Machine learning-based analysis of adolescent gambling factors.
Wonju SeoNamho KimSang-Kyu LeeSung Min ParkPublished in: Journal of behavioral addictions (2020)
Machine learning models trained using important features showed moderate accuracy in a large-scale Korean adolescent dataset. These findings suggest that the method will help screen adolescents at risk of problem gambling. We believe that expandable machine learning-based approaches will become more powerful as more datasets are collected.