Identifying supportive student factors for mindset interventions: A two-model machine learning approach
Nigel Bosch

TL;DR
This study used machine learning to identify student factors influencing the effectiveness of growth mindset interventions, revealing key predictors like prior achievement and navigation behaviors, with implications for personalized educational strategies.
Contribution
The paper introduces a two-model machine learning approach to predict and analyze which student factors support growth mindset intervention success, addressing gaps in prior research.
Findings
Prior low academic achievement predicts higher intervention benefit.
Blocked navigation events negatively impact intervention effectiveness.
Minoritized students may benefit less from the intervention.
Abstract
Growth mindset interventions foster students' beliefs that their abilities can grow through effort and appropriate strategies. However, not every student benefits from such interventions - yet research identifying which student factors support growth mindset interventions is sparse. In this study, we utilized machine learning methods to predict growth mindset effectiveness in a nationwide experiment in the U.S. with over 10,000 students. These methods enable analysis of arbitrarily-complex interactions between combinations of student-level predictor variables and intervention outcome, defined as the improvement in grade point average (GPA) during the transition to high school. We utilized two separate machine learning models: one to control for complex relationships between 51 student-level predictors and GPA, and one to predict the change in GPA due to the intervention. We analyzed the…
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