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Stochastic Bias-Reduced Gradient Methods

Stochastic Bias-Reduced Gradient Methods

17 June 2021
Hilal Asi
Y. Carmon
A. Jambulapati
Yujia Jin
Aaron Sidford
ArXivPDFHTML

Papers citing "Stochastic Bias-Reduced Gradient Methods"

20 / 20 papers shown
Title
Unbiased least squares regression via averaged stochastic gradient
  descent
Unbiased least squares regression via averaged stochastic gradient descent
Nabil Kahalé
20
0
0
26 Jun 2024
Closing the Computational-Query Depth Gap in Parallel Stochastic Convex
  Optimization
Closing the Computational-Query Depth Gap in Parallel Stochastic Convex Optimization
A. Jambulapati
Aaron Sidford
Kevin Tian
52
1
0
11 Jun 2024
Quantum Algorithms and Lower Bounds for Finite-Sum Optimization
Quantum Algorithms and Lower Bounds for Finite-Sum Optimization
Yexin Zhang
Chenyi Zhang
Cong Fang
Liwei Wang
Tongyang Li
42
2
0
05 Jun 2024
Private Stochastic Convex Optimization with Heavy Tails: Near-Optimality
  from Simple Reductions
Private Stochastic Convex Optimization with Heavy Tails: Near-Optimality from Simple Reductions
Hilal Asi
Daogao Liu
Kevin Tian
42
3
0
04 Jun 2024
When are Unbiased Monte Carlo Estimators More Preferable than Biased
  Ones?
When are Unbiased Monte Carlo Estimators More Preferable than Biased Ones?
Guanyang Wang
Jose Blanchet
Peter Glynn
22
1
0
01 Apr 2024
Mirror Descent Algorithms with Nearly Dimension-Independent Rates for
  Differentially-Private Stochastic Saddle-Point Problems
Mirror Descent Algorithms with Nearly Dimension-Independent Rates for Differentially-Private Stochastic Saddle-Point Problems
Tomás González
Cristóbal Guzmán
Courtney Paquette
34
3
0
05 Mar 2024
Extending the Reach of First-Order Algorithms for Nonconvex Min-Max
  Problems with Cohypomonotonicity
Extending the Reach of First-Order Algorithms for Nonconvex Min-Max Problems with Cohypomonotonicity
Ahmet Alacaoglu
Donghwan Kim
Stephen J. Wright
27
3
0
07 Feb 2024
Dynamic Byzantine-Robust Learning: Adapting to Switching Byzantine
  Workers
Dynamic Byzantine-Robust Learning: Adapting to Switching Byzantine Workers
Ron Dorfman
Naseem Yehya
Kfir Y. Levy
24
2
0
05 Feb 2024
Optimal Multi-Distribution Learning
Optimal Multi-Distribution Learning
Zihan Zhang
Wenhao Zhan
Yuxin Chen
Simon S. Du
Jason D. Lee
31
12
0
08 Dec 2023
A Whole New Ball Game: A Primal Accelerated Method for Matrix Games and
  Minimizing the Maximum of Smooth Functions
A Whole New Ball Game: A Primal Accelerated Method for Matrix Games and Minimizing the Maximum of Smooth Functions
Y. Carmon
A. Jambulapati
Yujia Jin
Aaron Sidford
23
4
0
17 Nov 2023
Contextual Stochastic Bilevel Optimization
Contextual Stochastic Bilevel Optimization
Yifan Hu
Jie Wang
Yao Xie
Andreas Krause
Daniel Kuhn
34
11
0
27 Oct 2023
ReSQueing Parallel and Private Stochastic Convex Optimization
ReSQueing Parallel and Private Stochastic Convex Optimization
Y. Carmon
A. Jambulapati
Yujia Jin
Y. Lee
Daogao Liu
Aaron Sidford
Kevin Tian
FedML
22
12
0
01 Jan 2023
Interpreting Bias in the Neural Networks: A Peek Into Representational
  Similarity
Interpreting Bias in the Neural Networks: A Peek Into Representational Similarity
Gnyanesh Bangaru
Lalith Bharadwaj Baru
Kiran Chakravarthula
19
0
0
14 Nov 2022
Near-Optimal Algorithms for Making the Gradient Small in Stochastic Minimax Optimization
Near-Optimal Algorithms for Making the Gradient Small in Stochastic Minimax Optimization
Le‐Yu Chen
Luo Luo
34
7
0
11 Aug 2022
RECAPP: Crafting a More Efficient Catalyst for Convex Optimization
RECAPP: Crafting a More Efficient Catalyst for Convex Optimization
Y. Carmon
A. Jambulapati
Yujia Jin
Aaron Sidford
50
11
0
17 Jun 2022
Bring Your Own Algorithm for Optimal Differentially Private Stochastic
  Minimax Optimization
Bring Your Own Algorithm for Optimal Differentially Private Stochastic Minimax Optimization
Liang Zhang
K. K. Thekumparampil
Sewoong Oh
Niao He
38
17
0
01 Jun 2022
Distributionally Robust Optimization via Ball Oracle Acceleration
Distributionally Robust Optimization via Ball Oracle Acceleration
Y. Carmon
Danielle Hausler
18
11
0
24 Mar 2022
Adapting to Mixing Time in Stochastic Optimization with Markovian Data
Adapting to Mixing Time in Stochastic Optimization with Markovian Data
Ron Dorfman
Kfir Y. Levy
37
28
0
09 Feb 2022
Unbiased Optimal Stopping via the MUSE
Unbiased Optimal Stopping via the MUSE
Zhengqing Zhou
Guanyang Wang
Jose H. Blanchet
Peter Glynn
19
6
0
04 Jun 2021
Global Riemannian Acceleration in Hyperbolic and Spherical Spaces
Global Riemannian Acceleration in Hyperbolic and Spherical Spaces
David Martínez-Rubio
32
19
0
07 Dec 2020
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