Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

A Survey on Improvising Frequent Pattern Mining Methods


Affiliations
1 Department of Computer Engineering, L. J. Institute of Engineering & Technology, Ahmedabad, India
     

   Subscribe/Renew Journal


In data mining approaches, association rules mining algorithms are promising for actual applications such as marketing strategies, catalog design. However, the association rules mining is essentially based on a database comprised of Boolean attributes. In order to apply a mining algorithm to further various problems, quantitative attributes should also be appropriately dealt. Fuzzy association rules mining approaches are proposed to overcome such disadvantages based on the fuzzy set concept. The fuzzy association rule mining has a good property in terms of the quantization of numerical attributes of a database compared to generalize Boolean association rule mining. So, the mining results of fuzzy association rules are easy to understand for corresponding human operators.

Keywords

Association Rule Mining, Fuzzy Association Rule Mining, Membership Function, Certainty Factor.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 259

PDF Views: 2




  • A Survey on Improvising Frequent Pattern Mining Methods

Abstract Views: 259  |  PDF Views: 2

Authors

Manmay Badheka
Department of Computer Engineering, L. J. Institute of Engineering & Technology, Ahmedabad, India
Shruti Yagnik
Department of Computer Engineering, L. J. Institute of Engineering & Technology, Ahmedabad, India
Ompriya Kale
Department of Computer Engineering, L. J. Institute of Engineering & Technology, Ahmedabad, India
Sagar Gajera
Department of Computer Engineering, L. J. Institute of Engineering & Technology, Ahmedabad, India

Abstract


In data mining approaches, association rules mining algorithms are promising for actual applications such as marketing strategies, catalog design. However, the association rules mining is essentially based on a database comprised of Boolean attributes. In order to apply a mining algorithm to further various problems, quantitative attributes should also be appropriately dealt. Fuzzy association rules mining approaches are proposed to overcome such disadvantages based on the fuzzy set concept. The fuzzy association rule mining has a good property in terms of the quantization of numerical attributes of a database compared to generalize Boolean association rule mining. So, the mining results of fuzzy association rules are easy to understand for corresponding human operators.

Keywords


Association Rule Mining, Fuzzy Association Rule Mining, Membership Function, Certainty Factor.