Testing ising models C Daskalakis, N Dikkala, G Kamath IEEE Transactions on Information Theory 65 (11), 6829-6852, 2019 | 118 | 2019 |
Minimax estimation of conditional moment models N Dikkala, G Lewis, L Mackey, V Syrgkanis Advances in Neural Information Processing Systems 33, 12248-12262, 2020 | 116 | 2020 |
From soft classifiers to hard decisions: How fair can we be? R Canetti, A Cohen, N Dikkala, G Ramnarayan, S Scheffler, A Smith Proceedings of the conference on fairness, accountability, and transparency …, 2019 | 62 | 2019 |
Tight hardness results for maximum weight rectangles A Backurs, N Dikkala, C Tzamos arXiv preprint arXiv:1602.05837, 2016 | 59 | 2016 |
Do more negative samples necessarily hurt in contrastive learning? P Awasthi, N Dikkala, P Kamath International conference on machine learning, 1101-1116, 2022 | 43 | 2022 |
Regression from dependent observations C Daskalakis, N Dikkala, I Panageas Proceedings of the 51st Annual ACM SIGACT Symposium on Theory of Computing …, 2019 | 43 | 2019 |
Learning from weakly dependent data under dobrushin’s condition Y Dagan, C Daskalakis, N Dikkala, S Jayanti Conference on Learning Theory, 914-928, 2019 | 37 | 2019 |
Testing symmetric Markov chains from a single trajectory C Daskalakis, N Dikkala, N Gravin Conference On Learning Theory, 385-409, 2018 | 37 | 2018 |
Concentration of multilinear functions of the Ising model with applications to network data C Daskalakis, N Dikkala, G Kamath Advances in Neural Information Processing Systems 30, 2017 | 31 | 2017 |
Learning Ising models from one or multiple samples Y Dagan, C Daskalakis, N Dikkala, AV Kandiros Proceedings of the 53rd Annual ACM SIGACT Symposium on Theory of Computing …, 2021 | 24 | 2021 |
Hogwild!-gibbs can be panaccurate C Daskalakis, N Dikkala, S Jayanti Advances in Neural Information Processing Systems 31, 2018 | 19 | 2018 |
On the benefits of learning to route in mixture-of-experts models N Dikkala, N Ghosh, R Meka, R Panigrahy, N Vyas, X Wang Proceedings of the 2023 Conference on Empirical Methods in Natural Language …, 2023 | 18 | 2023 |
Logistic regression with peer-group effects via inference in higher-order Ising models C Daskalakis, N Dikkala, I Panageas International Conference on Artificial Intelligence and Statistics, 3653-3663, 2020 | 18 | 2020 |
Estimating ising models from one sample Y Dagan, C Daskalakis, N Dikkala, AV Kandiros arXiv preprint arXiv:2004.09370, 2020 | 14 | 2020 |
Statistical estimation from dependent data V Kandiros, Y Dagan, N Dikkala, S Goel, C Daskalakis International Conference on Machine Learning, 5269-5278, 2021 | 10 | 2021 |
Remi: A dataset for reasoning with multiple images M Kazemi, N Dikkala, A Anand, P Devic, I Dasgupta, F Liu, B Fatemi, ... arXiv preprint arXiv:2406.09175, 2024 | 9 | 2024 |
A theoretical view on sparsely activated networks C Baykal, N Dikkala, R Panigrahy, C Rashtchian, X Wang Advances in Neural Information Processing Systems 35, 30071-30084, 2022 | 9 | 2022 |
For manifold learning, deep neural networks can be locality sensitive hash functions N Dikkala, G Kaplun, R Panigrahy arXiv preprint arXiv:2103.06875, 2021 | 9 | 2021 |
Can Credit Increase Revenue? N Dikkala, É Tardos Web and Internet Economics: 9th International Conference, WINE 2013 …, 2013 | 8 | 2013 |
Michelangelo: Long context evaluations beyond haystacks via latent structure queries K Vodrahalli, S Ontanon, N Tripuraneni, K Xu, S Jain, R Shivanna, J Hui, ... arXiv preprint arXiv:2409.12640, 2024 | 6 | 2024 |