TY - GEN
T1 - Predicting student success using analytics in course learning management systems
AU - Olama, Mohammed M.
AU - Thakur, Gautam
AU - McNair, Allen W.
AU - Sukumar, Sreenivas R.
PY - 2014
Y1 - 2014
N2 - Educational data analytics is an emerging discipline, concerned with developing methods for exploring the unique types of data that come from the educational context. For example, predicting college student performance is crucial for both the student and educational institutions. It can support timely intervention to prevent students from failing a course, increasing efficacy of advising functions, and improving course completion rate. In this paper, we present the efforts carried out at Oak Ridge National Laboratory (ORNL) toward conducting predictive analytics to academic data collected from 2009 through 2013 and available in one of the most commonly used learning management systems, called Moodle. First, we have identified the data features useful for predicting student outcomes such as students' scores in homework assignments, quizzes, exams, in addition to their activities in discussion forums and their total GPA at the same term they enrolled in the course. Then, Logistic Regression and Neural Network predictive models are used to identify students as early as possible that are in danger of failing the course they are currently enrolled in. These models compute the likelihood of any given student failing (or passing) the current course. Numerical results are presented to evaluate and compare the performance of the developed models and their predictive accuracy.
AB - Educational data analytics is an emerging discipline, concerned with developing methods for exploring the unique types of data that come from the educational context. For example, predicting college student performance is crucial for both the student and educational institutions. It can support timely intervention to prevent students from failing a course, increasing efficacy of advising functions, and improving course completion rate. In this paper, we present the efforts carried out at Oak Ridge National Laboratory (ORNL) toward conducting predictive analytics to academic data collected from 2009 through 2013 and available in one of the most commonly used learning management systems, called Moodle. First, we have identified the data features useful for predicting student outcomes such as students' scores in homework assignments, quizzes, exams, in addition to their activities in discussion forums and their total GPA at the same term they enrolled in the course. Then, Logistic Regression and Neural Network predictive models are used to identify students as early as possible that are in danger of failing the course they are currently enrolled in. These models compute the likelihood of any given student failing (or passing) the current course. Numerical results are presented to evaluate and compare the performance of the developed models and their predictive accuracy.
KW - Educational data mining
KW - Feedforward neural network
KW - Learning management systems
KW - Logistic regression
KW - Predictive analytics
UR - http://www.scopus.com/inward/record.url?scp=84906342325&partnerID=8YFLogxK
U2 - 10.1117/12.2050641
DO - 10.1117/12.2050641
M3 - Conference contribution
AN - SCOPUS:84906342325
SN - 9781628410594
T3 - Proceedings of SPIE - The International Society for Optical Engineering
BT - Next-Generation Analyst II
PB - SPIE
T2 - Next-Generation Analyst II
Y2 - 6 May 2014 through 6 May 2014
ER -