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Maximal Association Rules: a New Tool for Mining for Keyword cooccurrences in Document Collections

机译:最大关联规则:在文档集合中挖掘关键字Cooccurrences的新工具

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Knowledge Discovery in Databases (KDD) focuses on the computerized exploration of large amounts of data and on the discovery of interesting patterns within them. While most work on KDD has been concerned with structured databases, there has been little work on handling the huge amount of information that is available only in unstructured document collections. This paper describes a new method for computing co-occurrence frequencies of the various keywords labeling the documents. This method is based on computing maximal association rules. Regular associations are based on the notion of frequent sets: sets of attributes, which appear in many records. In analogy, maximal associations are based on the notion of frequent maximal sets. Conceptually, a frequent maximal set is a set of attributes, which appear alone, or maximally, in many records. For the definition of "maximality" we use an underlying taxonomy, T, of the attributes. This allows us to obtain the "interesting" correlations between attributes from different categories. Frequent maximal sets are useful for efficiently finding association rules that include negated attributes. We provide an experimental evaluation of our methodology on the Reuters-21578 document collection.
机译:数据库中的知识发现(KDD)侧重于大量数据的计算机化探索以及在它们内部发现有趣的模式。虽然大多数对KDD的工作都涉及结构化数据库,但在处理仅在非结构化文件集合中可用的大量信息几乎没有工作。本文介绍了用于计算标记文档的各种关键字的共出频率的新方法。该方法基于计算最大关联规则。常规关联基于频繁设置的概念:属性集,它出现在许多记录中。在类比中,最大关联基于频繁的最大集的概念。概念上,频繁的最大集合是一组属性,它们在许多记录中单独出现或最大程度地出现。对于“最大”的定义,我们使用属性的底层分类法,T。这允许我们在不同类别之间获得“有趣”相关性。频繁的最大集可用于有效地查找包含否定属性的关联规则。我们在REUTERS-21578文件集合中提供了对方法的实验评估。

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