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EFFICIENTLY MINING RECENT FREQUENT PATTERNS OVER ONLINE TRANSACTIONAL DATA STREAMS

机译:通过在线交易数据流高效地挖掘最近的模式

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摘要

Recent emerging applications, such as network traffic analysis, web click stream mining, power consumption measurement, sensor network data analysis, and dynamic tracing of stock fluctuation, call for study of a new kind of data, stream data. Many data stream management systems, prototype systems and software components have been developed to manage the streams or extract knowledge from stream data. Mining frequent patterns is a foundational job for the methods of data mining and knowledge discovery. This paper proposes an algorithm for mining the recent frequent patterns over an online data stream. This method uses RFP-tree to store compactly the recent frequent patterns of a stream. The content of each transaction is incrementally updated into the pattern tree upon its arrival by scanning the stream only once. Moreover, the strategy of conservative computation and time decaying model are used to ensure the correctness of the mining results. Finally, the performance results of extensive simulation show that our work can reduce the average processing time of stream data element and it is superior to other analogous algorithms.
机译:网络流量分析,Web点击流挖掘,功耗测量,传感器网络数据分析以及动态跟踪库存波动等最新出现的应用程序要求研究一种新型数据流数据。已经开发了许多数据流管理系统,原型系统和软件组件来管理流或从流数据中提取知识。频繁模式的挖掘是数据挖掘和知识发现方法的基础工作。本文提出了一种用于在在线数据流上挖掘最近的频繁模式的算法。此方法使用RFP树来紧凑地存储流的最近频繁模式。每个事务的内容在到达时通过仅扫描流一次将其增量更新到模式树中。此外,采用保守计算和时间衰减模型的策略来确保挖掘结果的正确性。最后,大量仿真的性能结果表明,我们的工作可以减少流数据元素的平均处理时间,并且优于其他类似算法。

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