User-directed exploration of mining space with multiple attributes

Chang-Shing Perng, Haixun Wang, Sheng Ma, J. Hellerstein
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引用次数: 3

Abstract

There has been a growing interest in mining frequent itemsets in relational data with multiple attributes. A key step in this approach is to select a set of attributes that group data into transactions and a separate set of attributes that labels data into items. Unsupervised and unrestricted mining, however is stymied by the combinatorial complexity and the quantity of patterns as the number of attributes grows. In this paper we focus on leveraging the semantics of the underlying data for mining frequent itemsets. For instance, there are usually taxonomies in the data schema and functional dependencies among the attributes. Domain knowledge and user preferences often have the potential to significantly reduce the exponentially growing mining space. These observations motivate the design of a user-directed data mining framework that allows such domain knowledge to guide the mining process and control the mining strategy. We show examples of tremendous reduction in computation by using domain knowledge in mining relational data with multiple attributes.
用户导向的多属性挖掘空间探索
人们对挖掘具有多个属性的关系数据中的频繁项集越来越感兴趣。此方法中的一个关键步骤是选择一组将数据分组为事务的属性和一组将数据标记为项的单独属性。然而,随着属性数量的增加,组合的复杂性和模式的数量阻碍了无监督和无限制的挖掘。在本文中,我们着重于利用底层数据的语义来挖掘频繁项集。例如,数据模式中通常有分类法,属性之间通常有功能依赖关系。领域知识和用户偏好通常有可能显著减少呈指数增长的挖掘空间。这些观察激发了用户导向数据挖掘框架的设计,该框架允许这些领域知识指导挖掘过程并控制挖掘策略。我们展示了在挖掘具有多个属性的关系数据时使用领域知识大大减少计算量的例子。
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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