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Out of Distribution Data Detection Using Dropout Bayesian Neural Networks

18 February 2022
A. Nguyen
Fred Lu
Gary Lopez Munoz
Edward Raff
Charles K. Nicholas
James Holt
    UQCV
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Abstract

We explore the utility of information contained within a dropout based Bayesian neural network (BNN) for the task of detecting out of distribution (OOD) data. We first show how previous attempts to leverage the randomized embeddings induced by the intermediate layers of a dropout BNN can fail due to the distance metric used. We introduce an alternative approach to measuring embedding uncertainty, justify its use theoretically, and demonstrate how incorporating embedding uncertainty improves OOD data identification across three tasks: image classification, language classification, and malware detection.

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