PERBANDINGAN ANTARA METODE K-MEANS CLUSTERING DENGAN GATH-GEVA CLUSTERING
DOI:
https://doi.org/10.15642/mantik.2016.1.2.26-37Keywords:
Sistem Fuzzy, K-means clustering, Gath-Geva clusteringAbstract
Perdagangan luar negeri Indonesia sedang ditata kembali format dan kinerjanya, agar pemerintah tidak membuat kesalahan dalam mengambil keputusan untuk meningkatkan ekspor non migas, maka pemerintah harus mampu memprediksi volume ekspor non migas. Prediksi pada dasarnya merupakan suatu perkiraan tentang terjadinya suatu kejadian di waktu yang akan datang. Salah satu cara yang dapat digunakan untuk memprediksi nilai ekspor tersebut adalah dengan k-means clustering dan gath-geva clustering. Kemudian dibentuk Fuzzy Inference System (FIS) untuk memperoleh hasil prediksi sehingga didapatkan error dan validasi hasil prediksi.Berdasarkan hasil analisa RMSE, cek maksimum dan cek minimum maka dapat disimpulkan bahwa metode Gath-Geva (GG) Clustering lebih teliti dibandingkan dengan metode K-means clusteringDownloads
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Published
2016-05-30
How to Cite
Lailiyah, S., & Hafiyusholeh, M. (2016). PERBANDINGAN ANTARA METODE K-MEANS CLUSTERING DENGAN GATH-GEVA CLUSTERING. Jurnal Matematika MANTIK, 1(2), 26–37. https://doi.org/10.15642/mantik.2016.1.2.26-37
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