Business Applications and Computational Intelligence 2006
DOI: 10.4018/978-1-59140-702-7.ch013
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Visual Grouping of Association Rules by Clustering Conditional Probabilities for Categorical Data

Abstract: We demonstrate the use of a visual data-mining tool for non-technical domain experts within organizations to facilitate the extraction of meaningful information and knowledge from in-house databases. The tool is mainly based on the basic notion of grouping association rules. Association rules are useful in discovering items that are frequently found together. However in many applications, rules with lower frequencies are often interesting for the user. Grouping of association rules is one way to overcome the r… Show more

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