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1603.04245
Cited By
A Variational Perspective on Accelerated Methods in Optimization
14 March 2016
Andre Wibisono
Ashia Wilson
Michael I. Jordan
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Papers citing
"A Variational Perspective on Accelerated Methods in Optimization"
50 / 66 papers shown
Title
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A General Continuous-Time Formulation of Stochastic ADMM and Its Variants
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Leveraging Continuous Time to Understand Momentum When Training Diagonal Linear Networks
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GAD-PVI: A General Accelerated Dynamic-Weight Particle-Based Variational Inference Framework
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Huminhao Zhu
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Han Zhao
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Quantum Langevin Dynamics for Optimization
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Yuchen Lu
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Accelerating optimization over the space of probability measures
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Wenxuan Wu
Yuhang Yao
Stephen J. Wright
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Towards Predicting Equilibrium Distributions for Molecular Systems with Deep Learning
Shuxin Zheng
Jiyan He
Chang-Shu Liu
Yu Shi
Ziheng Lu
...
Peiran Jin
Chi Chen
Frank Noé
Haiguang Liu
Tie-Yan Liu
AI4CE
43
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08 Jun 2023
On Underdamped Nesterov's Acceleration
Shu Chen
Bin Shi
Ya-xiang Yuan
40
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28 Apr 2023
Beyond first-order methods for non-convex non-concave min-max optimization
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Brian Bullins
36
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17 Apr 2023
Sublinear Convergence Rates of Extragradient-Type Methods: A Survey on Classical and Recent Developments
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40
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30 Mar 2023
Quantum Hamiltonian Descent
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Ethan Hickman
Joseph Li
Xiaodi Wu
31
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02 Mar 2023
Accelerated First-Order Optimization under Nonlinear Constraints
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55
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01 Feb 2023
Generalized Gradient Flows with Provable Fixed-Time Convergence and Fast Evasion of Non-Degenerate Saddle Points
Mayank Baranwal
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V. Raj
A. Hota
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07 Dec 2022
Accelerated Riemannian Optimization: Handling Constraints with a Prox to Bound Geometric Penalties
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Sebastian Pokutta
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Towards Understanding GD with Hard and Conjugate Pseudo-labels for Test-Time Adaptation
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On Quantum Speedups for Nonconvex Optimization via Quantum Tunneling Walks
Yizhou Liu
Weijie J. Su
Tongyang Li
41
18
0
29 Sep 2022
Gradient Norm Minimization of Nesterov Acceleration:
o
(
1
/
k
3
)
o(1/k^3)
o
(
1/
k
3
)
Shu Chen
Bin Shi
Ya-xiang Yuan
44
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19 Sep 2022
Conformal Mirror Descent with Logarithmic Divergences
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Ting-Kam Leonard Wong
Frank Rudzicz
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Multilevel Geometric Optimization for Regularised Constrained Linear Inverse Problems
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Stefania Petra
Matthias Zisler
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Alternating Mirror Descent for Constrained Min-Max Games
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Molei Tao
Georgios Piliouras
39
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Perseus: A Simple and Optimal High-Order Method for Variational Inequalities
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Michael I. Jordan
35
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Geometric Methods for Sampling, Optimisation, Inference and Adaptive Agents
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Lancelot Da Costa
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Michael I. Jordan
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38
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20 Mar 2022
A More Stable Accelerated Gradient Method Inspired by Continuous-Time Perspective
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Breaking the Convergence Barrier: Optimization via Fixed-Time Convergent Flows
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No-Regret Dynamics in the Fenchel Game: A Unified Framework for Algorithmic Convex Optimization
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Jacob D. Abernethy
Kfir Y. Levy
32
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A Deterministic Sampling Method via Maximum Mean Discrepancy Flow with Adaptive Kernel
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Yiwei Wang
Lulu Kang
Chun Liu
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21 Nov 2021
Convergence and Stability of the Stochastic Proximal Point Algorithm with Momentum
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Panos Toulis
Anastasios Kyrillidis
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On Constraints in First-Order Optimization: A View from Non-Smooth Dynamical Systems
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Michael I. Jordan
42
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17 Jul 2021
The Confluence of Networks, Games and Learning
Tao Li
Guanze Peng
Quanyan Zhu
Tamer Basar
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17 May 2021
Revisiting the Role of Euler Numerical Integration on Acceleration and Stability in Convex Optimization
Peiyuan Zhang
Antonio Orvieto
Hadi Daneshmand
Thomas Hofmann
Roy S. Smith
32
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23 Feb 2021
Potential Function-based Framework for Making the Gradients Small in Convex and Min-Max Optimization
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Puqian Wang
33
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First-Order Methods for Convex Optimization
Pavel Dvurechensky
Mathias Staudigl
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Penalized Langevin dynamics with vanishing penalty for smooth and log-concave targets
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24 Jun 2020
A Dynamical Systems Approach for Convergence of the Bayesian EM Algorithm
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Subhro Das
Pin-Yu Chen
S. Pequito
14
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Accelerated Learning with Robustness to Adversarial Regressors
Joseph E. Gaudio
Anuradha M. Annaswamy
J. Moreu
M. Bolender
T. Gibson
64
20
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04 May 2020
On Learning Rates and Schrödinger Operators
Bin Shi
Weijie J. Su
Michael I. Jordan
34
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15 Apr 2020
On dissipative symplectic integration with applications to gradient-based optimization
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Michael I. Jordan
René Vidal
19
47
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Optimal anytime regret with two experts
Nicholas J. A. Harvey
Christopher Liaw
E. Perkins
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19
16
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Augmented Normalizing Flows: Bridging the Gap Between Generative Flows and Latent Variable Models
Chin-Wei Huang
Laurent Dinh
Aaron Courville
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17 Feb 2020
From Nesterov's Estimate Sequence to Riemannian Acceleration
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S. Sra
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Demon: Improved Neural Network Training with Momentum Decay
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Cameron R. Wolfe
Zhaoqi Li
Anastasios Kyrillidis
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11 Oct 2019
Accelerated Information Gradient flow
Yifei Wang
Wuchen Li
25
56
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Conjugate Gradients and Accelerated Methods Unified: The Approximate Duality Gap View
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L. Orecchia
31
1
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Continuous Time Analysis of Momentum Methods
Nikola B. Kovachki
Andrew M. Stuart
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Theoretical guarantees for sampling and inference in generative models with latent diffusions
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Maxim Raginsky
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Accelerated Flow for Probability Distributions
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47
31
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Stochastic Modified Equations and Dynamics of Stochastic Gradient Algorithms I: Mathematical Foundations
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Cheng Tai
E. Weinan
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149
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Understanding the Acceleration Phenomenon via High-Resolution Differential Equations
Bin Shi
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Weijie J. Su
17
254
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