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Predictors of Sexual Harassment Using Classification and Regression Tree Analyses and Hurdle Models: A Direct Replication.

Jan-Louw KotzePatricia A FrazierKayla A HuberKatherine A Lust
Published in: Journal of sex research (2023)
Sexual harassment affects a large percentage of higher education students in the US. A previous study identified several risk factors for sexual harassment using hurdle models and classification and regression tree (CART) analyses. The purpose of the present study was to assess the robustness of these findings by replicating the analyses with a new sample of students. Secondary data analysis was conducted using data from 9,552 students from two- and four-year colleges. Hurdle model coefficients were assessed for replicability based on statistical significance and consistency of the replication effect size relative to the original effect size. Kotzé et al.'s findings were robust, with 91% of all tested effects meeting at least one of two replication criteria in the hurdle models and 88% of the variables replicating in the CARTs. Being younger, consuming alcohol more frequently, attending a four-year college, and having experienced more prior victimization and adversity were important predictors of peer harassment whereas being LGBQ+ was an important predictor of sexual harassment from faculty/staff. These findings can inform targeted prevention and intervention programs. More research is needed to understand why certain demographic and contextual variables are associated with greater harassment risk.
Keyphrases
  • data analysis
  • high school
  • mental health
  • machine learning
  • deep learning
  • electronic health record
  • quality improvement
  • medical students
  • early life