Articles with public access mandates - Shubhendu TrivediLearn more
Available somewhere: 8
On the generalization of equivariance and convolution in neural networks to the action of compact groups
R Kondor, S Trivedi
International Conference on Machine Learning, 2747-2755, 2018
Mandates: US Department of Defense
Predicting molecular properties with covariant compositional networks
TS Hy, S Trivedi, H Pan, BM Anderson, R Kondor
The Journal of Chemical Physics 148 (24), 241745, 2018
Mandates: US Department of Defense
DeepCMB: Lensing reconstruction of the cosmic microwave background with deep neural networks
J Caldeira, WLK Wu, B Nord, C Avestruz, S Trivedi, KT Story
Astronomy and Computing 28, 100307, 2019
Mandates: US National Science Foundation, US Department of Energy
Deep learning for automated classification and characterization of amorphous materials
K Swanson, S Trivedi, J Lequieu, K Swanson, R Kondor
Soft Matter, The Royal Society of Chemistry, 2020
Mandates: US National Science Foundation, US Department of Defense
Locally Valid and Discriminative Prediction Intervals for Deep Learning Models
Z Lin, S Trivedi, J Sun
Advances in Neural Information Processing Systems 34, 8378--8391, 2021
Mandates: US National Science Foundation, US National Institutes of Health
DeepSZ: Identification of Sunyaev-Zel'dovich Galaxy Clusters using Deep Learning
Z Lin, N Huang, C Avestruz, WL Wu, S Trivedi, J Caldeira, B Nord
Monthly Notices of the Royal Astronomical Society 507 (3), 4149–4164, 2021
Mandates: US National Science Foundation, US Department of Energy
Conformal Prediction with Temporal Quantile Adjustments
Z Lin, S Trivedi, J Sun
Advances in Neural Information Processing Systems 35, 31017--31030, 2022
Mandates: US National Science Foundation, US National Institutes of Health
Fast Online Value-Maximizing Prediction Sets with Conformal Cost Control
Z Lin, S Trivedi, C Xiao, J Sun
International Conference on Machine Learning 202, 21182-21203, 2023
Mandates: US National Science Foundation, US National Institutes of Health
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