2020
DOI: 10.28932/jutisi.v6i2.2675
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Deteksi Dini Status Keanggotaan Industri Kebugaran Menggunakan Pendekatan Supervised Learning

Abstract: In the fitness industry, the number of members is a major factor for the sustainability of its business. The ability of managers and trainers to detect members who represent traits to quit membership is critical. Four supervised learning classification methods like Support Vector Machine, Random Forest, K-Nearest Neighbor, and Artificial Neural Network were used to generate early detection using two variants of datasets that have different amounts of data. Classification results are separated into three differ… Show more

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“…Research [7] has the same division of label categories, namely red, yellow, and green, which will also be used in this study. The algorithm model used in this research is similar to the research to be carried out.…”
Section: Customermentioning
confidence: 99%
“…Research [7] has the same division of label categories, namely red, yellow, and green, which will also be used in this study. The algorithm model used in this research is similar to the research to be carried out.…”
Section: Customermentioning
confidence: 99%