Title
Enhancing Online Learning Performance: An Application of Data Mining Methods
Abstract
Recently web-based educational systems collect vast amounts of data on user patterns, and data mining methods can be applied to these databases to discover interesting associations based on students' features and the actions taken by students in solving homework and exam problems. The main purpose of data mining is to discover the hidden relationships among the data points within given data sets. Classification has emerged as an popular data mining task to find a model for grouping the data points based on extracted features of the training samples. This paper proposes a model for feature importance mining within a web-based educational system and represents an approach for classifying students in order to predict their final grades based on features extracted from logged data in the online educational system. A combination of multiple classifiers leads to significant improvement in classification performance. By weighing feature vectors representing feature importance using a Genetic Algorithm we can optimize the prediction accuracy and obtain significant improvement over raw classification. This approach is easily adaptable to different types of online courses, different population sizes, and allows for different features to be analyzed. This work represents a rigorous application of known classifiers as a means of analyzing and comparing use and performance of students who have taken a technical course that was partially/completely administered via the web.
Year
Venue
Keywords
2004
CATE
index terms,data mining,genetic algorithm,web-based educational system,classification fusion,feature vector,online education,feature extraction,population size,indexing terms
Field
DocType
Citations 
Data point,Online learning,Data mining,Population,Feature vector,Data set,Data stream mining,Computer science,Artificial intelligence,Educational systems,Genetic algorithm,Machine learning
Conference
6
PageRank 
References 
Authors
1.53
9
3
Name
Order
Citations
PageRank
Behrouz Minaei-Bidgoli160557.30
Gerd Kortemeyer2647.05
William F. Punch385851.70