Making ai forget you: Data deletion in machine learning A Ginart, M Guan, G Valiant, JY Zou Advances in neural information processing systems 32, 2019 | 437 | 2019 |
Settling the polynomial learnability of mixtures of gaussians A Moitra, G Valiant 2010 IEEE 51st Annual Symposium on Foundations of Computer Science, 93-102, 2010 | 405 | 2010 |
What can transformers learn in-context? a case study of simple function classes S Garg, D Tsipras, PS Liang, G Valiant Advances in Neural Information Processing Systems 35, 30583-30598, 2022 | 379 | 2022 |
Estimating the unseen: an n/log (n)-sample estimator for entropy and support size, shown optimal via new CLTs G Valiant, P Valiant Proceedings of the forty-third annual ACM symposium on Theory of computing …, 2011 | 356 | 2011 |
Learning from untrusted data M Charikar, J Steinhardt, G Valiant Proceedings of the 49th Annual ACM SIGACT Symposium on Theory of Computing …, 2017 | 339 | 2017 |
Efficiently learning mixtures of two Gaussians AT Kalai, A Moitra, G Valiant Proceedings of the forty-second ACM symposium on Theory of computing, 553-562, 2010 | 270 | 2010 |
Optimal algorithms for testing closeness of discrete distributions SO Chan, I Diakonikolas, P Valiant, G Valiant Proceedings of the twenty-fifth annual ACM-SIAM symposium on Discrete …, 2014 | 255 | 2014 |
An automatic inequality prover and instance optimal identity testing G Valiant, P Valiant SIAM Journal on Computing 46 (1), 429-455, 2017 | 251 | 2017 |
Estimating the unseen: improved estimators for entropy and other properties G Valiant, P Valiant Journal of the ACM (JACM) 64 (6), 1-41, 2017 | 210 | 2017 |
Learning polynomials with neural networks A Andoni, R Panigrahy, G Valiant, L Zhang International conference on machine learning, 1908-1916, 2014 | 200 | 2014 |
Designing network protocols for good equilibria HL Chen, T Roughgarden, G Valiant SIAM Journal on Computing 39 (5), 1799-1832, 2010 | 176 | 2010 |
The power of linear estimators G Valiant, P Valiant 2011 IEEE 52nd Annual Symposium on Foundations of Computer Science, 403-412, 2011 | 174 | 2011 |
Implicit regularization for deep neural networks driven by an ornstein-uhlenbeck like process G Blanc, N Gupta, G Valiant, P Valiant Conference on learning theory, 483-513, 2020 | 171 | 2020 |
Resilience: A criterion for learning in the presence of arbitrary outliers J Steinhardt, M Charikar, G Valiant arXiv preprint arXiv:1703.04940, 2017 | 153 | 2017 |
Finding correlations in subquadratic time, with applications to learning parities and juntas G Valiant 2012 IEEE 53rd Annual Symposium on Foundations of Computer Science, 11-20, 2012 | 115 | 2012 |
Braess's paradox in large random graphs G Valiant, T Roughgarden Proceedings of the 7th ACM conference on Electronic commerce, 296-305, 2006 | 107 | 2006 |
Memory, communication, and statistical queries J Steinhardt, G Valiant, S Wager Conference on Learning Theory, 1490-1516, 2016 | 106 | 2016 |
A CLT and tight lower bounds for estimating entropy G Valiant, P Valiant Electronic Colloquium on Computational Complexity (ECCC) 17 (179), 9, 2010 | 104 | 2010 |
Finding correlations in subquadratic time, with applications to learning parities and the closest pair problem G Valiant Journal of the ACM (JACM) 62 (2), 1-45, 2015 | 97 | 2015 |
Testing k-Modal Distributions: Optimal Algorithms via Reductions C Daskalakis, I Diakonikolas, RA Servedio, G Valiant, P Valiant Proceedings of the twenty-fourth annual ACM-SIAM symposium on Discrete …, 2013 | 87 | 2013 |