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Detecting Semantic Anomalies

Faruk Ahmed, Aaron Courville

202055 citationsDOI

Abstract

We critically appraise the recent interest in out-of-distribution (OOD) detection and question the practical relevance of existing benchmarks. While the currently prevalent trend is to consider different datasets as OOD, we argue that out-distributions of practical interest are ones where the distinction is semantic in nature for a specified context, and that evaluative tasks should reflect this more closely. Assuming a context of object recognition, we recommend a set of benchmarks, motivated by practical applications. We make progress on these benchmarks by exploring a multi-task learning based approach, showing that auxiliary objectives for improved semantic awareness result in improved semantic anomaly detection, with accompanying generalization benefits.

Topics & Concepts

Computer scienceGeneralizationRelevance (law)Context (archaeology)Task (project management)Anomaly detectionSet (abstract data type)Artificial intelligenceNatural language processingObject (grammar)Machine learningData scienceInformation retrievalProgramming languageEpistemologyManagementPaleontologyPolitical sciencePhilosophyBiologyEconomicsLawAnomaly Detection Techniques and ApplicationsAdversarial Robustness in Machine LearningNetwork Security and Intrusion Detection
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