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Latent Outlier Exposure for Anomaly Detection with Contaminated Data
[article]
2022
Anomaly detection aims at identifying data points that show systematic deviations from the majority of data in an unlabeled dataset. A common assumption is that clean training data (free of anomalies) is available, which is often violated in practice. We propose a strategy for training an anomaly detector in the presence of unlabeled anomalies that is compatible with a broad class of models. The idea is to jointly infer binary labels to each datum (normal vs. anomalous) while updating the model
doi:10.48550/arxiv.2202.08088
fatcat:4vifbudbz5hgbpjzphlyphpfhq