Variable selection methods for identifying predictor interactions in data with repeatedly measured binary outcomes.
Bethany J WolfYunyun JiangSylvia H WilsonJim C OatesPublished in: Journal of clinical and translational science (2020)
Penalized and boosted approaches are effective for variable selection in data with clustered binary outcomes. The two-stage approach reduces bias and error and should be applied regardless of method. We provide guidance for choosing the most appropriate method in real applications.