Research Article

Identification of Potential Student Academic Ability using Comparison Algorithm K-Means and Farthest First

by  Athanasia O. P. Dewi, Wiranto H. Utomo, Sri Yulianto J. P.
journal cover
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 63 - Issue 17
Published: February 2013
Authors: Athanasia O. P. Dewi, Wiranto H. Utomo, Sri Yulianto J. P.
10.5120/10558-5631
PDF

Athanasia O. P. Dewi, Wiranto H. Utomo, Sri Yulianto J. P. . Identification of Potential Student Academic Ability using Comparison Algorithm K-Means and Farthest First. International Journal of Computer Applications. 63, 17 (February 2013), 18-26. DOI=10.5120/10558-5631

                        @article{ 10.5120/10558-5631,
                        author  = { Athanasia O. P. Dewi,Wiranto H. Utomo,Sri Yulianto J. P. },
                        title   = { Identification of Potential Student Academic Ability using Comparison Algorithm K-Means and Farthest First },
                        journal = { International Journal of Computer Applications },
                        year    = { 2013 },
                        volume  = { 63 },
                        number  = { 17 },
                        pages   = { 18-26 },
                        doi     = { 10.5120/10558-5631 },
                        publisher = { Foundation of Computer Science (FCS), NY, USA }
                        }
                        %0 Journal Article
                        %D 2013
                        %A Athanasia O. P. Dewi
                        %A Wiranto H. Utomo
                        %A Sri Yulianto J. P.
                        %T Identification of Potential Student Academic Ability using Comparison Algorithm K-Means and Farthest First%T 
                        %J International Journal of Computer Applications
                        %V 63
                        %N 17
                        %P 18-26
                        %R 10.5120/10558-5631
                        %I Foundation of Computer Science (FCS), NY, USA
Abstract

The paper is tell about how to measure the potential of students' academic skills by using the parameter values and the area by using clustering analysis comparing two algorithms, algorithm K-Means and Farthest First algorithm. The data used in this paper is the student data of private universities in Indonesia. Tools that used in this study is Weka data mining application. From the results observed, found that the origin of high school affect the values obtained during the lectures and the more the number of clusters desired, the more also the time required to perform the data clustering.

References
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Index Terms
Computer Science
Information Sciences
No index terms available.
Keywords

Clustering algorithms K-Means Farthest First

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