TY - JOUR AB - Accurately forecasting course enrollment rates in higher education is of great concern in order to minimize unnecessary administrative costs as well as burden to both students and faculty. This research aimed to first recreate course enrollment predictions based on a conditional probability analysis using student data from San Diego State University (SDSU) and then to improve upon those predictions by applying classification and regression trees (CART) and random forest. The authors incorporated student demographic and academic information into algorithms to ascertain their influence on improving course enrollment prediction accuracy. They used these strategies to predict enrollment in General Chemistry at SDSU, a course with historically varied and large enrollment numbers in the multiple hundreds per semester. The authors then determined which factors were the most influential to the General Chemistry enrollment number using a variable importance metric derived from tree-based algorithms.   AU - Lucy Shao, Martin leong, Richard. A. Levine, Jeanne Stronach, and Juanjuan Fan CY - Washington, DC DA - EP - IS - 2 J1 - Strategic Enrollment Management Quarterly J2 - SEMQ JA - SEM Quarterly JF - Strategic Enrollment Management Quarterly JO - Strategic Enrollment Management Quarterly L1 - LA - EN SP - T1 - Machine Learning Methods for Course Enrollment Prediction UR - machine-learning-methods-for-course-enrollment-prediction VL - Y1 - 2022/7/22 Y2 - 2024/4/25 ER -