MLSW

On Outlier Exposure with Generative Models, 23 Nov. 2022 (papers)
Our paper On Outlier Exposure with Generative Models has been accepted on the NeurIPS Machine Learning Safety Workshop. Abstract While Outlier Exposure reliably increases the performance of Out-of-Distribution detectors, it requires a set of available outliers during training. In this paper, we propose Generative Outlier Exposure (GOE), which alleviates the need for available outliers by using generative models to sample synthetic outliers from low-density regions of the data distribution. The …
Categories: Anomaly Detection
110 Words, Tagged with: MLSW · Generative Models · Anomaly Detection
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