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New Policy of Maximal Frequent Itemsets in Data Stream Mining

机译:数据流挖掘中最大频繁项集的新策略

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According to the features of data streams and combined sliding window, a new algorithm A-MFI which is based on self-adjusting and orderly-compound policy for mining maximal frequent itemsets in data stream is proposed. This algorithm which is based on basic window updates information from data stream flow fragments and scans the stream only once to gain and store it in frequent itemsets list when the data stream flows. The core idea of this algorithm: construct self-adjusting and orderly-compound FPtree, use mixed subset pruning techniques to reduce the search space, merge nodes which has equal minsup in the same branch and compress to generate the orderly-compound FP-tree to avoid superset checking when mining maximal frequent itemsets. The experimental results show that the algorithm has higher efficiency in time and space, and also has good scalability.
机译:根据数据流和组合滑动窗口的特点,提出了一种基于自调整和有序复合策略的新算法A-MFI,用于挖掘数据流中最大频繁项集。这种基于基本窗口的算法会更新数据流流片段中的信息,并且仅扫描一次该流,以获取数据流并将其存储在频繁项集列表中。该算法的核心思想是:构造自调整和有序复合的FPtree,使用混合子集修剪技术来减少搜索空间,合并在同一分支中具有相等minsup的节点,然后压缩以生成有序复合的FP-tree。挖掘最大频繁项集时,避免超集检查。实验结果表明,该算法在时间和空间上具有较高的效率,并且具有良好的可扩展性。

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