Mining Maximum Length Frequent Itemsets: A Summary of Results

Tianming Hu, Qian Fu, Xiaonan Wang, S. Sung
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引用次数: 2

Abstract

The use of frequent itemsets has been limited by the high computational cost as well as the large number of resulting itemsets. In many real-world scenarios, however, it is often sufficient to mine a small representative subset of frequent itemsets with low computational cost. To that end, in this paper, we define a new problem of finding the frequent itemsets with a maximum length and present a novel algorithm to solve this problem. Indeed, maximum length frequent itemsets can be efficiently identified in very large data sets and are useful in many application domains. Our algorithm generates the maximum length frequent itemsets by adapting a pattern fragment growth methodology based on the FP-tree structure. Also, a number of optimization techniques have been exploited to prune the search space. Our experimental results show that our algorithm is very efficient and scalable
挖掘最大长度频繁项集:结果摘要
频繁项集的使用受到高计算成本和大量结果项集的限制。然而,在许多实际场景中,以较低的计算成本挖掘频繁项集的一个具有代表性的小子集通常就足够了。为此,本文定义了一个寻找最大长度频繁项集的新问题,并提出了一种求解该问题的新算法。事实上,最大长度频繁项集可以在非常大的数据集中有效地识别,并且在许多应用领域都很有用。该算法采用基于FP-tree结构的模式片段增长方法生成最大长度的频繁项集。此外,许多优化技术已经被用来精简搜索空间。实验结果表明,该算法具有很高的效率和可扩展性
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