Timezone: »
Poster
Worst-Case Regret Bounds for Exploration via Randomized Value Functions
Daniel Russo
Tue Dec 10 05:30 PM -- 07:30 PM (PST) @ East Exhibition Hall B + C #184
This paper studies a recent proposal to use randomized value functions to drive exploration in reinforcement learning. These randomized value functions are generated by injecting random noise into the training data, making the approach compatible with many popular methods for estimating parameterized value functions. By providing a worst-case regret bound for tabular finite-horizon Markov decision processes, we show that planning with respect to these randomized value functions can induce provably efficient exploration.
Author Information
Daniel Russo (Columbia University)
More from the Same Authors
-
2021 : On Adaptivity and Confounding in Contextual Bandit Experiments »
Chao Qin · Daniel Russo -
2021 : On Adaptivity and Confounding in Contextual Bandit Experiments »
Chao Qin · Daniel Russo -
2022 Poster: Temporally-Consistent Survival Analysis »
Lucas Maystre · Daniel Russo -
2021 : On Adaptivity and Confounding in Contextual Bandit Experiments »
Chao Qin · Daniel Russo -
2019 : Poster and Coffee Break 1 »
Aaron Sidford · Aditya Mahajan · Alejandro Ribeiro · Alex Lewandowski · Ali H Sayed · Ambuj Tewari · Angelika Steger · Anima Anandkumar · Asier Mujika · Hilbert J Kappen · Bolei Zhou · Byron Boots · Chelsea Finn · Chen-Yu Wei · Chi Jin · Ching-An Cheng · Christina Yu · Clement Gehring · Craig Boutilier · Dahua Lin · Daniel McNamee · Daniel Russo · David Brandfonbrener · Denny Zhou · Devesh Jha · Diego Romeres · Doina Precup · Dominik Thalmeier · Eduard Gorbunov · Elad Hazan · Elena Smirnova · Elvis Dohmatob · Emma Brunskill · Enrique Munoz de Cote · Ethan Waldie · Florian Meier · Florian Schaefer · Ge Liu · Gergely Neu · Haim Kaplan · Hao Sun · Hengshuai Yao · Jalaj Bhandari · James A Preiss · Jayakumar Subramanian · Jiajin Li · Jieping Ye · Jimmy Smith · Joan Bas Serrano · Joan Bruna · John Langford · Jonathan Lee · Jose A. Arjona-Medina · Kaiqing Zhang · Karan Singh · Yuping Luo · Zafarali Ahmed · Zaiwei Chen · Zhaoran Wang · Zhizhong Li · Zhuoran Yang · Ziping Xu · Ziyang Tang · Yi Mao · David Brandfonbrener · Shirli Di-Castro · Riashat Islam · Zuyue Fu · Abhishek Naik · Saurabh Kumar · Benjamin Petit · Angeliki Kamoutsi · Simone Totaro · Arvind Raghunathan · Rui Wu · Donghwan Lee · Dongsheng Ding · Alec Koppel · Hao Sun · Christian Tjandraatmadja · Mahdi Karami · Jincheng Mei · Chenjun Xiao · Junfeng Wen · Zichen Zhang · Ross Goroshin · Mohammad Pezeshki · Jiaqi Zhai · Philip Amortila · Shuo Huang · Mariya Vasileva · El houcine Bergou · Adel Ahmadyan · Haoran Sun · Sheng Zhang · Lukas Gruber · Yuanhao Wang · Tetiana Parshakova -
2017 Poster: Improving the Expected Improvement Algorithm »
Chao Qin · Diego Klabjan · Daniel Russo -
2014 Poster: Learning to Optimize via Information-Directed Sampling »
Daniel Russo · Benjamin Van Roy -
2013 Poster: (More) Efficient Reinforcement Learning via Posterior Sampling »
Ian Osband · Daniel Russo · Benjamin Van Roy -
2013 Poster: Eluder Dimension and the Sample Complexity of Optimistic Exploration »
Daniel Russo · Benjamin Van Roy -
2013 Oral: Eluder Dimension and the Sample Complexity of Optimistic Exploration »
Daniel Russo · Benjamin Van Roy