Publications de l'Institut Mathématique, Nouvelle Série Vol. 87(101), pp. 109–119 (2010) |
|
AN EFFICIENT PROCEDURE FOR MINING STATISTICALLY SIGNIFICANT FREQUENT ITEMSETSPredrag Stanisic and Savo TomovicDepartment of Mathematics and Computer Science, University of Montenegro, Podgorica, MontenegroAbstract: We suggest the original procedure for frequent itemsets generation, which is more efficient than the appropriate procedure of the well known Apriori algorithm. The correctness of the procedure is based on a special structure called Rymon tree. For its implementation, we suggest a modified sort-merge-join algorithm. Finally, we explain how the support measure, which is used in Apriori algorithm, gives statistically significant frequent itemsets. Keywords: data mining, knowledge discovery in databases, association analysis, Apriori algorithm Classification (MSC2000): 03B70; 68T27, 68Q17 Full text of the article: (for faster download, first choose a mirror)
Electronic fulltext finalized on: 20 Apr 2010. This page was last modified: 18 Jan 2016.
© 2010 Mathematical Institute of the Serbian Academy of Science and Arts
|