ANALISA METODE CLASSIFICATION-DECISSION TREE DAN ALGORITMA C.45 UNTUK MEMPREDIKSI PENYAKIT DIABETES DENGAN MENGGUNAKAN APLIKASI RAPID MINER

Authors

  • Febie Elfaladonna APTIKOM
  • Ayu Rahmadani Universitas Putra Indonesia-YPTK Padang, Indonesia

DOI:

https://doi.org/10.31598/sintechjournal.v2i1.293

Keywords:

Data mining, Classification Methods, Algorithm C. 45, Diabetes

Abstract

Diabetes disease is a degenerative disease that each year the presentation of its victims are always increasing. Ignorance of lay people to predict the likelihood of the disease either from a derivative or derivatives is still not a bit. These things affect the level of vigilance sufferers against things that can trigger diabetes getting worse. Classification of research aims to form model decision tree in order for handling derivative-based diabetes disease are increasingly easy to do. To generate new information then used calculation algorithm c. 45 and testing algorithms that use application rapid miner would further reinforce the decision. The research on testing using multiple attribute classification i.e. the attribute weight, gender, blood pressure, blood sugar levels, and a history of diabetes. All of these attributes will be used as reference in search results so that sufferers can predict whether diabetes is the diabetes disease suffered a derivative or derivatives not

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Published

2019-04-21

How to Cite

[1]
F. Elfaladonna and A. Rahmadani, “ANALISA METODE CLASSIFICATION-DECISSION TREE DAN ALGORITMA C.45 UNTUK MEMPREDIKSI PENYAKIT DIABETES DENGAN MENGGUNAKAN APLIKASI RAPID MINER”, SINTECH Journal, vol. 2, no. 1, pp. 10-17, Apr. 2019.