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Pattern Detection with Rare Item-set Mining

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arxiv 1209.3089 v1 pith:OTBD5CNO submitted 2012-09-14 cs.SE cs.DB

Pattern Detection with Rare Item-set Mining

classification cs.SE cs.DB
keywords miningpatternsdatadiscoveryrareitem-setknownnon-present
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The discovery of new and interesting patterns in large datasets, known as data mining, draws more and more interest as the quantities of available data are exploding. Data mining techniques may be applied to different domains and fields such as computer science, health sector, insurances, homeland security, banking and finance, etc. In this paper we are interested by the discovery of a specific category of patterns, known as rare and non-present patterns. We present a novel approach towards the discovery of non-present patterns using rare item-set mining.

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