Asymmetric LSH (ALSH) for sublinear time maximum inner product search (MIPS) A Shrivastava, P Li Advances in neural information processing systems 27, 2014 | 580 | 2014 |
Hashing algorithms for large-scale learning P Li, A Shrivastava, J Moore, A König Advances in neural information processing systems 24, 2011 | 202 | 2011 |
Deja vu: Contextual sparsity for efficient llms at inference time Z Liu, J Wang, T Dao, T Zhou, B Yuan, Z Song, A Shrivastava, C Zhang, ... International Conference on Machine Learning, 22137-22176, 2023 | 164 | 2023 |
Scalable and sustainable deep learning via randomized hashing R Spring, A Shrivastava Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge …, 2017 | 155 | 2017 |
In defense of minhash over simhash A Shrivastava, P Li Artificial Intelligence and Statistics, 886-894, 2014 | 136 | 2014 |
Improved asymmetric locality sensitive hashing (ALSH) for maximum inner product search (MIPS) A Shrivastava, P Li arXiv preprint arXiv:1410.5410, 2014 | 135 | 2014 |
Slide: In defense of smart algorithms over hardware acceleration for large-scale deep learning systems B Chen, T Medini, J Farwell, C Tai, A Shrivastava Proceedings of Machine Learning and Systems 2, 291-306, 2020 | 130 | 2020 |
Densifying one permutation hashing via rotation for fast near neighbor search A Shrivastava, P Li International Conference on Machine Learning, 557-565, 2014 | 124 | 2014 |
Learning feasibility for task and motion planning in tabletop environments AM Wells, NT Dantam, A Shrivastava, LE Kavraki IEEE robotics and automation letters 4 (2), 1255-1262, 2019 | 100 | 2019 |
Asymmetric minwise hashing for indexing binary inner products and set containment A Shrivastava, P Li Proceedings of the 24th international conference on world wide web, 981-991, 2015 | 96 | 2015 |
Extreme classification in log memory using count-min sketch: A case study of amazon search with 50m products TKR Medini, Q Huang, Y Wang, V Mohan, A Shrivastava Advances in Neural Information Processing Systems 32, 2019 | 88 | 2019 |
Scissorhands: Exploiting the persistence of importance hypothesis for llm kv cache compression at test time Z Liu, A Desai, F Liao, W Wang, V Xie, Z Xu, A Kyrillidis, A Shrivastava Advances in Neural Information Processing Systems 36, 2024 | 84 | 2024 |
Mongoose: A learnable lsh framework for efficient neural network training B Chen, Z Liu, B Peng, Z Xu, JL Li, T Dao, Z Song, A Shrivastava, C Re International Conference on Learning Representations, 2020 | 76 | 2020 |
Optimal densification for fast and accurate minwise hashing A Shrivastava International Conference on Machine Learning, 3154-3163, 2017 | 76 | 2017 |
Privacy adversarial network: representation learning for mobile data privacy S Liu, J Du, A Shrivastava, L Zhong Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous …, 2019 | 74* | 2019 |
Simple and efficient weighted minwise hashing A Shrivastava Advances in Neural Information Processing Systems, 1498-1506, 2016 | 65* | 2016 |
Improved Densification of One Permutation Hashing A Shrivastava, P Li Uncertainty In Artificial Intelligence 2014, 2014 | 63 | 2014 |
Arrays of (locality-sensitive) count estimators (ace) anomaly detection on the edge C Luo, A Shrivastava Proceedings of the 2018 World Wide Web Conference, 1439-1448, 2018 | 62 | 2018 |
Time Adaptive Sketches (Ada-Sketches) for Summarizing Data Streams A Shrivastava, AC Konig, M Bilenko Proceedings of the 2016 International Conference on Management of Data, 1417 …, 2016 | 61 | 2016 |
A new unbiased and efficient class of lsh-based samplers and estimators for partition function computation in log-linear models R Spring, A Shrivastava arXiv preprint arXiv:1703.05160, 2017 | 56 | 2017 |