Frequent Itemsets Mining Algorithm for Uncertain Data Streams Based on Triangular Matrix

Yang Junrui, Yang Jingyi
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Abstract

Aiming at the problem of frequent itemsets mining in uncertain data flows, this paper proposes a botm-mine for frequent itemsets mining in uncertain data flows. In this algorithm, trigonometric matrix, queue and frequent item set tree are used to construct the profile structure to store the relevant data flow information of transactions. The support degree of items $1_{-}$ and $2_{-}$ itemsets is efficiently stored in the matrix through matrix. Compared with the transaction matrix, it not only saves space, but also reduces the complexity of computing each support degree, and at the same time has better space-time efficiency.
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基于三角矩阵的不确定数据流频繁项集挖掘算法
针对不确定数据流中频繁项集的挖掘问题,提出了一种不确定数据流中频繁项集挖掘的底挖掘方法。该算法采用三角矩阵、队列和频繁项集树构造轮廓结构来存储交易的相关数据流信息。项目$1_{-}$和$2_{-}$ itemset的支持度通过矩阵有效地存储在矩阵中。与事务矩阵相比,它不仅节省了空间,而且降低了计算各个支持度的复杂度,同时具有更好的时空效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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