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Statistical Detection of Collective Data Fraud

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arxiv 2001.00688 v2 pith:TUZWR456 submitted 2020-01-03 cs.DB

Statistical Detection of Collective Data Fraud

classification cs.DB
keywords datastatisticalcollectivedivergencedetectionfeaturestechniqueadvantages
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Statistical divergence is widely applied in multimedia processing, basically due to regularity and interpretable features displayed in data. However, in a broader range of data realm, these advantages may no longer be feasible, and therefore a more general approach is required. In data detection, statistical divergence can be used as a similarity measurement based on collective features. In this paper, we present a collective detection technique based on statistical divergence. The technique extracts distribution similarities among data collections, and then uses the statistical divergence to detect collective anomalies. Evaluation shows that it is applicable in the real world.

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