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A Unified Analysis of Stochastic Optimization Methods Using Jump System
  Theory and Quadratic Constraints

A Unified Analysis of Stochastic Optimization Methods Using Jump System Theory and Quadratic Constraints

25 June 2017
Bin Hu
Peter M. Seiler
Anders Rantzer
ArXivPDFHTML

Papers citing "A Unified Analysis of Stochastic Optimization Methods Using Jump System Theory and Quadratic Constraints"

9 / 9 papers shown
Title
Tradeoffs between convergence rate and noise amplification for
  momentum-based accelerated optimization algorithms
Tradeoffs between convergence rate and noise amplification for momentum-based accelerated optimization algorithms
Hesameddin Mohammadi
Meisam Razaviyayn
Mihailo R. Jovanović
31
7
0
24 Sep 2022
Exact Formulas for Finite-Time Estimation Errors of Decentralized
  Temporal Difference Learning with Linear Function Approximation
Exact Formulas for Finite-Time Estimation Errors of Decentralized Temporal Difference Learning with Linear Function Approximation
Xing-ming Guo
Bin Hu
11
2
0
20 Apr 2022
Convex Programs and Lyapunov Functions for Reinforcement Learning: A
  Unified Perspective on the Analysis of Value-Based Methods
Convex Programs and Lyapunov Functions for Reinforcement Learning: A Unified Perspective on the Analysis of Value-Based Methods
Xing-ming Guo
Bin Hu
OffRL
19
3
0
14 Feb 2022
Global Convergence Using Policy Gradient Methods for Model-free
  Markovian Jump Linear Quadratic Control
Global Convergence Using Policy Gradient Methods for Model-free Markovian Jump Linear Quadratic Control
Santanu Rathod
Manoj Bhadu
A. De
19
8
0
30 Nov 2021
Self-Healing First-Order Distributed Optimization
Self-Healing First-Order Distributed Optimization
Israel L. Donato Ridgley
R. Freeman
K. Lynch
13
4
0
05 Apr 2021
Convergence Guarantees of Policy Optimization Methods for Markovian Jump
  Linear Systems
Convergence Guarantees of Policy Optimization Methods for Markovian Jump Linear Systems
Joao Paulo Jansch-Porto
Bin Hu
Geir Dullerud
25
35
0
10 Feb 2020
A Unifying Framework for Variance Reduction Algorithms for Finding
  Zeroes of Monotone Operators
A Unifying Framework for Variance Reduction Algorithms for Finding Zeroes of Monotone Operators
Xun Zhang
W. Haskell
Z. Ye
17
3
0
22 Jun 2019
Analysis of Biased Stochastic Gradient Descent Using Sequential
  Semidefinite Programs
Analysis of Biased Stochastic Gradient Descent Using Sequential Semidefinite Programs
Bin Hu
Peter M. Seiler
Laurent Lessard
16
39
0
03 Nov 2017
Linear Convergence of Gradient and Proximal-Gradient Methods Under the
  Polyak-Łojasiewicz Condition
Linear Convergence of Gradient and Proximal-Gradient Methods Under the Polyak-Łojasiewicz Condition
Hamed Karimi
J. Nutini
Mark W. Schmidt
139
1,201
0
16 Aug 2016
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