Beijing Institute of Mathematical Sciences and Applications Beijing Institute of Mathematical Sciences and Applications

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About
President
Governance
Partner Institutions
Visit
People
Management
Faculty
Postdocs
Visiting Scholars
Staff
Research
Research Groups
Courses
Seminars
Join Us
Faculty
Postdocs
Students
Events
Conferences
Workshops
Forum
Life @ BIMSA
Accommodation
Transportation
Facilities
Tour
News
News
Announcement
Downloads
Qiuzhen College, Tsinghua University
Yau Mathematical Sciences Center, Tsinghua University (YMSC)
Tsinghua Sanya International  Mathematics Forum (TSIMF)
Shanghai Institute for Mathematics and  Interdisciplinary Sciences (SIMIS)
BIMSA > Tsinghua-BIMSA Computational & Applied Mathematics (CAM) Seminar Design of gradient flows for sampling probability distributions
Design of gradient flows for sampling probability distributions
Organizer
Computational & Applied Mathematics Group
Speaker
Yifan Chen
Time
Monday, November 20, 2023 9:00 AM - 11:00 AM
Venue
Online
Online
Tencent 191 817 237 ()
Abstract
Sampling a target distribution with an unknown normalization constant is a fundamental problem in computational science and engineering. Often, dynamical systems of probability densities are constructed to address this task, including MCMC and sequential Monte Carlo. Recently, gradient flows in the space of probability measures have been increasingly popular to generate this dynamical system. In this talk, we will discuss several rudimentary questions of this general methodology for sampling probability distributions. Any instantiation of a gradient flow for sampling needs an energy functional and a metric to determine the flow, as well as numerical approximations of the flow to derive algorithms. We first show how KL divergence is a special and unique energy functional that can facilitate the ease of numerical implementation of the flow. We then explain how the Fisher-Rao metric is an exceptional choice that leads to superior fast convergence of the flow. Finally, we discuss numerical approximations based on interacting particles, Gaussians, and mixtures to derive implementable algorithms for sampling.
Beijing Institute of Mathematical Sciences and Applications
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