An AI-based intervention for improving undergraduate STEM learning.

Journal: PloS one
Published Date:

Abstract

We present results from a small-scale randomized controlled trial that evaluates the impact of just-in-time interventions on the academic outcomes of N = 65 undergraduate students in a STEM course. Intervention messaging content was based on machine learning forecasting models of data collected from 537 students in the same course over the preceding 3 years. Trial results show that the intervention produced a statistically significant increase in the proportion of students that achieved a passing grade. The outcomes point to the potential and promise of just-in-time interventions for STEM learning and the need for larger fully-powered randomized controlled trials.

Authors

  • Mohammad Rashedul Hasan
    Electrical and Computer Engineering, University of Nebraska-Lincoln, Lincoln, NE, United States of America.
  • Bilal Khan
    Department of Computer Science, City University of Science and Information Technology, Peshawar, Pakistan.