2022
DOI: 10.48550/arxiv.2206.00944
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Feature Space Particle Inference for Neural Network Ensembles

Abstract: Ensembles of deep neural networks demonstrate improved performance over single models. For enhancing the diversity of ensemble members while keeping their performance, particle-based inference methods offer a promising approach from a Bayesian perspective. However, the best way to apply these methods to neural networks is still unclear: seeking samples from the weight-space posterior suffers from inefficiency due to the overparameterization issues, while seeking samples directly from the function-space posteri… Show more

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