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Predicting Risky Sexual Behavior Among College Students Through Machine Learning Approaches: Cross-sectional Analysis of Individual Data From 1264 Universities in 31 Provinces in China.

Xuan LiHanxiyue ZhangShuangyu ZhaoKun Tang
Published in: JMIR public health and surveillance (2023)
RSB is prevalent among college students. The XGBoost model is an effective approach to predict RSB and identify corresponding risk factors. This study presented an opportunity to promote sexual and reproductive health through ML models, which can help targeted interventions aimed at different subgroups and the precise surveillance and prevention of RSB among college students through risk probability prediction.
Keyphrases
  • machine learning
  • risk factors
  • cross sectional
  • big data
  • mental health
  • public health
  • artificial intelligence
  • cancer therapy
  • electronic health record
  • data analysis