Feb. 7, 2024, 5:42 a.m. | Jose Cribeiro-Ramallo Vadim Arzamasov Klemens B\"ohm

cs.LG updates on arXiv.org arxiv.org

Outlier generation is a popular technique used for solving important outlier detection tasks. Generating outliers with realistic behavior is challenging. Popular existing methods tend to disregard the 'multiple views' property of outliers in high-dimensional spaces. The only existing method accounting for this property falls short in efficiency and effectiveness. We propose BISECT, a new outlier generation method that creates realistic outliers mimicking said property. To do so, BISECT employs a novel proposition introduced in this article stating how to efficiently …

accounting behavior cs.lg detection efficiency hidden multiple outlier outliers popular property spaces tasks

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