2022
DOI: 10.1109/access.2022.3168003
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A Generative Approach to Open Set Recognition Using Distance-Based Probabilistic Anomaly Augmentation

Abstract: Machine learning (ML) algorithms that are used in decision support (DS) and autonomous systems commonly train on labeled categorical samples from a closed set. This, however, poses a problem for deployed DS and autonomous systems when they encounter an anomalous pattern that did not originate from the closed set distribution used for training. In this case, the ML algorithm that was trained only on closed set samples may erroneously identify an anomalous pattern as having originated from one of the categories … Show more

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Cited by 4 publications
(1 citation statement)
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“…[17] used sequence-based n-grams to generate characteristics of the histogram format and detected unknown attacks through similarity measurement and outlier detection. More recently, [18] generated an unknown attack through a generative model, allowing data other than normal and known attacks to be detected as unknown attacks. [19] performed classification via OSR and clustering based on classified labels to detect unknown attacks.…”
Section: B Unknown Attack Detectionmentioning
confidence: 99%
“…[17] used sequence-based n-grams to generate characteristics of the histogram format and detected unknown attacks through similarity measurement and outlier detection. More recently, [18] generated an unknown attack through a generative model, allowing data other than normal and known attacks to be detected as unknown attacks. [19] performed classification via OSR and clustering based on classified labels to detect unknown attacks.…”
Section: B Unknown Attack Detectionmentioning
confidence: 99%