KAJIAN PENERAPAN ALGORITMA C4.5, NAIVE BAYES, DAN NEURAL NETWORK DALAM PEMILIHAN DOSEN TELADAN: STUDI KASUS UNIVERSITAS INDRAPRASTA

<p>Improving quality of services to students with a way to do an assessment of the faculty is one way for the Universitas Indraprasta to keep competitive with competitors.</p><p>In addition, the necessary supporting data as a basis for decision-making comes from parts and other age...

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Bibliographic Details
Main Author: Laksana Priyo Abadi
Format: Article
Language:Indonesian
Published: Lembaga Penelitian Universitas Indraprasta PGRI 2016-09-01
Series:Faktor Exacta
Online Access:http://journal.lppmunindra.ac.id/index.php/Faktor_Exacta/article/view/813
Description
Summary:<p>Improving quality of services to students with a way to do an assessment of the faculty is one way for the Universitas Indraprasta to keep competitive with competitors.</p><p>In addition, the necessary supporting data as a basis for decision-making comes from parts and other agencies so that decision-making process requires a long time. For data analysis, this research using descriptive analysis techniques and instruments used to determine policy priorities is by using the Algoritma C45, Naive Bayes, and Neural Network with WEKA software.</p><p> This research is expected to produce a model that can support decision making in terms of determining a lecturer with the best performance will be stated as outstanding lecturers each year.</p><p> </p><p><strong><em> </em></strong><strong><em>Keywords</em></strong><strong><em>: </em></strong><em>Grade</em><em> </em><em>Decision Support, Algoritma C45, Naive Bayes and Neural Network, lecturer assessment</em></p>
ISSN:1979-276X
2502-339X