Multi-task reinforcement learning: a hierarchical bayesian approach A Wilson, A Fern, S Ray, P Tadepalli Proceedings of the 24th international conference on Machine learning, 1015-1022, 2007 | 321 | 2007 |
Active learning with committees for text categorization R Liere, P Tadepalli AAAI/IAAI, 591-596, 1997 | 221 | 1997 |
Dynamic preferences in multi-criteria reinforcement learning S Natarajan, P Tadepalli Proceedings of the 22nd international conference on Machine learning, 601-608, 2005 | 153 | 2005 |
Relational reinforcement learning: An overview P Tadepalli, R Givan, K Driessens Proceedings of the ICML-2004 workshop on relational reinforcement learning, 1-9, 2004 | 152 | 2004 |
Structured machine learning: the next ten years TG Dietterich, P Domingos, L Getoor, S Muggleton, P Tadepalli Machine Learning 73 (1), 3-23, 2008 | 142 | 2008 |
A bayesian approach for policy learning from trajectory preference queries A Wilson, A Fern, P Tadepalli Advances in neural information processing systems 25, 2012 | 123 | 2012 |
Transfer in variable-reward hierarchical reinforcement learning N Mehta, S Natarajan, P Tadepalli, A Fern Machine Learning 73 (3), 289-312, 2008 | 121 | 2008 |
Model-based average reward reinforcement learning P Tadepalli, DK Ok Artificial intelligence 100 (1-2), 177-224, 1998 | 115 | 1998 |
Lower bounding Klondike solitaire with Monte-Carlo planning R Bjarnason, A Fern, P Tadepalli Nineteenth international conference on automated planning and scheduling, 2009 | 113 | 2009 |
Automatic discovery and transfer of MAXQ hierarchies N Mehta, S Ray, P Tadepalli, T Dietterich Proceedings of the 25th international conference on Machine learning, 648-655, 2008 | 109 | 2008 |
Maximizing the predictive value of production rules SM Weiss, RS Galen, PV Tadepalli Artificial Intelligence 45 (1-2), 47-71, 1990 | 99 | 1990 |
Learning first-order probabilistic models with combining rules S Natarajan, P Tadepalli, TG Dietterich, A Fern Annals of Mathematics and Artificial Intelligence 54 (1), 223-256, 2008 | 98 | 2008 |
Lazy ExplanationBased Learning: A Solution to the Intractable Theory Problem. P Tadepalli IJCAI, 694-700, 1989 | 84 | 1989 |
Multi-agent inverse reinforcement learning S Natarajan, G Kunapuli, K Judah, P Tadepalli, K Kersting, J Shavlik 2010 ninth international conference on machine learning and applications …, 2010 | 81 | 2010 |
Using trajectory data to improve bayesian optimization for reinforcement learning A Wilson, A Fern, P Tadepalli The Journal of Machine Learning Research 15 (1), 253-282, 2014 | 79 | 2014 |
A Decision-Theoretic Model of Assistance. A Fern, S Natarajan, K Judah, P Tadepalli IJCAI, 1879-1884, 2007 | 74 | 2007 |
Interpreting recurrent and attention-based neural models: a case study on natural language inference R Ghaeini, XZ Fern, P Tadepalli arXiv preprint arXiv:1808.03894, 2018 | 73 | 2018 |
Imitation learning in relational domains: A functional-gradient boosting approach S Natarajan, S Joshi, P Tadepalli, K Kersting, J Shavlik Twenty-Second International Joint Conference on Artificial Intelligence, 2011 | 69 | 2011 |
Learning goal-decomposition rules using exercises C Reddy, P Tadepalli ICML, 278-286, 1997 | 69 | 1997 |
Event nugget detection with forward-backward recurrent neural networks R Ghaeini, XZ Fern, L Huang, P Tadepalli arXiv preprint arXiv:1802.05672, 2018 | 66 | 2018 |