On Out-of-distribution Detection with Energy-based Models
On Out-of-distribution Detection with Energy-based Models
Several density estimation methods have shown to fail to detect out-of-distribution (OOD) samples by assigning higher likelihoods to anomalous data. Energy-based models (EBMs) are flexible, unnormalized density models which seem to be able to improve upon this failure mode. In this work, we provide an extensive study investigating OOD detection with EBMs trained with different approaches on tabular and image data and find that EBMs do not provide consistent advantages. We hypothesize that EBMs do not learn semantic features despite their discriminative structure similar to Normalizing Flows. To verify this hypotheses, we show that supervision and architectural restrictions improve the OOD detection of EBMs independent of the training approach.
Daniel Z¨1gner、Sven Elflein、Bertrand Charpentier、Stephan G¨1nnemann
计算技术、计算机技术
Daniel Z¨1gner,Sven Elflein,Bertrand Charpentier,Stephan G¨1nnemann.On Out-of-distribution Detection with Energy-based Models[EB/OL].(2021-07-03)[2025-07-02].https://arxiv.org/abs/2107.08785.点此复制
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