Mining Frequent Item Set Using Cluster Approach from Large Uncertain Database
Journal: International Journal of Science and Research (IJSR) (Vol.4, No. 4)Publication Date: 2015-04-05
Authors : Naveen Sarawgi; C. Malathy;
Page : 1546-1551
Keywords : Frequent pattern algorithm; Fuzzy C-means algorithm; uncertain database;
Abstract
The data handling in emerging application and technology like sensor systems, location based system and data integration, are often inaccurate and inexact in nature. In this paper we study the extracting of most frequent item set from large size of uncertain database. The main aim of frequent item set mining is to extract useful information and knowledge from uncertain databases. We propose frequent pattern and Fuzzy C-means algorithm. The combination of frequent pattern algorithm and fuzzy c-means algorithm provide fast and accurate mined information.
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