Nov. 24, 2022, 7:14 a.m. | Neil Band, Tim G. J. Rudner, Qixuan Feng, Angelos Filos, Zachary Nado, Michael W. Dusenberry, Ghassen Jerfel, Dustin Tran, Yarin Gal

stat.ML updates on arXiv.org arxiv.org

Bayesian deep learning seeks to equip deep neural networks with the ability
to precisely quantify their predictive uncertainty, and has promised to make
deep learning more reliable for safety-critical real-world applications. Yet,
existing Bayesian deep learning methods fall short of this promise; new methods
continue to be evaluated on unrealistic test beds that do not reflect the
complexities of downstream real-world tasks that would benefit most from
reliable uncertainty quantification. We propose the RETINA Benchmark, a set of
real-world tasks …

arxiv bayesian bayesian deep learning benchmarking deep learning detection

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