On the opportunities and risks of foundation models R Bommasani, DA Hudson, E Adeli, R Altman, S Arora, S von Arx, ... arXiv preprint arXiv:2108.07258, 2021 | 2730 | 2021 |
Stanford alpaca: An instruction-following llama model R Taori, I Gulrajani, T Zhang, Y Dubois, X Li, C Guestrin, P Liang, ... | 1546* | 2023 |
Emergent abilities of large language models J Wei, Y Tay, R Bommasani, C Raffel, B Zoph, S Borgeaud, D Yogatama, ... arXiv preprint arXiv:2206.07682, 2022 | 1403 | 2022 |
Distributionally robust neural networks for group shifts: On the importance of regularization for worst-case generalization S Sagawa, PW Koh, TB Hashimoto, P Liang arXiv preprint arXiv:1911.08731, 2019 | 1399 | 2019 |
Holistic evaluation of language models P Liang, R Bommasani, T Lee, D Tsipras, D Soylu, M Yasunaga, Y Zhang, ... arXiv preprint arXiv:2211.09110, 2022 | 605 | 2022 |
Fairness without demographics in repeated loss minimization T Hashimoto, M Srivastava, H Namkoong, P Liang International Conference on Machine Learning, 1929-1938, 2018 | 580 | 2018 |
Discovery of directional and nondirectional pioneer transcription factors by modeling DNase profile magnitude and shape RI Sherwood, T Hashimoto, CW O'donnell, S Lewis, AA Barkal, ... Nature biotechnology 32 (2), 171-178, 2014 | 488 | 2014 |
Diffusion-lm improves controllable text generation X Li, J Thickstun, I Gulrajani, PS Liang, TB Hashimoto Advances in Neural Information Processing Systems 35, 4328-4343, 2022 | 420 | 2022 |
Generating sentences by editing prototypes K Guu, TB Hashimoto, Y Oren, P Liang Transactions of the Association for Computational Linguistics 6, 437-450, 2018 | 355 | 2018 |
Large language models can be strong differentially private learners X Li, F Tramer, P Liang, T Hashimoto arXiv preprint arXiv:2110.05679, 2021 | 229 | 2021 |
Unifying human and statistical evaluation for natural language generation TB Hashimoto, H Zhang, P Liang arXiv preprint arXiv:1904.02792, 2019 | 223 | 2019 |
Alpacaeval: An automatic evaluator of instruction-following models X Li, T Zhang, Y Dubois, R Taori, I Gulrajani, C Guestrin, P Liang, ... | 176 | 2023 |
Alpacafarm: A simulation framework for methods that learn from human feedback Y Dubois, CX Li, R Taori, T Zhang, I Gulrajani, J Ba, C Guestrin, PS Liang, ... Advances in Neural Information Processing Systems 36, 2024 | 169 | 2024 |
Benchmarking large language models for news summarization T Zhang, F Ladhak, E Durmus, P Liang, K McKeown, TB Hashimoto Transactions of the Association for Computational Linguistics 12, 39-57, 2024 | 169 | 2024 |
A retrieve-and-edit framework for predicting structured outputs TB Hashimoto, K Guu, Y Oren, PS Liang Advances in Neural Information Processing Systems 31, 2018 | 165 | 2018 |
Distributionally robust language modeling Y Oren, S Sagawa, TB Hashimoto, P Liang arXiv preprint arXiv:1909.02060, 2019 | 159 | 2019 |
Whose opinions do language models reflect? S Santurkar, E Durmus, F Ladhak, C Lee, P Liang, T Hashimoto International Conference on Machine Learning, 29971-30004, 2023 | 141 | 2023 |
The gem benchmark: Natural language generation, its evaluation and metrics S Gehrmann, T Adewumi, K Aggarwal, PS Ammanamanchi, ... arXiv preprint arXiv:2102.01672, 2021 | 132 | 2021 |
Jury learning: Integrating dissenting voices into machine learning models ML Gordon, MS Lam, JS Park, K Patel, J Hancock, T Hashimoto, ... Proceedings of the 2022 CHI Conference on Human Factors in Computing Systems …, 2022 | 131 | 2022 |
Easily accessible text-to-image generation amplifies demographic stereotypes at large scale F Bianchi, P Kalluri, E Durmus, F Ladhak, M Cheng, D Nozza, ... Proceedings of the 2023 ACM Conference on Fairness, Accountability, and …, 2023 | 126 | 2023 |