Are GANs Created Equal? A Large-Scale Study M Lucic, K Kurach, M Michalski, S Gelly, O Bousquet Advances in Neural Information Processing Systems, 2017 | 518 | 2017 |
Challenging common assumptions in the unsupervised learning of disentangled representations F Locatello, S Bauer, M Lucic, S Gelly, B Schölkopf, O Bachem International Conference on Machine Learning (Best Paper Award), 2019 | 353 | 2019 |
A Large-Scale Study on Regularization and Normalization in GANs K Kurach*, M Lucic*, X Zhai, M Michalski, S Gelly International Conference on Machine Learning, 2018 | 159* | 2018 |
Recent advances in autoencoder-based representation learning M Tschannen, O Bachem, M Lucic Workshop on Bayesian Deep Learning (NeurIPS 2018), 2018 | 134 | 2018 |
Assessing Generative Models via Precision and Recall MSM Sajjadi, O Bachem, M Lucic, O Bousquet, S Gelly Advances in Neural Information Processing Systems, 2018 | 122 | 2018 |
Self-Supervised GANs via Auxiliary Rotation Loss T Chen, X Zhai, M Ritter, M Lucic, N Houlsby Conference on Computer Vision and Pattern Recognition, 2019 | 119* | 2019 |
Fast and provably good seedings for k-means O Bachem, M Lucic, H Hassani, A Krause Advances in Neural Information Processing Systems, 2016 | 108 | 2016 |
On Mutual Information Maximization for Representation Learning M Tschannen, J Djolonga, PK Rubenstein, S Gelly, M Lucic arXiv preprint arXiv:1907.13625, 2019 | 99 | 2019 |
Approximate K-Means++ in Sublinear Time O Bachem, M Lucic, SH Hassani, A Krause AAAI Conference on Artificial Intelligence, 2016 | 89 | 2016 |
High-Fidelity Image Generation With Fewer Labels M Lučić, M Tschannen, M Ritter, X Zhai, O Bachem, S Gelly International Conference on Machine Learning, 2019 | 72 | 2019 |
Practical coreset constructions for machine learning O Bachem, M Lucic, A Krause arXiv preprint arXiv:1703.06476, 2017 | 64 | 2017 |
Strong Coresets for Hard and Soft Bregman Clustering with Applications to Exponential Family Mixtures M Lucic, O Bachem, A Krause International Conference on Artificial Intelligence and Statistics, 2016 | 58 | 2016 |
Coresets for Nonparametric Estimation - the Case of DP-Means O Bachem, M Lucic, A Krause International Conference on Machine Learning, 2015 | 58 | 2015 |
Training Gaussian mixture models at scale via coresets M Lucic, M Faulkner, A Krause, D Feldman The Journal of Machine Learning Research, 2017 | 49 | 2017 |
Are GANs Created Equal? M Lucic, K Kurach, M Michalski, S Gelly, O Bousquet A large-scale study. arXiv e-prints 2 (4), 2017 | 46 | 2017 |
Scalable k-means clustering via lightweight coresets O Bachem, M Lucic, A Krause International Conference on Knowledge Discovery & Data Mining, 2018 | 45 | 2018 |
Fast and robust least squares estimation in corrupted linear models B McWilliams, G Krummenacher, M Lucic, JM Buhmann Advances in Neural Information Processing Systems, 2014 | 44 | 2014 |
On Self Modulation for Generative Adversarial Networks T Chen, M Lucic, N Houlsby, S Gelly International Conference on Learning Representations, 2019 | 42 | 2019 |
Deep Generative Models for Distribution-Preserving Lossy Compression M Tschannen, E Agustsson, M Lucic Advances in Neural Information Processing Systems, 2018 | 39 | 2018 |
Stochastic Submodular Maximization: The Case of Coverage Functions M Karimi, M Lucic, H Hassani, A Krause Advances in Neural Information Processing Systems, 2017 | 36 | 2017 |