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International Journal of Scientific & Technology Research

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IJSTR >> Volume 9 - Issue 4, April 2020 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



Gustafson-Kessel Clustering Model To Identify The High-Level Performers In Educational Domain

[Full Text]

 

AUTHOR(S)

S.Hamsanandhini, T.Thilagaraj, Dr.N Sengottaiyan

 

KEYWORDS

Data mining, Gustafson-Kessel Clustering, Placement, Student Performance

 

ABSTRACT

The Process of placing individual items into groups based on some quantitative information is known as clustering. The cluster number estimation is one of the most important tasks in clustering. The Gustafson-Kessel clustering model will suitable to evolve many real-world tasks. This model having the ability to deal with unlabeled data and also it will generate membership and typicality values. The skill sets like speaking, reading, listening and writing are used to analyze the student level. The prediction of the best performer will reduce the burden in placement and also reduce the cost in the student enrichment process.

 

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