On the number of linear regions of deep neural networks GF Montufar, R Pascanu, K Cho, Y Bengio Advances in neural information processing systems 27, 2014 | 2792 | 2014 |
On the number of response regions of deep feed forward networks with piece-wise linear activations R Pascanu, G Montufar, Y Bengio International Conference on Learning Representations (ICLR) 2014, Banff …, 2013 | 366 | 2013 |
Weisfeiler and lehman go topological: Message passing simplicial networks C Bodnar, F Frasca, YG Wang, N Otter, G Montúfar, P Lio, M Bronstein 38th International Conference on Machine Learning (ICML), 1026-1037, 2021 | 263 | 2021 |
Weisfeiler and lehman go cellular: Cw networks C Bodnar, F Frasca, N Otter, YG Wang, P Liò, GF Montufar, M Bronstein Advances in Neural Information Processing Systems (NeurIPS) 35, 2021 | 257 | 2021 |
Refinements of universal approximation results for deep belief networks and restricted Boltzmann machines G Montufar, N Ay Neural computation 23 (5), 1306-1319, 2011 | 117 | 2011 |
Haar graph pooling YG Wang, M Li, Z Ma, G Montufar, X Zhuang, Y Fan 37th International conference on machine learning (ICML), 9952-9962, 2020 | 97 | 2020 |
Optimal Transport to a Variety TÖ Çelik, A Jamneshan, G Montufar, B Sturmfels, L Venturello Mathematical Aspects of Computer and Information Sciences, 364-381, 2019 | 78* | 2019 |
Natural gradient via optimal transport W Li, G Montúfar Information Geometry 1, 181-214, 2018 | 78 | 2018 |
Tight bounds on the smallest eigenvalue of the neural tangent kernel for deep relu networks Q Nguyen, M Mondelli, GF Montufar 38th International Conference on Machine Learning (ICML), 8119-8129, 2021 | 77 | 2021 |
Restricted boltzmann machines: Introduction and review G Montúfar Information Geometry and Its Applications: On the Occasion of Shun-ichi …, 2018 | 73 | 2018 |
How framelets enhance graph neural networks X Zheng, B Zhou, J Gao, YG Wang, P Lio, M Li, G Montúfar 38th International Conference on Machine Learning (ICML), 12761-12771, 2021 | 69 | 2021 |
Expressive power and approximation errors of restricted Boltzmann machines GF Montúfar, J Rauh, N Ay Advances in Neural Information Processing Systems (NeurIPS) 24, 415-423, 2011 | 62 | 2011 |
Universal Approximation Depth and Errors of Narrow Belief Networks with Discrete Units GF Montúfar Neural Computation 26 (7), 1386-1407, 2014 | 53 | 2014 |
Cell graph neural networks enable the precise prediction of patient survival in gastric cancer Y Wang, YG Wang, C Hu, M Li, Y Fan, N Otter, I Sam, H Gou, Y Hu, ... NPJ precision oncology 6 (1), 45, 2022 | 48* | 2022 |
FoSR: First-order spectral rewiring for addressing oversquashing in GNNs K Karhadkar, PK Banerjee, G Montúfar International Conference on Learning Representations (ICLR) 2023, 2022 | 47 | 2022 |
When Does a Mixture of Products Contain a Product of Mixtures? GF Montúfar, J Morton SIAM Journal on Discrete Mathematics 29 (1), 321-347, 2015 | 46 | 2015 |
Oversquashing in GNNs through the lens of information contraction and graph expansion PK Banerjee, K Karhadkar, YG Wang, U Alon, G Montúfar 58th Annual Allerton Conference on Communication, Control, and Computing, 2022 | 44 | 2022 |
Wasserstein of Wasserstein loss for learning generative models Y Dukler, W Li, A Tong Lin, G Montúfar 36th International Conference on Machine Learning (ICML) 97, 1716-1725, 2019 | 44 | 2019 |
Wasserstein Proximal of GANs A Tong Lin, W Li, S Osher, G Montúfar 5th International Conference Geometric Science of Information, 2018 | 44* | 2018 |
Notes on the number of linear regions of deep neural networks G Montúfar eScholarship, University of California, 2017 | 43 | 2017 |