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Incremental Mining of Across-streams Sequential Patterns in Multiple Data Streams

机译:在多个数据流中的跨流逐行序列的增量挖掘

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—Sequential pattern mining is the mining of data sequences for frequent sequential patterns with time sequence, which has a wide application. Data streams are streams of data that arrive at high speed. Due to the limitation of memory capacity and the need of real-time mining, the results of mining need to be updated in real time. Multiple data streams are the simultaneous arrival of a plurality of data streams, for which a much larger amount of data needs to be processed. Due to the inapplicability of traditional sequential pattern mining techniques, sequential pattern mining in multiple data streams has become an important research issue. Previous research can only handle a single item at a time and hence is incapable of coping with the changing environment of multiple data streams. In this paper, therefore, we propose the IAspam algorithm that not only can handle a set of items at a time but also can incrementally mine across-streams sequential patterns. In the process, stream data are converted into bitmap representation for mining. Experimental results show that the IAspam algorithm is effective in execution time when processing large amounts of stream data.
机译:- 顺序模式挖掘是具有时间序列的频繁顺序模式的数据序列的挖掘,其具有广泛的应用。数据流是以高速到达的数据流。由于内存容量的限制和实时挖掘的需要,挖掘的结果需要实时更新。多个数据流是多个数据流的同时到达,需要处理更大的数据量。由于传统连续模式采矿技术的不适当性,多个数据流中的顺序模式挖掘已成为一个重要的研究问题。以前的研究只能一次处理单个项目,因此无法应对多个数据流的变化环境。因此,在本文中,我们提出了IASPAM算法,它不仅可以一次处理一组项目,而且可以逐步逐步地逐步逐步逐渐逐步逐步逐渐逐步地进行逐步逐步逐步地进行逐步逐步地进行逐步逐步逐步地进行逐步逐步地进行逐步逐步逐步地进行逐步逐步地进行逐步逐步逐步地进行逐步逐步逐步地进行逐步逐步逐步地进行逐步逐步逐步地进行逐步逐步地进行逐步逐步地进行逐步逐步地进行逐步逐步地进行逐步逐步逐步地进行挖掘。在该过程中,流数据被转换为挖掘的位图表示。实验结果表明,在处理大量流数据时,IASPAM算法在执行时间方面是有效的。

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