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Detection of anomalous instances through dynamic feature selection analysis

机译:通过动态特征选择分析检测异常实例

摘要

This specification describes technologies relating to detecting anomalous user accounts. A computer implemented method is disclosed which evaluates an unknown status user account. The method described compares features associated with a plurality of known anomalous user accounts stored in a database to features present in the unknown account. A correlation value corresponding to the probability of a specific feature occurring in a particular anomalous user account is calculated and a dependence value corresponding to the degree of dependence between the given feature and at least one other feature is also calculated. A subset of features in the unknown account is generated comprising those features that possess a correlation value less than a threshold value and a dependence value below a maximum correlation value. A risk score for the unknown account is calculated by selecting those features from the subset that maximizes the correlation value. The unknown account is then reviewed by an account reviewer if the risk score exceeds a threshold value.
机译:本规范描述了与检测异常用户帐户有关的技术。公开了一种计算机实现的方法,该方法评估未知状态的用户帐户。所描述的方法将与存储在数据库中的多个已知的异常用户帐户相关联的特征与存在于未知帐户中的特征进行比较。计算与在特定的异常用户账户中出现特定特征的概率相对应的相关值,并且还计算与在给定特征与至少一个其他特征之间的依赖程度相对应的依赖值。生成未知账户中的特征的子集,包括具有小于阈值的相关性值和小于最大相关性值的相关性值的那些特征。通过从子集中选择那些使相关值最大化的特征来计算未知账户的风险分数。然后,如果风险分数超过阈值,则由帐户审阅者对未知帐户进行审阅。

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