FT_HTlist: A fault-tolerant frequent itemset mining algorithm based on the linear table

Xingyue Li, Jun Lu
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Abstract

This paper proposes a fault-tolerant frequent itemset mining algorithm (FT_HTlist) based on the linear table when the fault-tolerance is 1. The algorithm uses the method of concatenating 1 in the highest bit of the binary number of the known fault-tolerant frequent patterns to generate the candidate fault_tolerant patterns, called FT_Candidate. The algorithm is based on the data structure of the linear table for fault-tolerant frequent itemset mining. This method does not need recursion, so it reduces the consumption of mining space. At the same time, the paper proposed a deduplication algorithm to remove the support for repeat calculations. So the algorithm has a strong advantage in spatial performance. In addition, the algorithm only needs to mine two horizontal chains of the FT_Candidate, thus reducing the consumption of mining time. Finally, the paper shows the time performance and space performance of the proposed algorithm under sparse datasets and dense datasets. The results show that our algorithm has better mining time than other algorithms, and the horizontal chain reduces the memory occupation of the algorithm.
FT_HTlist:基于线性表的容错频繁项集挖掘算法
本文提出了一种容错率为 1 时基于线性表的容错频繁项集挖掘算法(FT_HTlist)。该算法采用在已知容错频繁模式的二进制数的最高位连1的方法生成候选容错模式,称为 FT_Candidate。该算法基于线性表的数据结构,用于容错频繁项集挖掘。该方法不需要递归,因此减少了挖掘空间的消耗。同时,本文提出了一种重复数据删除算法,以消除对重复计算的支持。因此,该算法在空间性能上具有很强的优势。此外,该算法只需挖掘 FT_Candidate 的两条水平链,从而减少了挖掘时间的消耗。最后,本文展示了所提算法在稀疏数据集和密集数据集下的时间性能和空间性能。结果表明,我们的算法比其他算法有更好的挖掘时间,而且水平链减少了算法的内存占用。
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