Visualizing the loss landscape of neural nets H Li, Z Xu, G Taylor, C Studer, T Goldstein Advances in neural information processing systems 31, 2018 | 2212 | 2018 |
Adversarial training for free! A Shafahi, M Najibi, MA Ghiasi, Z Xu, J Dickerson, C Studer, LS Davis, ... Advances in neural information processing systems 32, 2019 | 1552 | 2019 |
Transferable clean-label poisoning attacks on deep neural nets C Zhu, WR Huang, H Li, G Taylor, C Studer, T Goldstein International conference on machine learning, 7614-7623, 2019 | 351 | 2019 |
Training neural networks without gradients: A scalable admm approach G Taylor, R Burmeister, Z Xu, B Singh, A Patel, T Goldstein International conference on machine learning, 2722-2731, 2016 | 322 | 2016 |
An analysis of linear models, linear value-function approximation, and feature selection for reinforcement learning R Parr, L Li, G Taylor, C Painter-Wakefield, ML Littman Proceedings of the 25th international conference on Machine learning, 752-759, 2008 | 268 | 2008 |
Witches' brew: Industrial scale data poisoning via gradient matching J Geiping, L Fowl, WR Huang, W Czaja, G Taylor, M Moeller, T Goldstein arXiv preprint arXiv:2009.02276, 2020 | 227 | 2020 |
Metapoison: Practical general-purpose clean-label data poisoning WR Huang, J Geiping, L Fowl, G Taylor, T Goldstein Advances in Neural Information Processing Systems 33, 12080-12091, 2020 | 215 | 2020 |
Lowkey: Leveraging adversarial attacks to protect social media users from facial recognition V Cherepanova, M Goldblum, H Foley, S Duan, J Dickerson, G Taylor, ... arXiv preprint arXiv:2101.07922, 2021 | 147 | 2021 |
Kernelized value function approximation for reinforcement learning G Taylor, R Parr Proceedings of the 26th annual international conference on machine learning …, 2009 | 135 | 2009 |
Flag: Adversarial data augmentation for graph neural networks K Kong, G Li, M Ding, Z Wu, C Zhu, B Ghanem, G Taylor, T Goldstein arXiv, 2020 | 129 | 2020 |
Robust optimization as data augmentation for large-scale graphs K Kong, G Li, M Ding, Z Wu, C Zhu, B Ghanem, G Taylor, T Goldstein Proceedings of the IEEE/CVF conference on computer vision and pattern …, 2022 | 100 | 2022 |
Feature selection using regularization in approximate linear programs for Markov decision processes M Petrik, G Taylor, R Parr, S Zilberstein arXiv preprint arXiv:1005.1860, 2010 | 92 | 2010 |
Adaptive consensus ADMM for distributed optimization Z Xu, G Taylor, H Li, MAT Figueiredo, X Yuan, T Goldstein International Conference on Machine Learning, 3841-3850, 2017 | 88 | 2017 |
Layer-specific adaptive learning rates for deep networks B Singh, S De, Y Zhang, T Goldstein, G Taylor 2015 IEEE 14th International Conference on Machine Learning and Applications …, 2015 | 70 | 2015 |
Autonomous management of energy-harvesting iot nodes using deep reinforcement learning A Murad, FA Kraemer, K Bach, G Taylor 2019 IEEE 13th International Conference on Self-Adaptive and Self-Organizing …, 2019 | 43 | 2019 |
Information-driven adaptive sensing based on deep reinforcement learning A Murad, FA Kraemer, K Bach, G Taylor Proceedings of the 10th International Conference on the Internet of Things, 1-8, 2020 | 27 | 2020 |
Unwrapping ADMM: efficient distributed computing via transpose reduction T Goldstein, G Taylor, K Barabin, K Sayre Artificial Intelligence and Statistics, 1151-1158, 2016 | 24 | 2016 |
Comparison of international normalized ratio audit parameters in patients enrolled in GARFIELD‐AF and treated with vitamin K antagonists DA Fitzmaurice, G Accetta, S Haas, G Kayani, H Lucas Luciardi, ... British journal of haematology 174 (4), 610-623, 2016 | 21 | 2016 |
Probabilistic deep learning to quantify uncertainty in air quality forecasting A Murad, FA Kraemer, K Bach, G Taylor Sensors 21 (23), 8009, 2021 | 14 | 2021 |
Value Function Approximation in Noisy Environments Using Locally Smoothed Regularized Approximate Linear Programs G Taylor, R Parr The Conference on Uncertainty in Artificial Intelligence, 2012 | 13 | 2012 |