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OddBall: Spotting Anomalies in Weighted Graphs

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posted on 2011-02-01, 00:00 authored by Leman Akoglu, Mary McGlohon, Christos Faloutsos
<p>Given a large, weighted graph, how can we find anomalies? Which rules should be violated, before we label a node as an anomaly? We propose the oddball algorithm, to find such nodes. The contributions are the following: (a) we discover several new rules (power laws) in density, weights, ranks and eigenvalues that seem to govern the so-called “neighborhood sub-graphs” and we show how to use these rules for anomaly detection; (b) we carefully choose features, and design oddball, so that it is scalable and it can work un-supervised (no user-defined constants) and (c) we report experiments on many real graphs with up to <em>1.6 million</em>nodes, where oddball indeed spots unusual nodes that agree with intuition.</p>

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The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-642-19823-6_4

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2011-02-01

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