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UDS-FIM: An Efficient Algorithm of Frequent Itemsets Mining over Uncertain Transaction Data Streams

机译:UDS-FIM:不确定交易数据流上频繁项集挖掘的高效算法

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In this paper, we study the problem of finding frequent itemsets from uncertain data streams. To the best of our knowledge, the existing algorithms cannot compress transaction itemsets to a tree as compact as the classical FPTree, thus they need much time and memory space to process the tree. To address this issue, we propose an algorithm UDS-FIM and a tree structure UDS-Tree. Firstly, UDS-FIM maintains probability values of each transactions to an array; secondly, compresses each transaction to a UDS-Tree in the same manner as an FP-Tree (so it is as compact as an FP-Tree) and maintains index of probability values of each transaction in the array to the corresponding tail-nodes; lastly, it mines frequent itemsets from the UDSTree without additional scan of transactions. The experimental results show that UDS-FIM has achieved a good performance under different experimental conditions in terms of runtime and memory consumption.
机译:在本文中,我们研究了从不确定的数据流中查找频繁项集的问题。据我们所知,现有算法无法将事务项集压缩到像传统FPTree一样紧凑的树上,因此它们需要大量时间和内存空间来处理树。为了解决这个问题,我们提出了一种算法UDS-FIM和树结构UDS-Tree。首先,UDS-FIM将每个交易的概率值维护到一个数组中;其次,以与FP-Tree相同的方式将每个事务压缩到UDS-Tree(因此它与FP-Tree一样紧凑),并维护数组中每个事务的概率值索引到相应的尾节点。最后,它从UDSTree挖掘频繁的项目集,而无需进行其他交易扫描。实验结果表明,在运行时间和内存消耗方面,UDS-FIM在不同的实验条件下均具有良好的性能。

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