Predictive Modeling of Osteoporosis Risk Factors using XGBoost and Bagging Ensemble Technique
I Irmawati,
Eka Herdit Juningsih,
Y Yanto
Abstract:This study presents a predictive modeling framework for osteoporosis risk assessment using ensemble techniques, specifically XGBoost and Bagging. Leveraging a dataset comprising comprehensive health factors influencing osteoporosis development, including demographic details, lifestyle choices, medical history, and bone health indicators, the aim is to facilitate accurate identification of individuals at risk. The dataset consists of 1958 samples, evenly distributed between osteoporosis-positive and osteoporosi… Show more
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