Predicting Student Success in Co-remediated General Education Mathematics Courses at a Large Urban Public University
682
356
Abstract
Placement and support of students in first-year mathematics courses at institutions of higher education has long been a consequential issue. In a bid to address it, many systems and institutions of higher learning have elected to implement a co-remediation framework in place of pre-remediation, due in large part to the prohibitive cost of the latter, both in terms of financial resource, as well as student academic progress. Accompanying this evolution has been the expansion of the introductory mathematics curriculum beyond algebra to include statistics and quantitative reasoning. The present study discusses three distinct introductory mathematics courses at a large urban public M.S. granting institution in the U.S., with the goal of identifying the characteristics that correlate with success in each. Conditional probability and non-completion rate analyses were implemented to compare student performance in each course. Predictive models were then trained and validated, building insight concerning the differential relationships of demographic and academic covariates with course completion.
Keywords
Post-secondary remediation, General education mathematics, Binary classification, Model stacking
Full Text:
PDFReferences
Miller, K. L., & Suaray, K. N. (2023). Predicting student success in co-remediated general education mathematics courses at a large urban public university. International Journal of Education in Mathematics, Science, and Technology (IJEMST), 11(3), 586-611. https://doi.org/10.46328/ijemst.2782
DOI: https://doi.org/10.46328/ijemst.2782
Refbacks
- There are currently no refbacks.
Copyright (c) 2023 International Journal of Education in Mathematics, Science and Technology
International Journal of Education in Mathematics, Science and Technology (IJEMST)
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
ISSN: 2147-611X (Online)