Implementasi Metode Fuzzy K-Means untuk Cluster Judul Skripsi Mahasiswa
Abstract
Clusters are a way of classifying data which can later be used as information and processed using data mining methods with certain algorithms. From here the author wants to try to use data in the form of thesis titles or final assignments from students, which later can be grouped from these results. So that the existing data can be processed using a data mining method, namely Fuzzy K-Means (FKM).
The data used in this study uses thesis data of students majoring in information technology. As a comparison, the data is also processed using K-Means, from the K-Means calculation, the average cluster is 1.014 and the DBI validity is 0.725. Meanwhile, for the calculation of Fuzzy K-Means, the cluster average is 0.069 and the DBI validity is 0.304Keywords
Full Text:
PDFReferences
Butarbutar, N., Windarto, A. P., & Hertama, D. (2016). Komparasi Kinerja Algoritma Fuzzy C-Means dan K-Means dalam Pengelompokan Data Siswa Berdasarkan Prestasi Nilai akademik Siswa. Jurasik, 46-55.
Lestari, W. (2015). Pemetaan Gaya Belajar Mahasiswa dengan Clustering Menggunakan Fuzzy C-Means. Jurnal Sainstech Politeknik Indonusa Surakarta, 1-8.
Mas'udin, P. E., Farida, A., & Mustafa, L. D. (2018). ClusteringData RemunerasiDosen Untuk Penilaian Kinerja Menggunakan Fuzzy c-Means. Jurnal Resti, 288-294.
Nurdin, N., & Munthoha, A. (2017). Sistem Pendeteksi Kemiripan Judul Skripsi Menggunakan Algoritma Winnowing. Jurnal Nasional Informatika dan Teknologi Jaringan, 90-97.
Priliant, K. R., & Wijaya, H. (2014). Aplikasi Text Mining untuk Automasi Penentuan Tren Topik Skripsi dengan Metode K-Means Clustering. Jurnal Cybermatika, 1-6.
Putrawangsa, S., & Hasanah, U. (2018). Integrasi Teknologi Digital dalam Pembelajaran di Era Industri 4.0. Jurnal Tatsqif, 42-54.
Rahmawati, L., Widya, S. S., & Suryani, E. (2014). Analisa Clustering Menggunakan Metode K-Means dan Hierarchical Clustering (Studi Kasus : Program Studi Kimia). Jurnal Teknologi dan Informasi, 1 - 8.
Riyadhi, M. F. (2019). Aplikasi Text Mining Untuk Automasi Penentuan Tren Topik Skripsi Dengan Metode K-Means Clustering (Studi Kasus: Prodi Sistem Komputer). Jurnal Komputika.
DOI: http://dx.doi.org/10.26623/jprt.v16i2.2637
Refbacks
- There are currently no refbacks.
Penerbit
Lembaga Penelitian dan Pengabdian kepada Masyarakat Universitas Semarang
Alamat Redaksi:
Jl.Soekarno-Hatta, Tlogosari, Semarang, Jawa Teangah, Indonesia 50196 Telp: 024-6702757 psw: 8302 Fax: 024-6702272 e-mail: jprt@usm.ac.id
This work is licensed under a Creative Commons Attribution 4.0 International License.