SCIRP Mobile Website
Paper Submission

Why Us? >>

  • - Open Access
  • - Peer-reviewed
  • - Rapid publication
  • - Lifetime hosting
  • - Free indexing service
  • - Free promotion service
  • - More citations
  • - Search engine friendly

Free SCIRP Newsletters>>

Add your e-mail address to receive free newsletters from SCIRP.

 

Contact Us >>

Article citations

More>>

W. Lian, D. W. Cheung and S. M. Yiu, “Maintenance of Maximal Frequent Itemsets in Large Databases,” Proceedings of 2007 ACM Symposium on Applied Computing (SAC’07), Seoul, 2007, pp. 388-392.

has been cited by the following article:

  • TITLE: DARM: Decremental Association Rules Mining

    AUTHORS: Mohamed Taha, Tarek F. Gharib, Hamed Nassar

    KEYWORDS: Decremental Mining, Association Rules Maintenance, Updating Association Rules

    JOURNAL NAME: Journal of Intelligent Learning Systems and Applications, Vol.3 No.3, August 24, 2011

    ABSTRACT: Frequent item sets mining plays an important role in association rules mining. A variety of algorithms for finding frequent item sets in very large transaction databases have been developed. Although many techniques were proposed for maintenance of the discovered rules when new transactions are added, little work is done for maintaining the discovered rules when some transactions are deleted from the database. Updates are fundamental aspect of data management. In this paper, a decremental association rules mining algorithm is present for updating the discovered association rules when some transactions are removed from the original data set. Extensive experiments were conducted to evaluate the performance of the proposed algorithm. The results show that the proposed algorithm is efficient and outperforms other well-known algorithms.