A convolutional neural network for modelling sentences N Kalchbrenner, E Grefenstette, P Blunsom arXiv preprint arXiv:1404.2188, 2014 | 4919 | 2014 |
Teaching machines to read and comprehend KM Hermann, T Kocisky, E Grefenstette, L Espeholt, W Kay, M Suleyman, ... Advances in neural information processing systems 28, 2015 | 3950 | 2015 |
Hybrid computing using a neural network with dynamic external memory A Graves, G Wayne, M Reynolds, T Harley, I Danihelka, ... Nature 538 (7626), 471-476, 2016 | 1884 | 2016 |
Reasoning about entailment with neural attention T Rocktäschel, E Grefenstette, KM Hermann, T Kočiský, P Blunsom arXiv preprint arXiv:1509.06664, 2015 | 889 | 2015 |
The narrativeqa reading comprehension challenge T Kočiský, J Schwarz, P Blunsom, C Dyer, KM Hermann, G Melis, ... Transactions of the Association for Computational Linguistics 6, 317-328, 2018 | 664 | 2018 |
Learning explanatory rules from noisy data R Evans, E Grefenstette Journal of Artificial Intelligence Research 61, 1-64, 2018 | 569 | 2018 |
Latent predictor networks for code generation W Ling, E Grefenstette, KM Hermann, T Kočiský, A Senior, F Wang, ... arXiv preprint arXiv:1603.06744, 2016 | 437 | 2016 |
Experimental support for a categorical compositional distributional model of meaning E Grefenstette, M Sadrzadeh arXiv preprint arXiv:1106.4058, 2011 | 391 | 2011 |
Analysing mathematical reasoning abilities of neural models D Saxton, E Grefenstette, F Hill, P Kohli arXiv preprint arXiv:1904.01557, 2019 | 383 | 2019 |
Discovering discrete latent topics with neural variational inference Y Miao, E Grefenstette, P Blunsom International conference on machine learning, 2410-2419, 2017 | 355 | 2017 |
Learning to transduce with unbounded memory E Grefenstette, KM Hermann, M Suleyman, P Blunsom Advances in neural information processing systems 28, 2015 | 343 | 2015 |
A survey of zero-shot generalisation in deep reinforcement learning R Kirk, A Zhang, E Grefenstette, T Rocktäschel Journal of Artificial Intelligence Research 76, 201-264, 2023 | 309 | 2023 |
A survey of reinforcement learning informed by natural language J Luketina, N Nardelli, G Farquhar, J Foerster, J Andreas, E Grefenstette, ... arXiv preprint arXiv:1906.03926, 2019 | 292 | 2019 |
Learning to compose words into sentences with reinforcement learning D Yogatama, P Blunsom, C Dyer, E Grefenstette, W Ling arXiv preprint arXiv:1611.09100, 2016 | 201 | 2016 |
Learning to Understand Goal Specifications by Modelling Reward D Bahdanau, F Hill, J Leike, E Hughes, P Kohli, E Grefenstette arXiv preprint arXiv:1806.01946, 2018 | 193* | 2018 |
Generalized inner loop meta-learning E Grefenstette, B Amos, D Yarats, PM Htut, A Molchanov, F Meier, D Kiela, ... arXiv preprint arXiv:1910.01727, 2019 | 164 | 2019 |
The nethack learning environment H Küttler, N Nardelli, A Miller, R Raileanu, M Selvatici, E Grefenstette, ... Advances in Neural Information Processing Systems 33, 7671-7684, 2020 | 153 | 2020 |
Multi-step regression learning for compositional distributional semantics E Grefenstette, G Dinu, YZ Zhang, M Sadrzadeh, M Baroni arXiv preprint arXiv:1301.6939, 2013 | 151 | 2013 |
Can neural networks understand logical entailment? R Evans, D Saxton, D Amos, P Kohli, E Grefenstette arXiv preprint arXiv:1802.08535, 2018 | 144 | 2018 |
Learning with amigo: Adversarially motivated intrinsic goals A Campero, R Raileanu, H Küttler, JB Tenenbaum, T Rocktäschel, ... arXiv preprint arXiv:2006.12122, 2020 | 143 | 2020 |