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An improved algorithm with key attributes constraints for mining interesting association rules in network log

机译:一种具有关键属性约束的改进算法,用于挖掘网络日志中有趣的关联规则

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Computer logs are generated by application activities, network accesses and system audit, which are important data sources for user pattern mining, computer forensic analysis, intrusion detection analysis and outlier detection. Algorithms for mining association rule are useful methods to find interesting rules implied in large computer log data. But existing algorithms which based on confidence and support are unfit for mining computer log data, many uninteresting rules will be generated and useful rules will be shadowed. To solve this problem, the concept of key attributes of network log data is introduced, and an algorithm with key attributes constraints for mining interesting association rules in network log data is designed. Experimental result shows that the number of uninteresting rules can be reduced effectively and the validity of rules which mined are improved.
机译:计算机日志由应用程序活动,网络访问和系统审核生成,它们是用户模式挖掘,计算机取证分析,入侵检测分析和异常检测的重要数据源。挖掘关联规则的算法是查找大型计算机日志数据中隐含的有趣规则的有用方法。但是现有的基于置信度和支持度的算法不适用于挖掘计算机日志数据,将生成许多无趣的规则,而有用的规则也会被遮盖。为了解决这个问题,引入了网络日志数据关键属性的概念,设计了一种具有关键属性约束的算法,用于挖掘网络日志数据中有趣的关联规则。实验结果表明,可以有效减少无趣规则的数量,提高挖掘规则的有效性。

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