Title :
Data Labeling method based on Rough Entropy for categorical data clustering
Author :
Sreenivasulu, G. ; Raju, S. Viswanadha ; Rao, N. Sambasiva
Author_Institution :
Dept. of CSE, ACE Eng. Coll., India
Abstract :
Clustering is one of the most important method in data mining. Clustering a huge data set is difficult and time taking process. In this scenario a new method proposed that is based on Rough Entropy for improving efficiency of clustering and labeling the unlabeled data points in clusters. Data Labeling is a simple process in numerical domain but not in categorical domain. Why because distance is a major parameter in numerical whereas not in categorical attributes. So, In this paper proposed a new method for data labeling using Rough Entropy for clustering categorical data attributes. This method is mainly divided into two phases. Phase-1 is aimed to find the partition with respect to attributes and phase-II is to find the Rough Entropy to know the node importance for data labeling.
Keywords :
category theory; data mining; pattern clustering; rough set theory; categorical data attribute; categorical data clustering; data labeling method; data mining; rough entropy; time taking process; Algorithm design and analysis; Clustering algorithms; Data mining; Entropy; Information systems; Labeling; Set theory; Categorical Clustering; Data Labeling; Rough Entropy and Rough Set;
Conference_Titel :
Electronics,Communication and Computational Engineering (ICECCE), 2014 International Conference on
DOI :
10.1109/ICECCE.2014.7086654