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On Online Learning in Kernelized Markov Decision Processes

On Online Learning in Kernelized Markov Decision Processes

4 November 2019
Sayak Ray Chowdhury
Aditya Gopalan
    OffRL
ArXiv (abs)PDFHTML

Papers citing "On Online Learning in Kernelized Markov Decision Processes"

35 / 35 papers shown
Title
Computationally and Sample Efficient Safe Reinforcement Learning Using Adaptive Conformal Prediction
Computationally and Sample Efficient Safe Reinforcement Learning Using Adaptive Conformal Prediction
Hao Zhou
Yanze Zhang
Wenhao Luo
133
2
0
22 Mar 2025
Local Linearity: the Key for No-regret Reinforcement Learning in
  Continuous MDPs
Local Linearity: the Key for No-regret Reinforcement Learning in Continuous MDPs
Davide Maran
Alberto Maria Metelli
Matteo Papini
Marcello Restelli
126
0
0
31 Oct 2024
Provably Adaptive Average Reward Reinforcement Learning for Metric Spaces
Provably Adaptive Average Reward Reinforcement Learning for Metric Spaces
Avik Kar
Rahul Singh
114
0
0
25 Oct 2024
Efficient Model-Based Reinforcement Learning Through Optimistic Thompson Sampling
Efficient Model-Based Reinforcement Learning Through Optimistic Thompson Sampling
Jasmine Bayrooti
Carl Henrik Ek
Amanda Prorok
273
0
0
07 Oct 2024
Causal Bayesian Optimization via Exogenous Distribution Learning
Causal Bayesian Optimization via Exogenous Distribution Learning
Shaogang Ren
Xiaoning Qian
226
2
0
03 Feb 2024
Improved Bayesian Regret Bounds for Thompson Sampling in Reinforcement
  Learning
Improved Bayesian Regret Bounds for Thompson Sampling in Reinforcement Learning
Ahmadreza Moradipari
M. Pedramfar
Modjtaba Shokrian Zini
Vaneet Aggarwal
144
6
0
30 Oct 2023
Efficient Exploration in Continuous-time Model-based Reinforcement
  Learning
Efficient Exploration in Continuous-time Model-based Reinforcement Learning
Lenart Treven
Jonas Hübotter
Bhavya Sukhija
Florian Dorfler
Andreas Krause
135
11
0
30 Oct 2023
Distributionally Robust Model-based Reinforcement Learning with Large
  State Spaces
Distributionally Robust Model-based Reinforcement Learning with Large State Spaces
Shyam Sundhar Ramesh
Pier Giuseppe Sessa
Yifan Hu
Andreas Krause
Ilija Bogunovic
OOD
128
17
0
05 Sep 2023
Safe Model-Based Multi-Agent Mean-Field Reinforcement Learning
Safe Model-Based Multi-Agent Mean-Field Reinforcement Learning
Matej Jusup
Barna Pásztor
Tadeusz Janik
Kecheng Zhang
Francesco Corman
Andreas Krause
Ilija Bogunovic
167
4
0
29 Jun 2023
Kernelized Reinforcement Learning with Order Optimal Regret Bounds
Kernelized Reinforcement Learning with Order Optimal Regret Bounds
Sattar Vakili
Julia Olkhovskaya
154
10
0
13 Jun 2023
STEERING: Stein Information Directed Exploration for Model-Based
  Reinforcement Learning
STEERING: Stein Information Directed Exploration for Model-Based Reinforcement Learning
Souradip Chakraborty
Amrit Singh Bedi
Alec Koppel
Mengdi Wang
Furong Huang
Dinesh Manocha
94
8
0
28 Jan 2023
Model-based Causal Bayesian Optimization
Model-based Causal Bayesian Optimization
Scott Sussex
A. Makarova
Andreas Krause
CML
121
28
0
18 Nov 2022
Movement Penalized Bayesian Optimization with Application to Wind Energy
  Systems
Movement Penalized Bayesian Optimization with Application to Wind Energy Systems
Shyam Sundhar Ramesh
Pier Giuseppe Sessa
Andreas Krause
Ilija Bogunovic
113
12
0
14 Oct 2022
Bilinear Exponential Family of MDPs: Frequentist Regret Bound with
  Tractable Exploration and Planning
Bilinear Exponential Family of MDPs: Frequentist Regret Bound with Tractable Exploration and Planning
Reda Ouhamma
D. Basu
Odalric-Ambrym Maillard
OffRL
115
12
0
05 Oct 2022
Conservative Dual Policy Optimization for Efficient Model-Based
  Reinforcement Learning
Conservative Dual Policy Optimization for Efficient Model-Based Reinforcement Learning
Shen Zhang
94
6
0
16 Sep 2022
Model Selection in Reinforcement Learning with General Function
  Approximations
Model Selection in Reinforcement Learning with General Function Approximations
Avishek Ghosh
Sayak Ray Chowdhury
74
3
0
06 Jul 2022
Posterior Coreset Construction with Kernelized Stein Discrepancy for
  Model-Based Reinforcement Learning
Posterior Coreset Construction with Kernelized Stein Discrepancy for Model-Based Reinforcement Learning
Souradip Chakraborty
Amrit Singh Bedi
Alec Koppel
Brian M. Sadler
Furong Huang
Erfaun Noorani
Tianyi Zhou
124
9
0
02 Jun 2022
Provably Efficient Kernelized Q-Learning
Provably Efficient Kernelized Q-Learning
Shuang Liu
H. Su
MLT
132
4
0
21 Apr 2022
Differentially Private Regret Minimization in Episodic Markov Decision
  Processes
Differentially Private Regret Minimization in Episodic Markov Decision Processes
Sayak Ray Chowdhury
Xingyu Zhou
118
23
0
20 Dec 2021
Representation Learning for Online and Offline RL in Low-rank MDPs
Representation Learning for Online and Offline RL in Low-rank MDPs
Masatoshi Uehara
Xuezhou Zhang
Wen Sun
OffRL
292
132
0
09 Oct 2021
Adaptive Control of Differentially Private Linear Quadratic Systems
Adaptive Control of Differentially Private Linear Quadratic Systems
Sayak Ray Chowdhury
Xingyu Zhou
Ness B. Shroff
91
10
0
26 Aug 2021
Model Selection for Generic Reinforcement Learning
Model Selection for Generic Reinforcement Learning
Avishek Ghosh
Sayak Ray Chowdhury
Kannan Ramchandran
102
1
0
13 Jul 2021
Efficient Model-Based Multi-Agent Mean-Field Reinforcement Learning
Efficient Model-Based Multi-Agent Mean-Field Reinforcement Learning
Barna Pásztor
Ilija Bogunovic
Andreas Krause
155
46
0
08 Jul 2021
Mitigating Covariate Shift in Imitation Learning via Offline Data
  Without Great Coverage
Mitigating Covariate Shift in Imitation Learning via Offline Data Without Great Coverage
Jonathan D. Chang
Masatoshi Uehara
Dhruv Sreenivas
Rahul Kidambi
Wen Sun
OffRL
177
36
0
06 Jun 2021
Learning Good State and Action Representations via Tensor Decomposition
Learning Good State and Action Representations via Tensor Decomposition
Chengzhuo Ni
Yaqi Duan
M. Dahleh
Anru R. Zhang
Mengdi Wang
133
7
0
03 May 2021
Combining Pessimism with Optimism for Robust and Efficient Model-Based
  Deep Reinforcement Learning
Combining Pessimism with Optimism for Robust and Efficient Model-Based Deep Reinforcement Learning
Sebastian Curi
Ilija Bogunovic
Andreas Krause
113
18
0
18 Mar 2021
Policy Optimization as Online Learning with Mediator Feedback
Policy Optimization as Online Learning with Mediator Feedback
Alberto Maria Metelli
Matteo Papini
P. DÓro
Marcello Restelli
OffRL
115
11
0
15 Dec 2020
Model-based Reinforcement Learning for Continuous Control with Posterior
  Sampling
Model-based Reinforcement Learning for Continuous Control with Posterior SamplingInternational Conference on Machine Learning (ICML), 2024
Ying Fan
Yifei Ming
169
19
0
20 Nov 2020
Value Function Approximations via Kernel Embeddings for No-Regret
  Reinforcement Learning
Value Function Approximations via Kernel Embeddings for No-Regret Reinforcement Learning
Sayak Ray Chowdhury
Rafael Oliveira
OffRL
148
5
0
16 Nov 2020
No-regret Algorithms for Multi-task Bayesian Optimization
No-regret Algorithms for Multi-task Bayesian OptimizationInternational Conference on Artificial Intelligence and Statistics (AISTATS), 2025
Sayak Ray Chowdhury
Aditya Gopalan
89
18
0
20 Aug 2020
Information Theoretic Regret Bounds for Online Nonlinear Control
Information Theoretic Regret Bounds for Online Nonlinear ControlNeural Information Processing Systems (NeurIPS), 2025
Sham Kakade
A. Krishnamurthy
Kendall Lowrey
Motoya Ohnishi
Wen Sun
135
121
0
22 Jun 2020
Efficient Model-Based Reinforcement Learning through Optimistic Policy
  Search and Planning
Efficient Model-Based Reinforcement Learning through Optimistic Policy Search and PlanningNeural Information Processing Systems (NeurIPS), 2025
Sebastian Curi
Felix Berkenkamp
Andreas Krause
237
90
0
15 Jun 2020
Kernel-Based Reinforcement Learning: A Finite-Time Analysis
Kernel-Based Reinforcement Learning: A Finite-Time Analysis
O. D. Domingues
Pierre Ménard
Matteo Pirotta
E. Kaufmann
Michal Valko
112
20
0
12 Apr 2020
Reinforcement Learning in Feature Space: Matrix Bandit, Kernels, and
  Regret Bound
Reinforcement Learning in Feature Space: Matrix Bandit, Kernels, and Regret Bound
Lin F. Yang
Mengdi Wang
OffRLGP
229
294
0
24 May 2019
Online Learning in Kernelized Markov Decision Processes
Online Learning in Kernelized Markov Decision Processes
Sayak Ray Chowdhury
Aditya Gopalan
OffRL
107
3
0
21 May 2018
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