A Regression Model To Predict The Risk Of Incomplete Grading Of Student Assessments In Higher Education Institutions
Abstract
The accuracy and completeness of student assessment data are paramount in higher education
institutions, serving as a cornerstone for informed decision-making, equitable education, and
student success. However, the issue of incomplete grading, where grades for assessments are
missing or inaccurate, poses a significant challenge. This research presents a regression model
designed to predict the risk of incomplete grading of student assessments in higher education
institutions. By leveraging historical data, the model identifies factors contributing to incomplete
grading, such as grading errors, data entry issues, and technological challenges. Moreover, it
examines the consequences of incomplete grading, encompassing student well-being, academic
performance, and institutional accountability. The model, built using a comprehensive dataset
and machine learning techniques, serves as a valuable tool for educational institutions to
proactively address and mitigate the issue of incomplete grading. The research targeted a
population of 367 and higher education students from Kenyan universities. Online questionnaires
were used to get data from the respondents and SPSS was used to convert data into numerical
values. The data collected was analyzed using python data analysis tool to identify patterns and
generate the model. The source-code was written in Python. The ANOVA statistic showed that
the independent variables are significant to the dependent variable. Subsequently, the
independent variables in the study have a significant impact on the dependent variable of
Sustainable prediction of incomplete grading. The findings of the research are significant to the
education sector as it adds knowledge that will help guide the institutions on how to manage missing marks.