Community Service Increasing Lecturer Competence Through Data Mining Training Using Rapidminer Tools in the Master of Public Health Study Program, Faculty of Health, Hang Tuah University, Pekanbaru

Isi Artikel Utama

Eka Sabna
Azlina
Arif Arrafi

Abstrak

Technological developments in the Industry 4.0 era open up enormous opportunities in data collection and processing. Currently, health data makes up around 30% of all global data, and by 2025, this figure will reach 36%. The ability to understand such segmented data can provide a major strategic advantage to medical organizations everywhere. This large amount of data can be carried out in research using various approaches, including using the Data Mining Approach. Data Mining can be applied to find knowledge patterns from patient profiles and health history data (patient history data). The knowledge gained can be used for analysis and decision making, including to predict the type of disease, determine the pattern of disease spread, and see the effectiveness of treatment.


Some Lecturers in the Master of Public Health Study Program do not know much about the basic concepts of Data Analysis using Data Mining concepts. This activity aims to provide knowledge about analyzing health data using a Data Mining Approach to lecturers in the Master of Public Health Study Program. The Data Mining technique discussed is the prediction of diabetes using the Decision Tree Algorithm. The data used was obtained from public data, namely Kaggle.

Rincian Artikel

Cara Mengutip
Sabna, E., Azlina, & Arrafi, A. (2024). Community Service Increasing Lecturer Competence Through Data Mining Training Using Rapidminer Tools in the Master of Public Health Study Program, Faculty of Health, Hang Tuah University, Pekanbaru. RECORD: Journal of Loyality and Community Development, 1(3), 143-150. https://ejournal.mediakunkun.com/index.php/record/article/view/157
Bagian
Articles

Cara Mengutip

Sabna, E., Azlina, & Arrafi, A. (2024). Community Service Increasing Lecturer Competence Through Data Mining Training Using Rapidminer Tools in the Master of Public Health Study Program, Faculty of Health, Hang Tuah University, Pekanbaru. RECORD: Journal of Loyality and Community Development, 1(3), 143-150. https://ejournal.mediakunkun.com/index.php/record/article/view/157

Referensi

Fayyad, U., Piatetsky-Shapiro, G., & Smyth, P. (1996). From Data Mining to Knowledge Discovery in Databases. AI Magazine, 17(3), 37–37. https://doi.org/10.1609/AIMAG.V17I3.1230

Hotz, N. (2024). What is CRISP DM? - Data Science Process Alliance. https://www.datascience-pm.com/crisp-dm-2/

Husen, D., Sandi, D., Bumbungan, S., Yogyakarta, U. A., Informatika, M. T., Mining, D., & Forest, R. (2022). Analisis Prediksi Kebakaran Hutan dengan Menggunakan Algoritma Random Forest Classifier. 16, 150–155.

Hussein, M. (2020). Prediksi Harga Minyak Dunia Dengan Metode Deep Learning | Hussein | Fountain of Informatics Journal. https://ejournal.unida.gontor.ac.id/index.php/FIJ/article/view/4446/pdf_60

Jiawei, H. (n.d.). Data mining concepts and techniques - 2006. Retrieved May 22, 2023, from https://elibrary.bsi.ac.id/readbook/221528/data-mining-concepts-and-techniques

Kumar Yadav, S. (2012). Data Mining: A Prediction for Performance Improvement of Engineering Students using Classification Saurabh Pal. World of Computer Science and Information Technology Journal (WCSIT), 2(2), 51–56.

Mauritsius, T., & Binsar, F. (2020). Cross-Industry Standard Process for Data Mining (CRISP-DM) – MMSI BINUS University. https://mmsi.binus.ac.id/2020/09/18/cross-industry-standard-process-for-data-mining-crisp-dm/

Oded, M., & Lior, R. (2010). Data Mining And Knowladge Discovery Handbook. In Journal of Chemical Information and Modeling (Vol. 53, Issue 9). https://doi.org/10.1017/CBO9781107415324.004

Zunaidi, M., Nasyuha, A. H., & Sinaga, S. M. (2020). Penerapan Data Mining Untuk Memprediksi Pertumbuhan Jumlah Penderita Human Immunodeficiency Virus (HIV) Menggunakan Metode Multiple Linier Regression (Studi Kasus Dinas Kesehatan Provinsi Sumatera Utara). Jurnal Teknologi Sistem Informasi Dan Sistem Komputer TGD, 3(1), 137–147. https://doi.org/10.53513/JSK.V3I1.205