2021
DOI: 10.47709/cnahpc.v3i1.923
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Implementation of Data Mining Using C4.5 Algorithm on Customer Satisfaction in Tirta Lihou PDAM

Abstract: This application applies the C4.5 Algorithm to decide customer satisfaction, the C4.5 algorithm is one of the algorithms used to classify or segment, or group and it is predictive. This type of research is a classification with the concept of data mining involving 150 customers of PDAM Tirta Lihou in Totap Majawa Kab. Simalungun can be categorized as: "Satisfied and Dissatisfied". The meaning of Data Mining is an interdisciplinary subfield of computer science and statistics with the overall objective of extrac… Show more

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Cited by 11 publications
(6 citation statements)
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“…C4.5 is chosen because it has a good accuracy level and can process categorical data such as milk quality categories good, medium, and poor. The C4.5 algorithm uses entropy to divide the dataset based on which attribute has the highest entropy value (Aldino & Sulistiani, 2020; Sinaga et al, 2021; Sinam & Lawan, 2019; Wahyudi & Andriani, 2021). The higher the entropy value of an attribute, the better the dataset‐splitting outcome.…”
Section: Methodsmentioning
confidence: 99%
“…C4.5 is chosen because it has a good accuracy level and can process categorical data such as milk quality categories good, medium, and poor. The C4.5 algorithm uses entropy to divide the dataset based on which attribute has the highest entropy value (Aldino & Sulistiani, 2020; Sinaga et al, 2021; Sinam & Lawan, 2019; Wahyudi & Andriani, 2021). The higher the entropy value of an attribute, the better the dataset‐splitting outcome.…”
Section: Methodsmentioning
confidence: 99%
“…Secara umum, kajian data mining membahas metode-metode seperti, asosiasi, clustering, klasifikasi, regresi, seleksi variable dan market basket analisis (Astuti, 2018). Banyak sekali penelitian-penelitian yang telah dilakukan dengan menggunakan data mining (Arminarahmah, GS, Bhawika, Dewi, & Wanto, 2021;Febriyati, GS, & Wanto, 2020;Gultom, Wanto, Gunawan, Lubis, & Kirana, 2021;Hanafiah & Wanto, 2020;Hutagalung et al, 2021;Sinaga, Wanto, Gunawan, Sumarno, & Nasution, 2021;Wanto et al, 2020).…”
Section: Data Miningunclassified
“…Algoritma pemetaan dan pengelompokkan yang diusulkan pada penelitian ini adalah algoritma K-Means Clustering yang merupakan salah satu teknik dari algoritma Data Mining. Sebagaimana diketahui bahwa Algoritma Data Mining telah banyak digunakan untuk pemecahan masalah komputasi seperti yang berhubungan dengan klasifikasi [6]- [9], hingga Pengelompokkan [10]- [14]. Algoritma K-Means digunakan pada penelitian ini karena sederhana dan cepat untuk memecahkan permasalahan cluster khususnya untuk data numerik dan sangat fleksibel serta efisien untuk ukuran data yang cukup besar dan tersebar [15].…”
Section: Pendahuluanunclassified