Publication | Open Access
Subspace Inference for Bayesian Deep Learning
19
Citations
41
References
2019
Year
Geometric LearningBayesian StatisticParameter SpaceEngineeringMachine LearningBayesian InferenceHyperparameter EstimationData ScienceBayesian ModelGenerative ModelRobot LearningSupervised LearningComputer ScienceMedical Image ComputingDeep LearningComputer VisionBayesian StatisticsSubspace InferenceParameter TuningFull Parameter SpaceStatistical Inference
Bayesian inference was once a gold standard for learning with neural networks, providing accurate full predictive distributions and well calibrated uncertainty. However, scaling Bayesian inference techniques to deep neural networks is challenging due to the high dimensionality of the parameter space. In this paper, we construct low-dimensional subspaces of parameter space, such as the first principal components of the stochastic gradient descent (SGD) trajectory, which contain diverse sets of high performing models. In these subspaces, we are able to apply elliptical slice sampling and variational inference, which struggle in the full parameter space. We show that Bayesian model averaging over the induced posterior in these subspaces produces accurate predictions and well calibrated predictive uncertainty for both regression and image classification.
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