Timezone: »
TD-learning is a foundation reinforcement learning (RL) algorithm for value prediction. Critical to the accuracy of value predictions is the quality of state representations. In this work, we consider the question: how does end-to-end TD-learning impact the representation over time? Complementary to prior work, we provide a set of analysis that sheds further light on the representation dynamics under TD-learning. We first show that when the environments are reversible, end-to-end TD-learning strictly decreases the value approximation error over time. Under further assumptions on the environments, we can connect the representation dynamics with spectral decomposition over the transition matrix. This latter finding establishes fitting multiple value functions from randomly generated rewards as a useful auxiliary task for representation learning, as we empirically validate on both tabular and Atari game suites.
Author Information
Yunhao Tang (Google DeepMind)
Remi Munos (DeepMind)
More from the Same Authors
-
2021 : Marginalized Operators for Off-Policy Reinforcement Learning »
Yunhao Tang · Mark Rowland · Remi Munos · Michal Valko -
2023 Poster: Understanding Self-Predictive Learning for Reinforcement Learning »
Yunhao Tang · Zhaohan Guo · Pierre Richemond · Bernardo Avila Pires · Yash Chandak · Remi Munos · Mark Rowland · Mohammad Gheshlaghi Azar · Charline Le Lan · Clare Lyle · Andras Gyorgy · Shantanu Thakoor · Will Dabney · Bilal Piot · Daniele Calandriello · Michal Valko -
2023 Poster: Curiosity in Hindsight: Intrinsic Exploration in Stochastic Environments »
Daniel Jarrett · Corentin Tallec · Florent Altché · Thomas Mesnard · Remi Munos · Michal Valko -
2023 Poster: Representations and Exploration for Deep Reinforcement Learning using Singular Value Decomposition »
Yash Chandak · Shantanu Thakoor · Zhaohan Guo · Yunhao Tang · Remi Munos · Will Dabney · Diana Borsa -
2023 Oral: Adapting to game trees in zero-sum imperfect information games »
Côme Fiegel · Pierre Menard · Tadashi Kozuno · Remi Munos · Vianney Perchet · Michal Valko -
2023 Poster: Adapting to game trees in zero-sum imperfect information games »
Côme Fiegel · Pierre Menard · Tadashi Kozuno · Remi Munos · Vianney Perchet · Michal Valko -
2023 Poster: Fast Rates for Maximum Entropy Exploration »
Daniil Tiapkin · Denis Belomestny · Daniele Calandriello · Eric Moulines · Remi Munos · Alexey Naumov · Pierre Perrault · Yunhao Tang · Michal Valko · Pierre Menard -
2023 Oral: Quantile Credit Assignment »
Thomas Mesnard · Wenqi Chen · Alaa Saade · Yunhao Tang · Mark Rowland · Theophane Weber · Clare Lyle · Audrunas Gruslys · Michal Valko · Will Dabney · Georg Ostrovski · Eric Moulines · Remi Munos -
2023 Poster: The Statistical Benefits of Quantile Temporal-Difference Learning for Value Estimation »
Mark Rowland · Yunhao Tang · Clare Lyle · Remi Munos · Marc Bellemare · Will Dabney -
2023 Poster: Quantile Credit Assignment »
Thomas Mesnard · Wenqi Chen · Alaa Saade · Yunhao Tang · Mark Rowland · Theophane Weber · Clare Lyle · Audrunas Gruslys · Michal Valko · Will Dabney · Georg Ostrovski · Eric Moulines · Remi Munos -
2023 Poster: DoMo-AC: Doubly Multi-step Off-policy Actor-Critic Algorithm »
Yunhao Tang · Tadashi Kozuno · Mark Rowland · Anna Harutyunyan · Remi Munos · Bernardo Avila Pires · Michal Valko -
2023 Poster: The Edge of Orthogonality: A Simple View of What Makes BYOL Tick »
Pierre Richemond · Allison Tam · Yunhao Tang · Florian Strub · Bilal Piot · Feilx Hill -
2023 Poster: VA-learning as a more efficient alternative to Q-learning »
Yunhao Tang · Remi Munos · Mark Rowland · Michal Valko -
2023 Poster: Regularization and Variance-Weighted Regression Achieves Minimax Optimality in Linear MDPs: Theory and Practice »
Toshinori Kitamura · Tadashi Kozuno · Yunhao Tang · Nino Vieillard · Michal Valko · Wenhao Yang · Jincheng Mei · Pierre Menard · Mohammad Gheshlaghi Azar · Remi Munos · Olivier Pietquin · Matthieu Geist · Csaba Szepesvari · Wataru Kumagai · Yutaka Matsuo -
2022 Poster: From Dirichlet to Rubin: Optimistic Exploration in RL without Bonuses »
Daniil Tiapkin · Denis Belomestny · Eric Moulines · Alexey Naumov · Sergey Samsonov · Yunhao Tang · Michal Valko · Pierre Menard -
2022 Poster: Generalised Policy Improvement with Geometric Policy Composition »
Shantanu Thakoor · Mark Rowland · Diana Borsa · Will Dabney · Remi Munos · Andre Barreto -
2022 Oral: From Dirichlet to Rubin: Optimistic Exploration in RL without Bonuses »
Daniil Tiapkin · Denis Belomestny · Eric Moulines · Alexey Naumov · Sergey Samsonov · Yunhao Tang · Michal Valko · Pierre Menard -
2022 Oral: Generalised Policy Improvement with Geometric Policy Composition »
Shantanu Thakoor · Mark Rowland · Diana Borsa · Will Dabney · Remi Munos · Andre Barreto -
2022 Poster: Biased Gradient Estimate with Drastic Variance Reduction for Meta Reinforcement Learning »
Yunhao Tang -
2022 Spotlight: Biased Gradient Estimate with Drastic Variance Reduction for Meta Reinforcement Learning »
Yunhao Tang -
2021 Poster: Revisiting Peng's Q($\lambda$) for Modern Reinforcement Learning »
Tadashi Kozuno · Yunhao Tang · Mark Rowland · Remi Munos · Steven Kapturowski · Will Dabney · Michal Valko · David Abel -
2021 Poster: Taylor Expansion of Discount Factors »
Yunhao Tang · Mark Rowland · Remi Munos · Michal Valko -
2021 Spotlight: Taylor Expansion of Discount Factors »
Yunhao Tang · Mark Rowland · Remi Munos · Michal Valko -
2021 Spotlight: Revisiting Peng's Q($\lambda$) for Modern Reinforcement Learning »
Tadashi Kozuno · Yunhao Tang · Mark Rowland · Remi Munos · Steven Kapturowski · Will Dabney · Michal Valko · David Abel -
2020 Poster: Monte-Carlo Tree Search as Regularized Policy Optimization »
Jean-Bastien Grill · Florent Altché · Yunhao Tang · Thomas Hubert · Michal Valko · Ioannis Antonoglou · Remi Munos -
2020 Poster: Learning to Score Behaviors for Guided Policy Optimization »
Aldo Pacchiano · Jack Parker-Holder · Yunhao Tang · Krzysztof Choromanski · Anna Choromanska · Michael Jordan -
2020 Poster: Reinforcement Learning for Integer Programming: Learning to Cut »
Yunhao Tang · Shipra Agrawal · Yuri Faenza -
2020 Poster: Taylor Expansion Policy Optimization »
Yunhao Tang · Michal Valko · Remi Munos -
2019 : poster session I »
Nicholas Rhinehart · Yunhao Tang · Vinay Prabhu · Dian Ang Yap · Alexander Wang · Marc Finzi · Manoj Kumar · You Lu · Abhishek Kumar · Qi Lei · Michael Przystupa · Nicola De Cao · Polina Kirichenko · Pavel Izmailov · Andrew Wilson · Jakob Kruse · Diego Mesquita · Mario Lezcano Casado · Thomas Müller · Keir Simmons · Andrei Atanov -
2019 Poster: Statistics and Samples in Distributional Reinforcement Learning »
Mark Rowland · Robert Dadashi · Saurabh Kumar · Remi Munos · Marc Bellemare · Will Dabney -
2019 Oral: Statistics and Samples in Distributional Reinforcement Learning »
Mark Rowland · Robert Dadashi · Saurabh Kumar · Remi Munos · Marc Bellemare · Will Dabney -
2018 Poster: The Uncertainty Bellman Equation and Exploration »
Brendan O'Donoghue · Ian Osband · Remi Munos · Vlad Mnih -
2018 Poster: IMPALA: Scalable Distributed Deep-RL with Importance Weighted Actor-Learner Architectures »
Lasse Espeholt · Hubert Soyer · Remi Munos · Karen Simonyan · Vlad Mnih · Tom Ward · Yotam Doron · Vlad Firoiu · Tim Harley · Iain Dunning · Shane Legg · Koray Kavukcuoglu -
2018 Poster: Autoregressive Quantile Networks for Generative Modeling »
Georg Ostrovski · Will Dabney · Remi Munos -
2018 Oral: The Uncertainty Bellman Equation and Exploration »
Brendan O'Donoghue · Ian Osband · Remi Munos · Vlad Mnih -
2018 Oral: Autoregressive Quantile Networks for Generative Modeling »
Georg Ostrovski · Will Dabney · Remi Munos -
2018 Oral: IMPALA: Scalable Distributed Deep-RL with Importance Weighted Actor-Learner Architectures »
Lasse Espeholt · Hubert Soyer · Remi Munos · Karen Simonyan · Vlad Mnih · Tom Ward · Yotam Doron · Vlad Firoiu · Tim Harley · Iain Dunning · Shane Legg · Koray Kavukcuoglu -
2018 Poster: Transfer in Deep Reinforcement Learning Using Successor Features and Generalised Policy Improvement »
Andre Barreto · Diana Borsa · John Quan · Tom Schaul · David Silver · Matteo Hessel · Daniel J. Mankowitz · Augustin Zidek · Remi Munos -
2018 Poster: Learning to search with MCTSnets »
Arthur Guez · Theophane Weber · Ioannis Antonoglou · Karen Simonyan · Oriol Vinyals · Daan Wierstra · Remi Munos · David Silver -
2018 Poster: Implicit Quantile Networks for Distributional Reinforcement Learning »
Will Dabney · Georg Ostrovski · David Silver · Remi Munos -
2018 Oral: Transfer in Deep Reinforcement Learning Using Successor Features and Generalised Policy Improvement »
Andre Barreto · Diana Borsa · John Quan · Tom Schaul · David Silver · Matteo Hessel · Daniel J. Mankowitz · Augustin Zidek · Remi Munos -
2018 Oral: Implicit Quantile Networks for Distributional Reinforcement Learning »
Will Dabney · Georg Ostrovski · David Silver · Remi Munos -
2018 Oral: Learning to search with MCTSnets »
Arthur Guez · Theophane Weber · Ioannis Antonoglou · Karen Simonyan · Oriol Vinyals · Daan Wierstra · Remi Munos · David Silver -
2017 Poster: Count-Based Exploration with Neural Density Models »
Georg Ostrovski · Marc Bellemare · Aäron van den Oord · Remi Munos -
2017 Talk: Count-Based Exploration with Neural Density Models »
Georg Ostrovski · Marc Bellemare · Aäron van den Oord · Remi Munos -
2017 Poster: A Distributional Perspective on Reinforcement Learning »
Marc Bellemare · Will Dabney · Remi Munos -
2017 Poster: Automated Curriculum Learning for Neural Networks »
Alex Graves · Marc Bellemare · Jacob Menick · Remi Munos · Koray Kavukcuoglu -
2017 Poster: Minimax Regret Bounds for Reinforcement Learning »
Mohammad Gheshlaghi Azar · Ian Osband · Remi Munos -
2017 Talk: A Distributional Perspective on Reinforcement Learning »
Marc Bellemare · Will Dabney · Remi Munos -
2017 Talk: Automated Curriculum Learning for Neural Networks »
Alex Graves · Marc Bellemare · Jacob Menick · Remi Munos · Koray Kavukcuoglu -
2017 Talk: Minimax Regret Bounds for Reinforcement Learning »
Mohammad Gheshlaghi Azar · Ian Osband · Remi Munos