DocumentCode :
541805
Title :
Fuzzy K- means cluster validation for institutional quality assessment
Author :
Kumar, Prakash S. ; Ramaswami, K.S.
Author_Institution :
Dept. of Comput. Applic., Erode Sengunthar Eng. Coll., Thudupathi, India
fYear :
2010
fDate :
27-29 Dec. 2010
Firstpage :
628
Lastpage :
635
Abstract :
The most important facts in educational institutional system growth lies in the quality of services rendered. (i.e., faculty profile, student performance and infrastructure requirements). The highest level of quality in educational institution can be achieved by utilizing the managerial decision makers with valuable implicit knowledge, which is currently unknown /hidden to them. The knowledge hidden among the educational data set is extractable through data mining technology. Clustering, an unsupervised learning depends on certain initiation values to define the subgroups present in a data set. Based on the features of the dataset and input parameters cluster formation may vary, which motivates the clarification of cluster validity. The proposed work presented a fuzzy k-means cluster algorithm in the formation of student, faculty and infrastructural clusters based on the performance, skill set and facilitation availability respectively. With the obtained data clusters, quality assessment is made by predictive mining using decision tree model. The cluster validation criterion is introduced to find the optimal input metrics for fuzzy k-means algorithm. Validation criteria focus on the quality metrics of the institution features for cluster formation and handle efficiently the arbitrary shaped clusters. Experimental results show improved stability and accuracy for clustering structures obtained via sub sampling, and adaptive techniques. These improvements offer insights into specific decision within the data sets. The experimental results confirm the reliability of validity index showing that it performs favorably in all cases selecting independently of clustering algorithm the scheme that best fits the data under consideration.
Keywords :
data mining; decision making; decision trees; educational administrative data processing; formal verification; information retrieval; pattern clustering; quality management; unsupervised learning; adaptive technique; cluster validation criterion; clustering structure accuracy; data mining technology; decision making; decision tree model; educational data set; educational institutional system growth; fuzzy k-mean cluster algorithm; hidden knowledge; knowledge extraction; optimal input metrics; predictive mining; quality assessment; quality metrics; quality of services; subsampling technique; unsupervised learning; validity index reliability; Classification tree analysis; Clustering algorithms; Data mining; Databases; Educational institutions; Quality assessment; Cluster; Data Mining; Educational institution; decision tree;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Communication and Computational Intelligence (INCOCCI), 2010 International Conference on
Conference_Location :
Erode
Type :
conf
Filename :
5738801
Link To Document :
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