2021
DOI: 10.48550/arxiv.2104.01632
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Isconna: Streaming Anomaly Detection with Frequency and Patterns

Abstract: An edge stream is a common form of presentation of dynamic networks. It can evolve with time, with new types of nodes or edges being continuously added. Existing methods for anomaly detection rely on edge occurrence counts or compare pattern snippets found in historical records. In this work, we propose Isconna, which focuses on both the frequency and the pattern of edge records. The burst detection component targets anomalies between individual timestamps, while the pattern detection component highlights anom… Show more

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“…A recent study by Liu et al performs streaming anomaly detection with frequency and patterns [12]. Their work proposes online algorithms (termed as Isconna-EO and Isconna-EN) that measure the consecutive presence and absence of edge records.…”
Section: Related Workmentioning
confidence: 99%
“…A recent study by Liu et al performs streaming anomaly detection with frequency and patterns [12]. Their work proposes online algorithms (termed as Isconna-EO and Isconna-EN) that measure the consecutive presence and absence of edge records.…”
Section: Related Workmentioning
confidence: 99%