ANALISA PERFORMA ALGORITMA MACHINE LEARNING DALAM PREDIKSI PENYAKIT LIVER
Main Article Content
Abstract
Article Summary
Currently in the world of medicine, determining liver inflammation is something that is not easy to do. But there are medical records that have kept the patient's symptoms and diagnosis of liver inflammation. The weaknesses of the manual method encourage researchers to develop a method that does not depend 100% on humans. The developed method utilizes a computer as a tool to analyze data. This kind of thing is certainly very useful for health experts. They can use existing medical records as an aid in making decisions about the diagnosis of a patient's disease. In this study, we analyzed the performance of machine learning algorithms by comparing the support vector machine, naïve Bayes and k-nearest neighbor algorithms. This study aims to determine the performance of which algorithm has the highest accuracy in liver disease data. From the research results using splinting data 80:20 it can be concluded that the Naïve Bayes algorithm model has better performance than other algorithm models when using the SMOTE technique with an accuracy value of 65.51%, whereas when not using the SMOTE technique the Support Vector Machine algorithm has the highest performance. better than other algorithm models with an accuracy value on the data not 72.41%.
Keywords
Article Keywords
Downloads
Article Details

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Authors who publish with this journal agree to the following terms:
- Authors retain copyright and grant the journal right of first publication with the work simultaneously licensed under a Creative Commons Attribution License (CC-BY 4.0) that allows others to share the work with an acknowledgement of the work's authorship and initial publication in this journal.
- Authors are able to enter into separate, additional contractual arrangements for the non-exclusive distribution of the journal's published version of the work (e.g., post it to an institutional repository or publish it in a book), with an acknowledgement of its initial publication in this journal.
- Authors are permitted and encouraged to post their work online (e.g., in institutional repositories or on their website) prior to and during the submission process, as it can lead to productive exchanges, as well as earlier and greater citation of published work.
Akbar, F., Wira Saputra, H., Karel Maulaya, A., Fikri Hidayat, M., & Rahmaddeni. (2022). Implementasi Algoritma Decision Tree C4.5 dan Support Vector Regression untuk Prediksi Penyakit Stroke. 2(October), 61–67.
Aldi Tangkelayuk, & Evangs Mailoa. (2022). The Klasifikasi Kualitas Air Menggunakan Metode KNN, Naïve Bayes, dan Decision Tree. JATISI (Jurnal Teknik Informatika dan Sistem Informasi), 9(2), 1109–1119. https://doi.org/10.35957/jatisi.v9i2.2048
Amrin, & Omar Pahlevi. (2021). Data Mining Optimization Based on Particle Swarm Optimization For Diagnosis of Inflammatory Liver Disease. Jite, 5(1), 152–159. http://ojs.uma.ac.id/index.php/jite
Ayudhitama, A. P., & Pujianto, U. (2020). Analisa 4 Algoritma Dalam Klasifikasi Liver Menggunakan Rapidminer. Jurnal Informatika Polinema, 6(2), 1–9. https://doi.org/10.33795/jip.v6i2.274
Fatchan, M., Tedi, N., Alfiyan, Kurniawan, & Widodo, E. (2021). Perbandingan Dalam Memprediksi Penyakit Liver Menggunakan Algoritma Naïve Bayes Dan K-Nearest Neighbor. Jurnal Pelita Teknologi, 16(1), 15–21.
Handayani, P., Nurlelah, E., Raharjo, M., & Ramdani, P. M. (2019). Prediksi Penyakit Liver Dengan Menggunakan Metode Decision Tree dan Neural Network. Computer Engineering, Science and System Journal, 4(1), 55. https://doi.org/10.24114/cess.v4i1.11528
Handoko, M. R., & Neneng. (2021). Sistem Pakar Diagnosa Penyakit Ispa Menggunakan Metode Naive Bayes Classifier Berbasis Web. CSRID (Computer Science Research and Its Development Journal), 10(3), 127. https://doi.org/10.22303/csrid.10.3.2018.127-138
Laksana Utama, P. K. (2018). Identifikasi Hoax pada Media Sosial dengan Pendekatan Machine Learning. Widya Duta: Jurnal Ilmiah Ilmu Agama dan Ilmu Sosial Budaya, 13(1), 69. https://doi.org/10.25078/wd.v13i1.436
Ninditama, I. P., Ninditama, I. P., Cholil, W., Akbar, M., & Antoni, D. (2020). Klasifikasi Keluarga Sejahtera Study Kasus : Kecamatan Kota Palembang. Jurnal TEKNO KOMPAK, 15(2), 37–49. https://ejurnal.teknokrat.ac.id/index.php/teknokompak/article/view/1156
Noviriandini, A., Handayani, P., & Syahriani. (2019). Prediksi Penyakit Liver Dengan Menggunakan Metode. Prosiding TAU SNAR-TEK Seminar Nasional Rekayasa dan Teknologi, November, 75–80.
Prabiantissa, C. N. (2021). Klasifikasi pada Dataset Penyakit Hati Menggunakan Algoritma Support Vector Machine, K-NN, dan Naïve Bayes. Seminar Nasional Teknik Elektro, Sistem Informasi, dan Teknik Informatika, 219–224.
Pusporani, E., Qomariyah, S., & Irhamah, I. (2019). Klasifikasi Pasien Penderita Penyakit Liver dengan Pendekatan Machine Learning. Inferensi, 2(1), 25. https://doi.org/10.12962/j27213862.v2i1.6810
Putri, H., Purnamasari, A. I., Dikananda, A. R., Nurdiawan, O., & Anwar, S. (2021). Penerima Manfaat Bantuan Non Tunai Kartu Keluarga Sejahtera Menggunakan Metode NAÏVE BAYES dan KNN. Building of Informatics, Technology and Science (BITS), 3(3), 331–337. https://doi.org/10.47065/bits.v3i3.1093
Rhyzoma Grannata Rafsanjani, Hidayat, N., & Dewi, R. K. (2018). Diagnosis Penyakit Hati Menggunakan Metode Naive Bayes Dan Certainty Factor. Jurnal Pengembangan Teknologi Informasi dan Ilmu Komputer, 2(11), 4478–4482.
Tempola, F., Muhammad, M., & Khairan, A. (2018). Perbandingan Klasifikasi Antara KNN dan Naive Bayes pada Penentuan Status Gunung Berapi dengan K-Fold Cross Validation. Jurnal Teknologi Informasi dan Ilmu Komputer, 5(5), 577. https://doi.org/10.25126/jtiik.201855983