Human-level control through deep reinforcement learning V Mnih, K Kavukcuoglu, D Silver, AA Rusu, J Veness, MG Bellemare, ... nature 518 (7540), 529-533, 2015 | 19656 | 2015 |
Playing atari with deep reinforcement learning V Mnih, K Kavukcuoglu, D Silver, A Graves, I Antonoglou, D Wierstra, ... arXiv preprint arXiv:1312.5602, 2013 | 9214 | 2013 |
A direct adaptive method for faster backpropagation learning: The RPROP algorithm M Riedmiller, H Braun IEEE international conference on neural networks, 586-591, 1993 | 6050 | 1993 |
Striving for simplicity: The all convolutional net JT Springenberg, A Dosovitskiy, T Brox, M Riedmiller arXiv preprint arXiv:1412.6806, 2014 | 4004 | 2014 |
Deterministic policy gradient algorithms D Silver, G Lever, N Heess, T Degris, D Wierstra, M Riedmiller International conference on machine learning, 387-395, 2014 | 3037 | 2014 |
Discriminative unsupervised feature learning with convolutional neural networks A Dosovitskiy, JT Springenberg, M Riedmiller, T Brox Advances in neural information processing systems 27, 2014 | 1337 | 2014 |
Neural fitted Q iteration–first experiences with a data efficient neural reinforcement learning method M Riedmiller European conference on machine learning, 317-328, 2005 | 1131 | 2005 |
Advanced supervised learning in multi-layer perceptrons—from backpropagation to adaptive learning algorithms M Riedmiller Computer Standards & Interfaces 16 (3), 265-278, 1994 | 753 | 1994 |
Emergence of locomotion behaviours in rich environments N Heess, D TB, S Sriram, J Lemmon, J Merel, G Wayne, Y Tassa, T Erez, ... arXiv preprint arXiv:1707.02286, 2017 | 750 | 2017 |
Embed to control: A locally linear latent dynamics model for control from raw images M Watter, J Springenberg, J Boedecker, M Riedmiller Advances in neural information processing systems 28, 2015 | 662 | 2015 |
Multimodal deep learning for robust RGB-D object recognition A Eitel, JT Springenberg, L Spinello, M Riedmiller, W Burgard 2015 IEEE/RSJ International Conference on Intelligent Robots and Systems …, 2015 | 652 | 2015 |
An algorithm for distributed reinforcement learning in cooperative multi-agent systems M Lauer, M Riedmiller In Proceedings of the Seventeenth International Conference on Machine Learning, 2000 | 566 | 2000 |
Rprop-a fast adaptive learning algorithm M Riedmiller, H Braun Proc. of ISCIS VII), Universitat, 1992 | 499 | 1992 |
Leveraging demonstrations for deep reinforcement learning on robotics problems with sparse rewards M Vecerik, T Hester, J Scholz, F Wang, O Pietquin, B Piot, N Heess, ... arXiv preprint arXiv:1707.08817, 2017 | 456 | 2017 |
Batch reinforcement learning S Lange, T Gabel, M Riedmiller Reinforcement learning, 45-73, 2012 | 402 | 2012 |
Rprop-description and implementation details M Riedmiller, I Rprop | 390 | 1994 |
Deep auto-encoder neural networks in reinforcement learning S Lange, M Riedmiller The 2010 international joint conference on neural networks (IJCNN), 1-8, 2010 | 388 | 2010 |
Graph networks as learnable physics engines for inference and control A Sanchez-Gonzalez, N Heess, JT Springenberg, J Merel, M Riedmiller, ... International Conference on Machine Learning, 4470-4479, 2018 | 387 | 2018 |
Reinforcement learning for robot soccer M Riedmiller, T Gabel, R Hafner, S Lange Autonomous Robots 27 (1), 55-73, 2009 | 336 | 2009 |
Learning by playing solving sparse reward tasks from scratch M Riedmiller, R Hafner, T Lampe, M Neunert, J Degrave, T Wiele, V Mnih, ... International conference on machine learning, 4344-4353, 2018 | 304 | 2018 |