Issues

Other Journals Published by Timeline Publication Pvt. Ltd.

  • IJECCE
    IJECCE
  • IJEIR
    IJEIR
  • IJAIR
    IJAIR
  • IJAIM
    IJAIM
  • IJRAS
    IJRAS
  • IJISM
    IJISM
  • IJIRES
    IJIRES
  • IJASM
    IJASM
  • IJRIES
    IJRIES

Efficient Mining of Emerging Patterns

Dr. K. Krishnamoorthy; T. Praveenkumar
Mining frequent patterns from large databases plays an essential role in many data mining tasks and has broad applications. Most of the previously proposed methods adopt apriori- like candidate-generation-and-test approaches. However, those methods may encounter serious challenges when mining datasets with prolific patterns and/or long patterns. In this work, we develop a class of novel and efficient pattern-growth methods for mining various frequent patterns from large databases. Pattern-growth methods adopt a divide- and-conquer approach to decompose both the mining tasks and the databases. Then, they use a pattern fragment growth method to avoid the costly candidate-generation-and-test processing completely. Moreover, effective data structures are proposed to compress crucial information about frequent patterns and avoid expensive, repeated database scans. A com- prehensive performance study shows that pattern-growth methods, FP-growth and H-mine, are efficient and scalable. They are faster than some recently reported new frequent pattern mining methods. Interestingly, pattern growth methods are not only efficient, but also effective. With pattern growth methods, many interesting patterns can also be mined efficiently, such as patterns with some tough non-anti-monotonic constraints and sequential patterns. These techniques have strong implications to many other data mining tasks.
Select Volume / Issues:
Year:
2013
Type of Publication:
Article
Keywords:
Frequent Patterns; Prolific Patterns; Pattern Growth; FP-Growth; H-Mine
Journal:
IJECCE
Volume:
4
Number:
4
Pages:
1300-1305
Month:
July
Hits: 1439

Indexed By:

  • 1.gif
  • 1.png
  • 01.png
  • 2.jpg
  • 2.png
  • 3.jpg
  • 3.png
  • 4.jpg
  • 4.png
  • 5.png
  • 6.jpg
  • 6.png
  • 7.jpg
  • 7.png
  • 8.jpg
  • 8.png
  • 9.jpeg
  • 9.jpg
  • 10.jpg
  • 10.png
  • 11.jpg
  • 11.png
  • 12.jpg
  • 12.png
  • 13.png
  • 14.jpg
  • 14.png
  • 15.jpg
  • 16.png
  • 17.jpg
  • 17.png
  • 19.png
  • copernicus.jpg
  • EuroPub-1.png