Publication | Open Access
Mining quantitative association rules in large relational tables
1.5K
Citations
13
References
1996
Year
Unknown Venue
Partial CompletenessEngineeringInformation RetrievalFrequent Pattern MiningData MiningData ScienceRule InductionAssociation RuleKnowledge DiscoveryPattern MiningStructure MiningComputer ScienceQuantitative AttributesLarge Relational TablesStatisticsText MiningData Modeling
We introduce the problem of mining association rules in large relational tables containing both quantitative and categorical attributes. An example of such an association might be "10% of married people between age 50 and 60 have at least 2 cars". We deal with quantitative attributes by fine-partitioning the values of the attribute and then combining adjacent partitions as necessary. We introduce measures of partial completeness which quantify the information lost due to partitioning. A direct application of this technique can generate too many similar rules. We tackle this problem by using a "greater-than-expected-value" interest measure to identify the interesting rules in the output. We give an algorithm for mining such quantitative association rules. Finally, we describe the results of using this approach on a real-life dataset.
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