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A clustering method based on data queries and its application in database intrusion detection

机译:一种基于数据查询的聚类方法及其在数据库入侵检测中的应用

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Most of clustering methods assume that an attribute value of an object has a single value. However, in many fields, an attribute value for an object may be a set or a bag of values, such as the result set of a database query, which can be looked on as a set of attributes, whose values also can be a set or a bag of data. So the clustering problems of queries can be expressed as intersection problems of sets whose element also can be a set or a bag. The paper gives a method to compute similarity among queries and presents a cluster method based on it. The algorithm reads each query q in sequence, either assigning q to an existing cluster or creating q as a new cluster. At last, the application of the algorithm in database intrusion detection is shown and experiment results on synthetic and real data set are reported.
机译:大多数群集方法假定对象的属性值具有单个值。但是,在许多字段中,对象的属性值可以是一个设置或一袋值,例如数据库查询的结果集,可以作为一组属性浏览,其值也可以是一个集合或一袋数据。因此查询的聚类问题可以表示为组的交叉点问题,其元素也可以是集合或袋子。本文给出了一种方法来计算查询之间的相似性并提出基于它的群集方法。该算法按顺序读取每个查询Q,将Q分配给现有群集或将Q作为新群集。最后,显示了算法在数据库入侵检测中的应用,并报告了合成和实际数据集的实验结果。

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