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On Constraints in First-Order Optimization: A View from Non-Smooth
  Dynamical Systems

On Constraints in First-Order Optimization: A View from Non-Smooth Dynamical Systems

17 July 2021
Michael Muehlebach
Michael I. Jordan
ArXivPDFHTML

Papers citing "On Constraints in First-Order Optimization: A View from Non-Smooth Dynamical Systems"

12 / 12 papers shown
Title
From exponential to finite/fixed-time stability: Applications to
  optimization
From exponential to finite/fixed-time stability: Applications to optimization
Ibrahim Kurban Özaslan
Mihailo R. Jovanović
39
2
0
18 Sep 2024
Primal Methods for Variational Inequality Problems with Functional Constraints
Primal Methods for Variational Inequality Problems with Functional Constraints
Liang Zhang
Niao He
Michael Muehlebach
39
2
0
19 Mar 2024
A safe exploration approach to constrained Markov decision processes
A safe exploration approach to constrained Markov decision processes
Tingting Ni
Maryam Kamgarpour
30
3
0
01 Dec 2023
A Variational Perspective on High-Resolution ODEs
A Variational Perspective on High-Resolution ODEs
Hoomaan Maskan
K. C. Zygalakis
A. Yurtsever
37
3
0
03 Nov 2023
Online Learning under Adversarial Nonlinear Constraints
Online Learning under Adversarial Nonlinear Constraints
Pavel Kolev
Georg Martius
Michael Muehlebach
24
7
0
06 Jun 2023
Orthogonal Directions Constrained Gradient Method: from non-linear
  equality constraints to Stiefel manifold
Orthogonal Directions Constrained Gradient Method: from non-linear equality constraints to Stiefel manifold
S. Schechtman
D. Tiapkin
Michael Muehlebach
Eric Moulines
27
6
0
16 Mar 2023
Accelerated First-Order Optimization under Nonlinear Constraints
Accelerated First-Order Optimization under Nonlinear Constraints
Michael Muehlebach
Michael I. Jordan
48
3
0
01 Feb 2023
AskewSGD : An Annealed interval-constrained Optimisation method to train
  Quantized Neural Networks
AskewSGD : An Annealed interval-constrained Optimisation method to train Quantized Neural Networks
Louis Leconte
S. Schechtman
Eric Moulines
29
4
0
07 Nov 2022
Geometric Methods for Sampling, Optimisation, Inference and Adaptive
  Agents
Geometric Methods for Sampling, Optimisation, Inference and Adaptive Agents
Alessandro Barp
Lancelot Da Costa
G. Francca
Karl J. Friston
Mark Girolami
Michael I. Jordan
G. Pavliotis
31
25
0
20 Mar 2022
Adversarial Robustness with Semi-Infinite Constrained Learning
Adversarial Robustness with Semi-Infinite Constrained Learning
Alexander Robey
Luiz F. O. Chamon
George J. Pappas
Hamed Hassani
Alejandro Ribeiro
AAML
OOD
118
42
0
29 Oct 2021
Optimization on manifolds: A symplectic approach
Optimization on manifolds: A symplectic approach
G. Francca
Alessandro Barp
Mark Girolami
Michael I. Jordan
19
11
0
23 Jul 2021
A Differential Equation for Modeling Nesterov's Accelerated Gradient
  Method: Theory and Insights
A Differential Equation for Modeling Nesterov's Accelerated Gradient Method: Theory and Insights
Weijie Su
Stephen P. Boyd
Emmanuel J. Candes
108
1,152
0
04 Mar 2015
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