Reweighted Interacting Langevin Diffusions: an Accelerated Sampling
Methodfor Optimization
- URL: http://arxiv.org/abs/2301.12640v1
- Date: Mon, 30 Jan 2023 03:48:20 GMT
- Title: Reweighted Interacting Langevin Diffusions: an Accelerated Sampling
Methodfor Optimization
- Authors: Junlong Lyu, Zhitang Chen, Wenlong Lyu, Jianye Hao
- Abstract summary: We propose a new technique to accelerate sampling methods for solving difficult optimization problems.
Our method investigates the connection between posterior distribution sampling and optimization with Langevin dynamics.
- Score: 28.25662317591378
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We proposed a new technique to accelerate sampling methods for solving
difficult optimization problems. Our method investigates the intrinsic
connection between posterior distribution sampling and optimization with
Langevin dynamics, and then we propose an interacting particle scheme that
approximates a Reweighted Interacting Langevin Diffusion system (RILD). The
underlying system is designed by adding a multiplicative source term into the
classical Langevin operator, leading to a higher convergence rate and a more
concentrated invariant measure. We analyze the convergence rate of our
algorithm and the improvement compared to existing results in the asymptotic
situation. We also design various tests to verify our theoretical results,
showing the advantages of accelerating convergence and breaking through
barriers of suspicious local minimums, especially in high-dimensional
non-convex settings. Our algorithms and analysis shed some light on combining
gradient and genetic algorithms using Partial Differential Equations (PDEs)
with provable guarantees.
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