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Simulated annealing from continuum to discretization: a convergence
  analysis via the Eyring--Kramers law
v1v2 (latest)

Simulated annealing from continuum to discretization: a convergence analysis via the Eyring--Kramers law

3 February 2021
Wenpin Tang
X. Zhou
ArXiv (abs)PDFHTML

Papers citing "Simulated annealing from continuum to discretization: a convergence analysis via the Eyring--Kramers law"

6 / 6 papers shown
Continuous Policy and Value Iteration for Stochastic Control Problems and Its Convergence
Qi Feng
Gu Wang
148
1
0
09 Jun 2025
Variational Learning of Gaussian Process Latent Variable Models through Stochastic Gradient Annealed Importance Sampling
Variational Learning of Gaussian Process Latent Variable Models through Stochastic Gradient Annealed Importance SamplingConference on Uncertainty in Artificial Intelligence (UAI), 2024
Jian Xu
Shian Du
Junmei Yang
Qianli Ma
Delu Zeng
John Paisley
BDL
602
3
0
13 Aug 2024
Fisher information dissipation for time inhomogeneous stochastic
  differential equations
Fisher information dissipation for time inhomogeneous stochastic differential equations
Qi Feng
Xinzhe Zuo
Wuchen Li
205
4
0
01 Feb 2024
Two-Scale Gradient Descent Ascent Dynamics Finds Mixed Nash Equilibria
  of Continuous Games: A Mean-Field Perspective
Two-Scale Gradient Descent Ascent Dynamics Finds Mixed Nash Equilibria of Continuous Games: A Mean-Field PerspectiveInternational Conference on Machine Learning (ICML), 2022
Yulong Lu
MLTAI4CE
260
30
0
17 Dec 2022
Score-Based Diffusion meets Annealed Importance Sampling
Score-Based Diffusion meets Annealed Importance SamplingNeural Information Processing Systems (NeurIPS), 2022
Arnaud Doucet
Will Grathwohl
A. G. Matthews
Heiko Strathmann
DiffM
430
57
0
16 Aug 2022
Escaping Saddle Points Efficiently with Occupation-Time-Adapted
  Perturbations
Escaping Saddle Points Efficiently with Occupation-Time-Adapted Perturbations
Xin Guo
Jiequn Han
Mahan Tajrobehkar
Wenpin Tang
300
5
0
09 May 2020
1
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