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David Abel
David Abel
DeepMind / University of Edinburgh
Verified email at deepmind.com - Homepage
Title
Cited by
Cited by
Year
Near optimal behavior via approximate state abstraction
D Abel, DE Hershkowitz, ML Littman
International Conference on Machine Learning, 2915--2923, 2016
2002016
Reinforcement learning as a framework for ethical decision making
D Abel, J MacGlashan, ML Littman
AAAI Workshop on AI, Ethics, and Society, 2016
1822016
State abstractions for lifelong reinforcement learning
D Abel, D Arumugam, L Lehnert, M Littman
International Conference on Machine Learning, 10-19, 2018
1562018
People construct simplified mental representations to plan
MK Ho, D Abel, CG Correa, ML Littman, JD Cohen, TL Griffiths
Nature 606 (7912), 129-136, 2022
1192022
On the expressivity of Markov reward
D Abel, W Dabney, A Harutyunyan, MK Ho, ML Littman, D Precup, ...
Advances in Neural Information Processing Systems, 2021
1032021
Policy and value transfer in lifelong reinforcement learning
D Abel, Y Jinnai, SY Guo, G Konidaris, M Littman
International Conference on Machine Learning, 20-29, 2018
1032018
Agent-agnostic human-in-the-loop reinforcement learning
D Abel, J Salvatier, A Stuhlmüller, O Evans
NeurIPS Workshop on the Future of Interactive Learning Machines, 2016
862016
What can I do here? A theory of affordances in reinforcement learning
K Khetarpal, Z Ahmed, G Comanici, D Abel, D Precup
International Conference on Machine Learning, 2020
762020
Value preserving state-action abstractions
D Abel, N Umbanhowar, K Khetarpal, D Arumugam, D Precup, M Littman
International Conference on Artificial Intelligence and Statistics, 1639-1650, 2020
652020
State abstraction as compression in apprenticeship learning
D Abel, D Arumugam, K Asadi, Y Jinnai, ML Littman, LLS Wong
AAAI Conference on Artificial Intelligence 33, 3134-3142, 2019
622019
Discovering options for exploration by minimizing cover time
Y Jinnai, JW Park, D Abel, G Konidaris
International Conference on Machine Learning, 2019
602019
A definition of continual reinforcement learning
D Abel, A Barreto, B Van Roy, D Precup, H van Hasselt, S Singh
Advances in Neural Information Processing Systems, 2023
592023
Goal-based action priors
D Abel, DE Hershkowitz, G Barth-Maron, S Brawner, K O'Farrell, ...
International Conference on Automated Planning and Scheduling, 2015
592015
The value of abstraction
MK Ho, D Abel, T Griffiths, ML Littman
Current Opinion in Behavioral Sciences, 2019
542019
Exploratory gradient boosting for reinforcement learning in complex domains
D Abel, A Agarwal, F Diaz, A Krishnamurthy, RE Schapire
ICML Workshop on Abstraction in Reinforcement Learning, 2016
522016
A theory of abstraction in reinforcement learning
D Abel
Brown University, 2020
442020
Finding options that minimize planning time
Y Jinnai, D Abel, DE Hershkowitz, M Littman, G Konidaris
International Conference on Machine Learning, 2018
442018
Lipschitz lifelong reinforcement learning
E Lecarpentier, D Abel, K Asadi, Y Jinnai, E Rachelson, ML Littman
AAAI Conference on Artificial Intelligence, 2021
422021
Settling the reward hypothesis
M Bowling, JD Martin, D Abel, W Dabney
International Conference on Machine Learning, 3003-3020, 2023
382023
A theory of state abstraction for reinforcement learning
D Abel
AAAI Conference on Artificial Intelligence 33, 9876-9877, 2019
292019
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