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Tamara Broderick

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Consistent Validation for Predictive Methods in Spatial Settings

Feb 05, 2024
David R. Burt, Yunyi Shen, Tamara Broderick

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Black Box Variational Inference with a Deterministic Objective: Faster, More Accurate, and Even More Black Box

Apr 11, 2023
Ryan Giordano, Martin Ingram, Tamara Broderick

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Gaussian processes at the Helm(holtz): A more fluid model for ocean currents

Feb 20, 2023
Renato Berlinghieri, Brian L. Trippe, David R. Burt, Ryan Giordano, Kaushik Srinivasan, Tamay Özgökmen, Junfei Xia, Tamara Broderick

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Are you using test log-likelihood correctly?

Dec 01, 2022
Sameer K. Deshpande, Soumya Ghosh, Tin D. Nguyen, Tamara Broderick

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Developing a Series of AI Challenges for the United States Department of the Air Force

Jul 14, 2022
Vijay Gadepally, Gregory Angelides, Andrei Barbu, Andrew Bowne, Laura J. Brattain, Tamara Broderick, Armando Cabrera, Glenn Carl, Ronisha Carter, Miriam Cha, Emilie Cowen, Jesse Cummings, Bill Freeman, James Glass, Sam Goldberg, Mark Hamilton, Thomas Heldt, Kuan Wei Huang, Phillip Isola, Boris Katz, Jamie Koerner, Yen-Chen Lin, David Mayo, Kyle McAlpin, Taylor Perron, Jean Piou, Hrishikesh M. Rao, Hayley Reynolds, Kaira Samuel, Siddharth Samsi, Morgan Schmidt, Leslie Shing, Olga Simek, Brandon Swenson, Vivienne Sze, Jonathan Taylor, Paul Tylkin, Mark Veillette, Matthew L Weiss, Allan Wollaber, Sophia Yuditskaya, Jeremy Kepner

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Diffusion probabilistic modeling of protein backbones in 3D for the motif-scaffolding problem

Jun 08, 2022
Brian L. Trippe, Jason Yim, Doug Tischer, Tamara Broderick, David Baker, Regina Barzilay, Tommi Jaakkola

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Many processors, little time: MCMC for partitions via optimal transport couplings

Feb 23, 2022
Tin D. Nguyen, Brian L. Trippe, Tamara Broderick

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Toward a Taxonomy of Trust for Probabilistic Machine Learning

Dec 05, 2021
Tamara Broderick, Andrew Gelman, Rachael Meager, Anna L. Smith, Tian Zheng

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Can we globally optimize cross-validation loss? Quasiconvexity in ridge regression

Jul 19, 2021
William T. Stephenson, Zachary Frangella, Madeleine Udell, Tamara Broderick

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For high-dimensional hierarchical models, consider exchangeability of effects across covariates instead of across datasets

Jul 13, 2021
Brian L. Trippe, Hilary K. Finucane, Tamara Broderick

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