Digital Library
Close Browse articles from a journal
 
<< previous    next >>
     Journal description
       All volumes of the corresponding journal
         All issues of the corresponding volume
           All articles of the corresponding issues
                                       Details for article 6 of 10 found articles
 
 
  Efficient mining of maximal correlated weight frequent patterns
 
 
Title: Efficient mining of maximal correlated weight frequent patterns
Author: Yun, Unil
Ryu, Keun Ho
Appeared in: Intelligent data analysis
Paging: Volume 17 (2013) nr. 5 pages 917-939
Year: 2013-09-27
Contents: Maximal frequent pattern mining has been suggested for data mining to avoid generating a huge set of frequent patterns. Conversely, weighted frequent pattern mining has been proposed to discover important frequent patterns by considering the weighted support. We propose two mining algorithms of maximal correlated weight frequent pattern (MCWP), termed MCWP(WA) (based on Weight Ascending order) and MCWP(SD) (based on Support Descending order), to mine a compact and meaningful set of frequent patterns. MCWP(SD) obtains an advantage in conditional database access, but may not obtain the highest weighted item of the conditional database to mine highly correlated weight frequent patterns. Thus, we suggest a technique that uses additional conditions to prune lowly correlated weight items before the subsets checking process. Analyses show that our algorithms are efficient and scalable.
Publisher: IOS Press
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details for article 6 of 10 found articles
 
<< previous    next >>
 
 Koninklijke Bibliotheek - National Library of the Netherlands