2019
DOI: 10.1088/1742-6596/1235/1/012005
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Application of Classification Method C4.5 on Selection of Exemplary Teachers

Abstract: The study aims to analyze the selection of exemplary teachers using C4.5 algorithm, which is one of the existing decision tree methods in data mining theory. Teacher data was obtained from the school in SMA Negeri 2 Pematangsiantar (2010-2016). The data used contains information about teacher history and teacher assessment data. This research uses interview technique and questionnaire in obtaining data. There are 11 attributes used in the assessment process: NUPTK, name, age, education, status, Appointment Let… Show more

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Cited by 17 publications
(9 citation statements)
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“…Next, the categorical data is given as input to "Decision tree C4.5" (Weka-J4.8) VI. DECISION TREE C4.5 Decision tree refers to a "supervised classification method" that is a structure in which the non-terminal nodes indicate the test of one or more features, and the terminal nodes indicate the result of the decision [9]. It has been apprehended from the studies that the basic algorithm for determining the tree ID3 derivation has been enhanced by the C4.5 algorithm [10].…”
Section: Simple Linear Regressionmentioning
confidence: 99%
“…Next, the categorical data is given as input to "Decision tree C4.5" (Weka-J4.8) VI. DECISION TREE C4.5 Decision tree refers to a "supervised classification method" that is a structure in which the non-terminal nodes indicate the test of one or more features, and the terminal nodes indicate the result of the decision [9]. It has been apprehended from the studies that the basic algorithm for determining the tree ID3 derivation has been enhanced by the C4.5 algorithm [10].…”
Section: Simple Linear Regressionmentioning
confidence: 99%
“…Dalam setiap fungsi keanggotaan, terdapat aturan untuk menentukan nilai fuzzy-nya. Berikut ini adalah fungsi keanggotaan dari variabel yang digunakan dalam penelitian ini [5][6][7].…”
Section: Fuzzifikasiunclassified
“…Algoritma C4.5 adalah algoritma yang sudah banyak dikenal dan digunakan untuk klasifikasi data yang memiliki atribut-atribut numerik dan kategorial. Hasil dari proses klasifikasi yang berupa aturan-aturan dapat digunakan untuk memprediksi nilai atribut bertipe diskret dari record yang baru [9]. Algortima C4.5 sendiri merupakan pengembangan dari algortima ID3, dimana pengembangan dilakukan dalam hal, bisa mengatasi missing data, bisa mengatasi data kontinu dan pruning [10].…”
Section: Algoritma C45unclassified