寻找子抽样下的鲁棒项集

Nikolaj Tatti, Fabian Moerchen
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引用次数: 17

摘要

频繁模式的挖掘受到模式爆炸问题的困扰,这使得模式约简技术成为模式挖掘的一个关键挑战。本文提出了一种新的模式约简理论框架。我们通过测量项目集的属性(如闭性或不可导性)的鲁棒性来做到这一点。属性的鲁棒性是指该属性在原始数据的随机子集上保持不变的概率。我们研究了四种性质:封闭、自由、不可导和完全破碎的项目集,证明了我们如何在不实际采样数据的情况下分析计算鲁棒性。我们的鲁棒性概念有许多优点:与减少模式的统计方法不同,我们不假设零假设或任何噪声模型,报告的模式只是具有此属性的所有模式的子集,而不是具有此属性的近似模式。如果底层属性是单调的,那么度量也是单调的,允许我们有效地挖掘鲁棒项集。我们进一步推导了一种无参数技术,用于对项目集进行排序,可用于top-k方法。我们的实验表明,我们可以成功地使用鲁棒性度量来减少模式的数量,并且排序产生有趣的项集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding Robust Itemsets under Subsampling
Mining frequent patterns is plagued by the problem of pattern explosion making pattern reduction techniques a key challenge in pattern mining. In this paper we propose a novel theoretical framework for pattern reduction. We do this by measuring the robustness of a property of an item set such as closed ness or non-derivability. The robustness of a property is the probability that this property holds on random subsets of the original data. We study four properties: closed, free, non-derivable and totally shattered item sets, demonstrating how we can compute the robustness analytically without actually sampling the data. Our concept of robustness has many advantages: Unlike statistical approaches for reducing patterns, we do not assume a null hypothesis or any noise model and the patterns reported are simply a subset of all patterns with this property as opposed to approximate patterns for which the property does not really hold. If the underlying property is monotonic, then the measure is also monotonic, allowing us to efficiently mine robust item sets. We further derive a parameter-free technique for ranking item sets that can be used for top-k approaches. Our experiments demonstrate that we can successfully use the robustness measure to reduce the number of patterns and that ranking yields interesting itemsets.
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