2022
DOI: 10.48550/arxiv.2205.09786
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Subset Node Anomaly Tracking over Large Dynamic Graphs

Xingzhi Guo,
Baojian Zhou,
Steven Skiena

Abstract: Tracking a targeted subset of nodes in an evolving graph is important for many real-world applications. Existing methods typically focus on identifying anomalous edges or finding anomaly graph snapshots in a stream way. However, edge-oriented methods cannot quantify how individual nodes change over time while others need to maintain representations of the whole graph all time, thus computationally inefficient.This paper proposes DynAnom, an efficient framework to quantify the changes and localize per-node anom… Show more

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