiZTeh@users.noreply.github.com> Date: Tue, 17 Oct 2023 12:05:33 +0100 Subject: [PATCH] Update 2023-10-20-Dellaportas.md --- _dm_csml_seminars/2023-10-20-Dellaportas.md | 6 +++--- 1 file changed, 3 insertions(+), 3 deletions(-) diff --git a/_dm_csml_seminars/2023-10-20-Dellaportas.md b/_dm_csml_seminars/2023-10-20-Dellaportas.md index deeb444..d6361ba 100644 --- a/_dm_csml_seminars/2023-10-20-Dellaportas.md +++ b/_dm_csml_seminars/2023-10-20-Dellaportas.md @@ -8,7 +8,7 @@ join_link: https://ucl.zoom.us/j/97245943682 location: Function Space, UCL Centre for Artificial Intelligence, 1st Floor, 90 High Holborn, London WC1V 6BH speaker: Petros Dellaportas affiliation: University College London -title: "" -summary: "" -bio: "" +title: "Can independent Metropolis samplers beat Monte Carlo" +summary: "Assume that we would like to estimate the expected value of a function $f$ with respect to a density $\pi$ by using an importance density function $q$. We prove that if $\pi$ and $q$ are close enough under KL divergence, an independent Metropolis sampler estimator that obtains samplers from $\pi$ with proposal density $q$, enriched with a variance reduction computational strategy based on control variates, achieves smaller asymptotic variance than the one from crude Monte Carlo. We illustrate our results in challenging option pricing problems that require Monte Carlo estimation. Furthermore, we propose an automatic sampling methodology based on adaptive independent Metropolis and we demonstrate its applicability in option pricing and Bayesian inference problems." +bio: "Petros is a professor at UCL and Athens University of Economics and Business." ---