\delta-Tolerance Closed Frequent Itemsets

James Cheng, Yiping Ke, Wilfred Ng
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引用次数: 47

Abstract

In this paper, we study an inherent problem of mining frequent itemsets (FIs): the number of FIs mined is often too large. The large number of FIs not only affects the mining performance, but also severely thwarts the application of FI mining. In the literature, Closed FIs (CFIs) and Maximal FIs (MFIs) are proposed as concise representations of FIs. However, the number of CFIs is still too large in many cases, while MFIs lose information about the frequency of the FIs. To address this problem, we relax the restrictive definition of CFIs and propose the (delta-Tolerance CFIs delta- TCFIs). Mining delta-TCFIs recursively removes all subsets of a delta-TCFI that fall within a frequency distance bounded by delta. We propose two algorithms, CFI2TCFI and MineTCFI, to mine delta-TCFIs. CFI2TCFI achieves very high accuracy on the estimated frequency of the recovered FIs but is less efficient when the number of CFIs is large, since it is based on CFI mining. MineTCFI is significantly faster and consumes less memory than the algorithms of the state-of-the-art concise representations of FIs, while the accuracy of MineTCFI is only slightly lower than that of CFI2TCFI.
\delta公差闭频繁项集
本文研究了频繁项集挖掘的一个固有问题:频繁项集挖掘的数量往往太大。大量的FI不仅影响了挖掘性能,而且严重阻碍了FI挖掘的应用。在文献中,封闭式金融机构(CFIs)和最大金融机构(mfi)被提出作为金融机构的简明表示。然而,在许多情况下,金融服务机构的数量仍然过多,而小额信贷机构则失去了有关金融服务机构频率的信息。为了解决这一问题,我们放宽了cfi的限制性定义,提出了(delta- tolerance) cfi (delta- tcfi)。挖掘delta- tcfi递归地去除delta- tcfi的所有子集,这些子集落在delta限定的频率距离内。我们提出了CFI2TCFI和MineTCFI两种算法来挖掘delta- tcfi。CFI2TCFI对恢复的fi的估计频率达到了非常高的准确性,但当CFI数量很大时效率较低,因为它是基于CFI挖掘的。MineTCFI比最先进的fi简洁表示算法要快得多,消耗的内存也少得多,而MineTCFI的精度仅略低于CFI2TCFI。
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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