Protection against reconstruction and its applications in private federated learning A Bhowmick, J Duchi, J Freudiger, G Kapoor, R Rogers arXiv preprint arXiv:1812.00984, 2018 | 390 | 2018 |
Differentially private chi-squared hypothesis testing: Goodness of fit and independence testing M Gaboardi, H Lim, R Rogers, S Vadhan International conference on machine learning, 2111-2120, 2016 | 153 | 2016 |
Learning with Privacy at Scale DP Team Apple Machine Learning Journal 1 (8), 2017 | 109 | 2017 |
Lower bounds for locally private estimation via communication complexity J Duchi, R Rogers Conference on Learning Theory, 1161-1191, 2019 | 103 | 2019 |
Psi M Gaboardi, J Honaker, G King, J Murtagh, K Nissim, J Ullman, S Vadhan, ... arXiv preprint arXiv:1609.04340, 2016 | 90 | 2016 |
Max-information, differential privacy, and post-selection hypothesis testing R Rogers, A Roth, A Smith, O Thakkar 2016 IEEE 57th Annual Symposium on Foundations of Computer Science (FOCS …, 2016 | 89 | 2016 |
Privacy odometers and filters: Pay-as-you-go composition RM Rogers, A Roth, J Ullman, S Vadhan Advances in Neural Information Processing Systems, 1921-1929, 2016 | 89 | 2016 |
Practical differentially private top-k selection with pay-what-you-get composition D Durfee, RM Rogers Advances in Neural Information Processing Systems 32, 2019 | 84 | 2019 |
LinkedIn's Audience Engagements API: A privacy preserving data analytics system at scale R Rogers, S Subramaniam, S Peng, D Durfee, S Lee, SK Kancha, ... arXiv preprint arXiv:2002.05839, 2020 | 74 | 2020 |
Privatized machine learning using generative adversarial networks A Bhowmick, AH Vyrros, RM Rogers US Patent App. 15/892,246, 2019 | 74 | 2019 |
Local private hypothesis testing: Chi-square tests M Gaboardi, R Rogers International Conference on Machine Learning, 1626-1635, 2018 | 70 | 2018 |
Locally Private Mean Estimation: -test and Tight Confidence Intervals M Gaboardi, R Rogers, O Sheffet The 22nd international conference on artificial intelligence and statistics …, 2019 | 58 | 2019 |
Optimal differential privacy composition for exponential mechanisms J Dong, D Durfee, R Rogers International Conference on Machine Learning, 2597-2606, 2020 | 55 | 2020 |
Asymptotically truthful equilibrium selection in large congestion games RM Rogers, A Roth Proceedings of the fifteenth ACM conference on Economics and computation …, 2014 | 49 | 2014 |
Do prices coordinate markets? J Hsu, J Morgenstern, R Rogers, A Roth, R Vohra Proceedings of the forty-eighth annual ACM symposium on Theory of Computing …, 2016 | 39 | 2016 |
A new class of private chi-square hypothesis tests R Rogers, D Kifer Artificial Intelligence and Statistics, 991-1000, 2017 | 37 | 2017 |
A new class of private chi-square tests D Kifer, R Rogers Proceedings of the 20th International Conference on Artificial Intelligence …, 2016 | 34 | 2016 |
Differentially private histograms under continual observation: Streaming selection into the unknown AR Cardoso, R Rogers International Conference on Artificial Intelligence and Statistics, 2397-2419, 2022 | 33 | 2022 |
Fully-adaptive composition in differential privacy J Whitehouse, A Ramdas, R Rogers, S Wu International Conference on Machine Learning, 36990-37007, 2023 | 30 | 2023 |
Bounding, concentrating, and truncating: Unifying privacy loss composition for data analytics M Cesar, R Rogers Algorithmic Learning Theory, 421-457, 2021 | 28 | 2021 |