哪些斯宾纳家庭概念类易于枚举?

Atsuyoshi Nakamura, Mineichi Kudo
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引用次数: 3

摘要

利用子概念查询研究了Sperner族概念类中概念的枚举问题,这是一个以最大频繁项集挖掘为实例的一般问题。尽管在最坏的情况下,即使是理论上最知名的算法也需要准多项式时间来解决这个问题,但实际上存在快速的算法来解决这个问题。这是因为在现实世界中,这个问题的许多实例在某些方面具有较低的复杂性。本文利用Sperner族概念类的交闭包的VC维及其特征维来表征其复杂度,并利用VC维来分析其概念枚举问题的最坏情况时间复杂度。我们还通过使用与引入的两个度量密切相关的新算法计算一些真实数据集的VC维,证明了数据挖掘中使用的真实数据的VC维实际上很小,这不仅解决了问题,而且让我们知道了目标概念类的相交闭包的VC维。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What Sperner Family Concept Class is Easy to Be Enumerated?
We study the problem of enumerating concepts in a Sperner family concept class using subconcept queries, which is a general problem including maximal frequent itemset mining as its instance. Though even the theoretically best known algorithm needs quasi-polynomial time to solve this problem in the worst case, there exist practically fast algorithms for this problem. This is because many instances of this problem in real world have low complexity in some measures. In this paper, we characterize the complexity of Sperner family concept class by the VC dimension of its intersection closure and its characteristic dimension, and analyze the worst case time complexity on the enumeration problem of its concepts in terms of the VC dimension. We also showed that the VC dimension of real data used in data mining is actually small by calculating the VC dimension of some real datasets using a new algorithm closely related to the introduced two measures, which does not only solve the problem but also let us know the VC dimension of the intersection closure of the target concept class.
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