We encounter variables with little variation often in educational data mining (EDM) due to the demographics of higher education and the questions we ask. Yet, little work has examined how to analyze such data. Therefore, we conducted a simulation study using logistic regression, penalized regression, and random forest. We systematically varied the fraction of positive outcomes, feature imbalances, and odds ratios. We find the algorithms treat features with the same odds ratios differently based on the features' imbalance and the outcome imbalance. While none of the algorithms fully solved how to handle imbalanced data, penalized approaches such as Firth and Log-F reduced the difference between the built-in odds ratio and value determined by...
The use of technology and data analysis within the classroom has been a resourceful tool in order to...
Advances in technology have altered data collection and popularized large databases in areas includi...
Nowadays, researchers analyse student data to predict the graduation rate by looking at the characte...
Student academic accomplishment is the foremost focus of every educational institution. In developin...
Educational data mining is an emerging interdisciplinary research area involving both education and ...
Analytic tools are useful for detecting patterns in education data and providing insights about stud...
The tremendous growth in electronic educational data creates the need to have meaningful information...
Demographic features are commonly used in Educational Data Mining (EDM) research to predict at-risk ...
Demographic features are commonly used in Educational Data Mining (EDM) research to predict at-risk ...
Poor academic performance of students is a concern in the educational sector, especially if it leads...
Never before in the history of public education in the United States have schools been held to the l...
In the educational data mining (EDM) field, predicting student at-risk, student retention, dropout a...
There has been great advancement in the area of learning analytics as well as in the creation of met...
In the last decade Data mining (DM) has been applied in the field of education, and is an emerging i...
Predictive modeling using data mining methods for early identification of students at risk can be ve...
The use of technology and data analysis within the classroom has been a resourceful tool in order to...
Advances in technology have altered data collection and popularized large databases in areas includi...
Nowadays, researchers analyse student data to predict the graduation rate by looking at the characte...
Student academic accomplishment is the foremost focus of every educational institution. In developin...
Educational data mining is an emerging interdisciplinary research area involving both education and ...
Analytic tools are useful for detecting patterns in education data and providing insights about stud...
The tremendous growth in electronic educational data creates the need to have meaningful information...
Demographic features are commonly used in Educational Data Mining (EDM) research to predict at-risk ...
Demographic features are commonly used in Educational Data Mining (EDM) research to predict at-risk ...
Poor academic performance of students is a concern in the educational sector, especially if it leads...
Never before in the history of public education in the United States have schools been held to the l...
In the educational data mining (EDM) field, predicting student at-risk, student retention, dropout a...
There has been great advancement in the area of learning analytics as well as in the creation of met...
In the last decade Data mining (DM) has been applied in the field of education, and is an emerging i...
Predictive modeling using data mining methods for early identification of students at risk can be ve...
The use of technology and data analysis within the classroom has been a resourceful tool in order to...
Advances in technology have altered data collection and popularized large databases in areas includi...
Nowadays, researchers analyse student data to predict the graduation rate by looking at the characte...