Papers
Communities
Events
Blog
Pricing
Search
Open menu
Home
Papers
2210.00750
Cited By
Offline Reinforcement Learning with Differentiable Function Approximation is Provably Efficient
3 October 2022
Ming Yin
Mengdi Wang
Yu Wang
OffRL
Re-assign community
ArXiv
PDF
HTML
Papers citing
"Offline Reinforcement Learning with Differentiable Function Approximation is Provably Efficient"
9 / 9 papers shown
Title
Leveraging Unlabeled Data Sharing through Kernel Function Approximation in Offline Reinforcement Learning
Yen-Ru Lai
Fu-Chieh Chang
Pei-Yuan Wu
OffRL
86
1
0
22 Aug 2024
Policy Finetuning in Reinforcement Learning via Design of Experiments using Offline Data
Ruiqi Zhang
Andrea Zanette
OffRL
OnRL
45
7
0
10 Jul 2023
Regularization and Variance-Weighted Regression Achieves Minimax Optimality in Linear MDPs: Theory and Practice
Toshinori Kitamura
Tadashi Kozuno
Yunhao Tang
Nino Vieillard
Michal Valko
...
Olivier Pietquin
M. Geist
Csaba Szepesvári
Wataru Kumagai
Yutaka Matsuo
OffRL
35
3
0
22 May 2023
VIPeR: Provably Efficient Algorithm for Offline RL with Neural Function Approximation
Thanh Nguyen-Tang
R. Arora
OffRL
58
5
0
24 Feb 2023
Improved Variance-Aware Confidence Sets for Linear Bandits and Linear Mixture MDP
Zihan Zhang
Jiaqi Yang
Xiangyang Ji
S. Du
71
38
0
29 Jan 2021
Offline Reinforcement Learning: Tutorial, Review, and Perspectives on Open Problems
Sergey Levine
Aviral Kumar
George Tucker
Justin Fu
OffRL
GP
358
1,974
0
04 May 2020
Reward-Free Exploration for Reinforcement Learning
Chi Jin
A. Krishnamurthy
Max Simchowitz
Tiancheng Yu
OffRL
118
194
0
07 Feb 2020
Optimism in Reinforcement Learning with Generalized Linear Function Approximation
Yining Wang
Ruosong Wang
S. Du
A. Krishnamurthy
137
135
0
09 Dec 2019
Double Reinforcement Learning for Efficient Off-Policy Evaluation in Markov Decision Processes
Nathan Kallus
Masatoshi Uehara
OffRL
52
183
0
22 Aug 2019
1