Autozoom: Autoencoder-based zeroth order optimization method for attacking black-box neural networks CC Tu, P Ting, PY Chen, S Liu, H Zhang, J Yi, CJ Hsieh, SM Cheng Proceedings of the AAAI conference on artificial intelligence 33 (01), 742-749, 2019 | 425 | 2019 |
Topology attack and defense for graph neural networks: An optimization perspective K Xu, H Chen, S Liu, PY Chen, TW Weng, M Hong, X Lin IJCAI 2019, 2019 | 398 | 2019 |
The lottery ticket hypothesis for pre-trained bert networks T Chen, J Frankle, S Chang, S Liu, Y Zhang, Z Wang, M Carbin Advances in neural information processing systems 33, 15834-15846, 2020 | 352 | 2020 |
Adversarial t-shirt! evading person detectors in a physical world K Xu, G Zhang, S Liu, Q Fan, M Sun, H Chen, PY Chen, Y Wang, X Lin ECCV 2020, 665-681, 2020 | 351 | 2020 |
On the convergence of a class of adam-type algorithms for non-convex optimization X Chen, S Liu, R Sun, M Hong ICLR 2019, 2018 | 341 | 2018 |
Adversarial robustness: From self-supervised pre-training to fine-tuning T Chen, S Liu, S Chang, Y Cheng, L Amini, Z Wang CVPR, 699-708, 2020 | 253 | 2020 |
Sign-opt: A query-efficient hard-label adversarial attack M Cheng, S Singh, P Chen, PY Chen, S Liu, CJ Hsieh ICLR 2020, 2019 | 230 | 2019 |
Sensor selection for estimation with correlated measurement noise S Liu, SP Chepuri, M Fardad, E Maşazade, G Leus, PK Varshney IEEE Transactions on Signal Processing 64 (13), 3509-3522, 2016 | 204 | 2016 |
Robust overfitting may be mitigated by properly learned smoothening T Chen, Z Zhang, S Liu, S Chang, Z Wang International Conference on Learning Representations, 2020 | 183 | 2020 |
Adversarial robustness vs. model compression, or both? S Ye, K Xu, S Liu, H Cheng, JH Lambrechts, H Zhang, A Zhou, K Ma, ... Proceedings of the IEEE/CVF International Conference on Computer Vision, 111-120, 2019 | 183 | 2019 |
Structured adversarial attack: Towards general implementation and better interpretability K Xu, S Liu, P Zhao, PY Chen, H Zhang, Q Fan, D Erdogmus, Y Wang, ... ICLR 2019, 2018 | 181 | 2018 |
A primer on zeroth-order optimization in signal processing and machine learning: Principals, recent advances, and applications S Liu, PY Chen, B Kailkhura, G Zhang, AO Hero III, PK Varshney IEEE Signal Processing Magazine 37 (5), 43-54, 2020 | 178 | 2020 |
Cnn-cert: An efficient framework for certifying robustness of convolutional neural networks A Boopathy, TW Weng, PY Chen, S Liu, L Daniel Proceedings of the AAAI Conference on Artificial Intelligence 33 (01), 3240-3247, 2019 | 172 | 2019 |
Zeroth-order stochastic variance reduction for nonconvex optimization S Liu, B Kailkhura, PY Chen, P Ting, S Chang, L Amini Advances in Neural Information Processing Systems 31, 2018 | 168 | 2018 |
Is there a trade-off between fairness and accuracy? a perspective using mismatched hypothesis testing S Dutta, D Wei, H Yueksel, PY Chen, S Liu, K Varshney International conference on machine learning, 2803-2813, 2020 | 150 | 2020 |
Learning sparse graphs under smoothness prior SP Chepuri, S Liu, G Leus, AO Hero ICASSP 2017, 6508-6512, 2017 | 146 | 2017 |
Practical detection of trojan neural networks: Data-limited and data-free cases R Wang, G Zhang, S Liu, PY Chen, J Xiong, M Wang Computer Vision–ECCV 2020: 16th European Conference, Glasgow, UK, August 23 …, 2020 | 142 | 2020 |
The lottery tickets hypothesis for supervised and self-supervised pre-training in computer vision models T Chen, J Frankle, S Chang, S Liu, Y Zhang, M Carbin, Z Wang Proceedings of the IEEE/CVF conference on computer vision and pattern …, 2021 | 124 | 2021 |
When does contrastive learning preserve adversarial robustness from pretraining to finetuning? L Fan, S Liu, PY Chen, G Zhang, C Gan Advances in neural information processing systems 34, 21480-21492, 2021 | 104 | 2021 |
Zeroth-order online alternating direction method of multipliers: Convergence analysis and applications S Liu, J Chen, PY Chen, A Hero International Conference on Artificial Intelligence and Statistics, 288-297, 2018 | 104 | 2018 |