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Generalization bound of globally optimal non-convex neural network
  training: Transportation map estimation by infinite dimensional Langevin
  dynamics

Generalization bound of globally optimal non-convex neural network training: Transportation map estimation by infinite dimensional Langevin dynamics

11 July 2020
Taiji Suzuki
ArXivPDFHTML

Papers citing "Generalization bound of globally optimal non-convex neural network training: Transportation map estimation by infinite dimensional Langevin dynamics"

8 / 8 papers shown
Title
Stochastic Optimal Control for Diffusion Bridges in Function Spaces
Stochastic Optimal Control for Diffusion Bridges in Function Spaces
Byoungwoo Park
Jungwon Choi
Sungbin Lim
Juho Lee
50
3
0
31 May 2024
Uniform Generalization Bound on Time and Inverse Temperature for
  Gradient Descent Algorithm and its Application to Analysis of Simulated
  Annealing
Uniform Generalization Bound on Time and Inverse Temperature for Gradient Descent Algorithm and its Application to Analysis of Simulated Annealing
Keisuke Suzuki
AI4CE
30
0
0
25 May 2022
Weak Convergence of Approximate reflection coupling and its Application
  to Non-convex Optimization
Weak Convergence of Approximate reflection coupling and its Application to Non-convex Optimization
Keisuke Suzuki
25
5
0
24 May 2022
Fully-Connected Network on Noncompact Symmetric Space and Ridgelet
  Transform based on Helgason-Fourier Analysis
Fully-Connected Network on Noncompact Symmetric Space and Ridgelet Transform based on Helgason-Fourier Analysis
Sho Sonoda
Isao Ishikawa
Masahiro Ikeda
21
15
0
03 Mar 2022
User-friendly introduction to PAC-Bayes bounds
User-friendly introduction to PAC-Bayes bounds
Pierre Alquier
FedML
60
196
0
21 Oct 2021
Deep Networks and the Multiple Manifold Problem
Deep Networks and the Multiple Manifold Problem
Sam Buchanan
D. Gilboa
John N. Wright
166
39
0
25 Aug 2020
Trainability and Accuracy of Neural Networks: An Interacting Particle
  System Approach
Trainability and Accuracy of Neural Networks: An Interacting Particle System Approach
Grant M. Rotskoff
Eric Vanden-Eijnden
59
118
0
02 May 2018
Norm-Based Capacity Control in Neural Networks
Norm-Based Capacity Control in Neural Networks
Behnam Neyshabur
Ryota Tomioka
Nathan Srebro
119
577
0
27 Feb 2015
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