The johnson-lindenstrauss transform itself preserves differential privacy J Blocki, A Blum, A Datta, O Sheffet 2012 IEEE 53rd Annual Symposium on Foundations of Computer Science, 410-419, 2012 | 277 | 2012 |
Differentially private data analysis of social networks via restricted sensitivity J Blocki, A Blum, A Datta, O Sheffet Proceedings of the 4th conference on Innovations in Theoretical Computer …, 2013 | 253 | 2013 |
Optimal social choice functions: A utilitarian view C Boutilier, I Caragiannis, S Haber, T Lu, AD Procaccia, O Sheffet Proceedings of the 13th ACM Conference on Electronic Commerce, 197-214, 2012 | 250 | 2012 |
Center-based clustering under perturbation stability P Awasthi, A Blum, O Sheffet Information Processing Letters 112 (1-2), 49-54, 2012 | 166 | 2012 |
Differentially private ordinary least squares O Sheffet International Conference on Machine Learning, 3105-3114, 2017 | 144 | 2017 |
Improved spectral-norm bounds for clustering P Awasthi, O Sheffet International Workshop on Approximation Algorithms for Combinatorial …, 2012 | 129 | 2012 |
Differentially private contextual linear bandits R Shariff, O Sheffet Advances in Neural Information Processing Systems 31, 2018 | 118 | 2018 |
Stability yields a PTAS for k-median and k-means clustering P Awasthi, A Blum, O Sheffet 2010 IEEE 51st Annual Symposium on Foundations of Computer Science, 309-318, 2010 | 110 | 2010 |
Send mixed signals: earn more, work less P Bro Miltersen, O Sheffet Proceedings of the 13th ACM conference on electronic commerce, 234-247, 2012 | 102 | 2012 |
Learning mixtures of ranking models P Awasthi, A Blum, O Sheffet, A Vijayaraghavan Advances in Neural Information Processing Systems 27, 2014 | 90 | 2014 |
Old techniques in differentially private linear regression O Sheffet Algorithmic Learning Theory, 789-827, 2019 | 64* | 2019 |
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 | 61 | 2019 |
Locally private hypothesis testing O Sheffet International Conference on Machine Learning, 4605-4614, 2018 | 59 | 2018 |
Differentially private algorithms for learning mixtures of separated gaussians G Kamath, O Sheffet, V Singhal, J Ullman Advances in Neural Information Processing Systems 32, 2019 | 57 | 2019 |
An optimal private stochastic-mab algorithm based on optimal private stopping rule T Sajed, O Sheffet International Conference on Machine Learning, 5579-5588, 2019 | 48 | 2019 |
Optimizing password composition policies J Blocki, S Komanduri, A Procaccia, O Sheffet Proceedings of the fourteenth ACM conference on Electronic commerce, 105-122, 2013 | 47 | 2013 |
Graph colouring with no large monochromatic components N Linial, J Matoušek, O Sheffet, G Tardos Combinatorics, Probability and Computing 17 (4), 577-589, 2008 | 46 | 2008 |
Systems and methods for video monitoring using linked devices I Horovitz, S Kiro, O Sheffet US Patent 8,531,522, 2013 | 37 | 2013 |
On the randomness complexity of property testing O Goldreich, O Sheffet Computational Complexity 19, 99-133, 2010 | 26 | 2010 |
Improved guarantees for agnostic learning of disjunctions P Awasthi, A Blum, O Sheffet Carnegie Mellon University, 2010 | 20 | 2010 |