Gambaran Umum Metode Klasifikasi Data Mining

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Aryo De Wibowo Muhammad Sidik
Ilman Himawan Kusumah
Anang Suryana
Edwinanto
Marina Artiyasa
Anggy Pradiftha Junfithrana

Abstract

Berbagai metode klasifikasi data mining diperiksa dalam penelitian ini untuk aplikasi database baru. Untuk menemukan suatu model, klasifikasi membagi data ke dalam kelompok-kelompok berdasarkan batasan yang telah ditentukan. Metode klasifikasi penting lainnya adalah algoritma Genetika C4.5, Naive Bayes, dan SVM. Akhirnya, kami membahas penjelasan algoritma

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How to Cite
[1]
A. D. W. M. Sidik, I. Himawan Kusumah, A. Suryana, Edwinanto, M. Artiyasa, and A. Pradiftha Junfithrana, “Gambaran Umum Metode Klasifikasi Data Mining”, Fidelity, vol. 2, no. 2, pp. 34-38, May 2020.
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Articles
Received 2020-02-08
Accepted 2020-04-23
Published 2020-05-31

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