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Association rule mining was applied then to extract rules to characterize deviant cases. It was found that a total of ten rules could explain almost all deviant cases.
The above case studies show that delta-analysis in combination with association rule and sequence mining particularly discriminative sequence mining provide a basis for discovering patterns of activities that distinguish negative deviance from normal cases.
LAW FIRM Bakytbek Djusupbekov DEPARTMENT OF CADASTRE AND REGISTRATION OF RIGHTS ON IMMOVABLE PROPERTY Samara Dumanaeva LORENZ INTERNATIONAL LAW FIRM Asel Dzhamankulova AMERICAN BAR ASSOCIATION RULE OF LAW
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