| Improved techniques for training gans T Salimans, I Goodfellow, W Zaremba, V Cheung, A Radford, X Chen Advances in neural information processing systems, 2234-2242, 2016 | 2670 | 2016 |
| Weight normalization: A simple reparameterization to accelerate training of deep neural networks T Salimans, DP Kingma Advances in Neural Information Processing Systems, 901-909, 2016 | 601 | 2016 |
| Improved variational inference with inverse autoregressive flow DP Kingma, T Salimans, R Jozefowicz, X Chen, I Sutskever, M Welling Advances in neural information processing systems, 4743-4751, 2016 | 542 | 2016 |
| Improving language understanding by generative pre-training A Radford, K Narasimhan, T Salimans, I Sutskever URL https://s3-us-west-2. amazonaws. com/openai-assets/researchcovers …, 2018 | 503 | 2018 |
| Evolution strategies as a scalable alternative to reinforcement learning T Salimans, J Ho, X Chen, S Sidor, I Sutskever arXiv preprint arXiv:1703.03864, 2017 | 420 | 2017 |
| Variational dropout and the local reparameterization trick DP Kingma, T Salimans, M Welling Advances in Neural Information Processing Systems, 2575-2583, 2015 | 408 | 2015 |
| Markov chain monte carlo and variational inference: Bridging the gap T Salimans, D Kingma, M Welling International Conference on Machine Learning, 1218-1226, 2015 | 269 | 2015 |
| Variational lossy autoencoder X Chen, DP Kingma, T Salimans, Y Duan, P Dhariwal, J Schulman, ... arXiv preprint arXiv:1611.02731, 2016 | 260 | 2016 |
| Pixelcnn++: Improving the pixelcnn with discretized logistic mixture likelihood and other modifications T Salimans, A Karpathy, X Chen, DP Kingma arXiv preprint arXiv:1701.05517, 2017 | 238 | 2017 |
| Fixed-form variational posterior approximation through stochastic linear regression T Salimans, DA Knowles Bayesian Analysis 8 (4), 837-882, 2013 | 141 | 2013 |
| Improving language understanding with unsupervised learning A Radford, K Narasimhan, T Salimans, I Sutskever Technical report, OpenAI, 2018 | 94* | 2018 |
| Improving GANs Using Optimal Transport T Salimans, H Zhang, A Radford, D Metaxas International Conference on Learning Representations (ICLR), 2018 | 68 | 2018 |
| Variable selection and functional form uncertainty in cross-country growth regressions T Salimans Journal of Econometrics 171 (2), 267-280, 2012 | 24 | 2012 |
| Learning Montezuma’s Revenge from a single demonstration T Salimans, R Chen Deep RL Workshop, Neural Information Processing Systems (NeurIPS), 2018 | 21 | 2018 |
| On using control variates with stochastic approximation for variational bayes and its connection to stochastic linear regression T Salimans, DA Knowles arXiv preprint arXiv:1401.1022, 2014 | 14* | 2014 |
| OpenAI Post on Generative Models A Karpathy, P Abbeel, G Brockman, P Chen, V Cheung, R Duan, ... URL https://blog. openai. com/generative-models, 2016 | 12* | 2016 |
| The likelihood of mixed hitting times JH Abbring, T Salimans arXiv preprint arXiv:1905.03463, 2019 | 11 | 2019 |
| Observing Dark Worlds: A crowdsourcing experiment for dark matter mapping D Harvey, TD Kitching, J Noah-Vanhoucke, B Hamner, T Salimans, ... Astronomy and Computing 5, 35-44, 2014 | 10 | 2014 |
| Collaborative learning of preference rankings T Salimans, U Paquet, T Graepel Proceedings of the sixth ACM conference on Recommender systems, 261-264, 2012 | 10* | 2012 |
| A structured variational auto-encoder for learning deep hierarchies of sparse features T Salimans arXiv preprint arXiv:1602.08734, 2016 | 9 | 2016 |