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Label Smoothed Embedding Hypothesis for Out-of-Distribution Detection

9 February 2021
Dara Bahri
Heinrich Jiang
Yi Tay
Donald Metzler
    OODD
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Abstract

Detecting out-of-distribution (OOD) examples is critical in many applications. We propose an unsupervised method to detect OOD samples using a kkk-NN density estimate with respect to a classification model's intermediate activations on in-distribution samples. We leverage a recent insight about label smoothing, which we call the \emph{Label Smoothed Embedding Hypothesis}, and show that one of the implications is that the kkk-NN density estimator performs better as an OOD detection method both theoretically and empirically when the model is trained with label smoothing. Finally, we show that our proposal outperforms many OOD baselines and also provide new finite-sample high-probability statistical results for kkk-NN density estimation's ability to detect OOD examples.

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