DOI:​10.1016/j.eswa.2010.06.060
Corpus ID: 5145137
Multi objective association rule mining with genetic algorithm without specifying minimum support and minimum confidence
Hamid Reza Qodmanan, M. Nasiri, B. Minaei-Bidgoli
Published 2011
Computer Science

Expert Syst. Appl.
Multi objective processing can be leveraged for mining the association rules. This paper discusses the application of multi objective genetic algorithm to association rule mining. We focus our… Expand
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132 Citations
Highly Influential Citations
12
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41
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30
Results Citations
2
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Genetic algorithm
Association rule learning
Fitness function
Algorithmic efficiency
Text mining
Data mining
Computer engineering
Maxima and minima
Experiment
List of algorithms
Best practice
132 Citations
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