Systematic construction of anomaly detection benchmarks from real data

Published: Aug 11, 2013
Abstract
Research in anomaly detection suffers from a lack of realistic and publicly-available problem sets. This paper discusses what properties such problem sets should possess. It then introduces a methodology for transforming existing classification data sets into ground-truthed benchmark data sets for anomaly detection. The methodology produces data sets that vary along three important dimensions: (a) point difficulty, (b) relative frequency of...
Paper Details
Title
Systematic construction of anomaly detection benchmarks from real data
Published Date
Aug 11, 2013
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