SAGA: A fast incremental gradient method with support for non-strongly convex composite objectives A Defazio, F Bach, S Lacoste-Julien Advances in neural information processing systems 27, 2014 | 2195 | 2014 |
fastMRI: An open dataset and benchmarks for accelerated MRI J Zbontar, F Knoll, A Sriram, T Murrell, Z Huang, MJ Muckley, A Defazio, ... arXiv preprint arXiv:1811.08839, 2018 | 901 | 2018 |
fastMRI: A publicly available raw k-space and DICOM dataset of knee images for accelerated MR image reconstruction using machine learning F Knoll, J Zbontar, A Sriram, MJ Muckley, M Bruno, A Defazio, M Parente, ... Radiology: Artificial Intelligence 2 (1), e190007, 2020 | 384 | 2020 |
End-to-end variational networks for accelerated MRI reconstruction A Sriram, J Zbontar, T Murrell, A Defazio, CL Zitnick, N Yakubova, F Knoll, ... Medical Image Computing and Computer Assisted Intervention–MICCAI 2020: 23rd …, 2020 | 315 | 2020 |
Advancing machine learning for MR image reconstruction with an open competition: Overview of the 2019 fastMRI challenge F Knoll, T Murrell, A Sriram, N Yakubova, J Zbontar, M Rabbat, A Defazio, ... Magnetic resonance in medicine 84 (6), 3054-3070, 2020 | 222 | 2020 |
Finito: A faster, permutable incremental gradient method for big data problems A Defazio, J Domke International Conference on Machine Learning, 1125-1133, 2014 | 206 | 2014 |
A simple practical accelerated method for finite sums A Defazio Advances in neural information processing systems 29, 2016 | 169 | 2016 |
Using deep learning to accelerate knee MRI at 3 T: results of an interchangeability study MP Recht, J Zbontar, DK Sodickson, F Knoll, N Yakubova, A Sriram, ... American Journal of Roentgenology 215 (6), 1421-1429, 2020 | 142 | 2020 |
Almost sure convergence rates for stochastic gradient descent and stochastic heavy ball O Sebbouh, RM Gower, A Defazio Conference on Learning Theory, 3935-3971, 2021 | 114 | 2021 |
GrappaNet: Combining parallel imaging with deep learning for multi-coil MRI reconstruction A Sriram, J Zbontar, T Murrell, CL Zitnick, A Defazio, DK Sodickson Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2020 | 114 | 2020 |
On the ineffectiveness of variance reduced optimization for deep learning A Defazio, L Bottou Advances in Neural Information Processing Systems 32, 2019 | 114 | 2019 |
Non-uniform stochastic average gradient method for training conditional random fields M Schmidt, R Babanezhad, M Ahmed, A Defazio, A Clifton, A Sarkar artificial intelligence and statistics, 819-828, 2015 | 101 | 2015 |
A momentumized, adaptive, dual averaged gradient method A Defazio, S Jelassi Journal of Machine Learning Research 23 (144), 1-34, 2022 | 75 | 2022 |
Learning-rate-free learning by d-adaptation A Defazio, K Mishchenko International Conference on Machine Learning, 7449-7479, 2023 | 70 | 2023 |
A convex formulation for learning scale-free networks via submodular relaxation A Defazio, T Caetano Advances in neural information processing systems 25, 2012 | 41 | 2012 |
A comparison of learning algorithms on the arcade learning environment A Defazio, T Graepel arXiv preprint arXiv:1410.8620, 2014 | 35 | 2014 |
On the curved geometry of accelerated optimization A Defazio Advances in Neural Information Processing Systems 32, 2019 | 27 | 2019 |
Prodigy: An expeditiously adaptive parameter-free learner K Mishchenko, A Defazio arXiv preprint arXiv:2306.06101, 2023 | 26 | 2023 |
Understanding the role of momentum in non-convex optimization: Practical insights from a lyapunov analysis A Defazio arXiv preprint arXiv:2010.00406, 2020 | 21 | 2020 |
Stochastic polyak stepsize with a moving target RM Gower, A Defazio, M Rabbat arXiv preprint arXiv:2106.11851, 2021 | 20 | 2021 |