Clustering Large Data with Mixed Values Using Extended Fuzzy Adaptive Resonance Theory

Clustering is one of the technique or approach in content mining and it is used for grouping similar items. Clustering software datasets with mixed values is a major challenge in clustering applications. The previous work deals with unsupervised feature learning techniques such as k-Means and C-Mean...

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Main Authors: Srinivasulu, Asadi (Author), Dakshayani, Gadupudi (Author)
Format: EJournal Article
Published: Institute of Advanced Engineering and Science, 2016-12-01.
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LEADER 02593 am a22002893u 4500
001 ijeecs6008_5383
042 |a dc 
100 1 0 |a Srinivasulu, Asadi  |e author 
700 1 0 |a Dakshayani, Gadupudi  |e author 
245 0 0 |a Clustering Large Data with Mixed Values Using Extended Fuzzy Adaptive Resonance Theory 
260 |b Institute of Advanced Engineering and Science,   |c 2016-12-01. 
500 |a https://ijeecs.iaescore.com/index.php/IJEECS/article/view/6008 
520 |a Clustering is one of the technique or approach in content mining and it is used for grouping similar items. Clustering software datasets with mixed values is a major challenge in clustering applications. The previous work deals with unsupervised feature learning techniques such as k-Means and C-Means which cannot be able to process the mixed type of data. There are several drawbacks in the previous work such as cluster tendency, partitioning, less accuracy and less performance. To overcome all those problems the extended fuzzy adaptive resonance theory (EFART) came into existence which indicates that the usage of fuzzy ART with some traditional approach. This work deals with mixed type of data by applying unsupervised feature learning for achieving the sparse representation to make it easier for clustering algorithms to separate the data. The advantages of extended fuzzy adaptive resonance theory are high accuracy, high performance, good partitioning, and good cluster tendency. This EFART adopts unsupervised feature learning which helps to cluster the large data sets like the teaching assistant evaluation, iris and the wine datasets. Finally, the obtained results may consist of clusters which are formed based on the similarity of their attribute type and values. 
540 |a Copyright (c) 2016 Indonesian Journal of Electrical Engineering and Computer Science 
540 |a http://creativecommons.org/licenses/by-nc-nd/4.0 
546 |a eng 
690 |a Data Mining 
690 |a Clustering, k-Means, C-Means, Fuzzy ART, unsupervised feature learning, Extended Fuzzy Adaptive Resonance Theory. 
655 7 |a info:eu-repo/semantics/article  |2 local 
655 7 |a info:eu-repo/semantics/publishedVersion  |2 local 
655 7 |2 local 
786 0 |n Indonesian Journal of Electrical Engineering and Computer Science; Vol 4, No 3: December 2016; 617-628 
786 0 |n 2502-4760 
786 0 |n 2502-4752 
786 0 |n 10.11591/ijeecs.v4.i3 
787 0 |n https://ijeecs.iaescore.com/index.php/IJEECS/article/view/6008/5383 
856 4 1 |u https://ijeecs.iaescore.com/index.php/IJEECS/article/view/6008/5383  |z Get fulltext