Deep batch active learning by diverse, uncertain gradient lower bounds JT Ash, C Zhang, A Krishnamurthy, J Langford, A Agarwal arXiv preprint arXiv:1906.03671, 2019 | 801 | 2019 |
Go for a walk and arrive at the answer: Reasoning over paths in knowledge bases using reinforcement learning R Das, S Dhuliawala, M Zaheer, L Vilnis, I Durugkar, A Krishnamurthy, ... arXiv preprint arXiv:1711.05851, 2017 | 623 | 2017 |
Contextual decision processes with low bellman rank are pac-learnable N Jiang, A Krishnamurthy, A Agarwal, J Langford, RE Schapire International Conference on Machine Learning, 1704-1713, 2017 | 487 | 2017 |
Parallelised Bayesian optimisation via Thompson sampling K Kandasamy, A Krishnamurthy, J Schneider, B Póczos International conference on artificial intelligence and statistics, 133-142, 2018 | 326* | 2018 |
Flambe: Structural complexity and representation learning of low rank mdps A Agarwal, S Kakade, A Krishnamurthy, W Sun Advances in neural information processing systems 33, 20095-20107, 2020 | 280 | 2020 |
Provably efficient rl with rich observations via latent state decoding S Du, A Krishnamurthy, N Jiang, A Agarwal, M Dudik, J Langford International Conference on Machine Learning, 1665-1674, 2019 | 276 | 2019 |
Model-based rl in contextual decision processes: Pac bounds and exponential improvements over model-free approaches W Sun, N Jiang, A Krishnamurthy, A Agarwal, J Langford Conference on learning theory, 2898-2933, 2019 | 273 | 2019 |
Reward-free exploration for reinforcement learning C Jin, A Krishnamurthy, M Simchowitz, T Yu International Conference on Machine Learning, 4870-4879, 2020 | 249 | 2020 |
Learning to search better than your teacher KW Chang, A Krishnamurthy, A Agarwal, J Langford, H Daumé III International Conference on Machine Learning, 2015, 2015 | 237 | 2015 |
Off-policy evaluation for slate recommendation A Swaminathan, A Krishnamurthy, A Agarwal, M Dudik, J Langford, ... Advances in Neural Information Processing Systems 30, 2017 | 233 | 2017 |
Low-rank matrix and tensor completion via adaptive sampling A Krishnamurthy, A Singh Advances in neural information processing systems 26, 2013 | 195 | 2013 |
Kinematic state abstraction and provably efficient rich-observation reinforcement learning D Misra, M Henaff, A Krishnamurthy, J Langford International conference on machine learning, 6961-6971, 2020 | 193 | 2020 |
Pac reinforcement learning with rich observations A Krishnamurthy, A Agarwal, J Langford Advances in Neural Information Processing Systems 29, 2016 | 191 | 2016 |
Optimism in reinforcement learning with generalized linear function approximation Y Wang, R Wang, SS Du, A Krishnamurthy arXiv preprint arXiv:1912.04136, 2019 | 176 | 2019 |
Contrastive learning, multi-view redundancy, and linear models C Tosh, A Krishnamurthy, D Hsu Algorithmic Learning Theory, 1179-1206, 2021 | 161 | 2021 |
Transformers learn shortcuts to automata B Liu, JT Ash, S Goel, A Krishnamurthy, C Zhang arXiv preprint arXiv:2210.10749, 2022 | 142 | 2022 |
Information theoretic regret bounds for online nonlinear control S Kakade, A Krishnamurthy, K Lowrey, M Ohnishi, W Sun Advances in Neural Information Processing Systems 33, 15312-15325, 2020 | 140 | 2020 |
DEGAS: de novo discovery of dysregulated pathways in human diseases I Ulitsky, A Krishnamurthy, RM Karp, R Shamir PloS one 5 (10), e13367, 2010 | 136 | 2010 |
On oracle-efficient pac rl with rich observations C Dann, N Jiang, A Krishnamurthy, A Agarwal, J Langford, RE Schapire Advances in neural information processing systems 31, 2018 | 134 | 2018 |
Nonparametric von mises estimators for entropies, divergences and mutual informations K Kandasamy, A Krishnamurthy, B Poczos, L Wasserman Advances in Neural Information Processing Systems 28, 2015 | 131 | 2015 |