A machine learning-based usability evaluation method for eLearning systems

作者:

Highlights:

• Usability assessment of eLearning systems is a necessary and challenging problem.

• Machine learning techniques are effective tools for usability assessments.

• Pareto-like analysis can help devise severity index values.

• Sensitivity analysis can help rank the most important usability factors.

摘要

The research presented in this paper proposes a new machine learning-based evaluation method for assessing the usability of eLearning systems. Three machine learning methods (support vector machines, neural networks and decision trees) along with multiple linear regression are used to develop prediction models in order to discover the underlying relationship between the overall eLearning system usability and its predictor factors. A subsequent sensitivity analysis is conducted to determine the rank-order importance of the predictors. Using both sensitivity values along with the usability scores, a metric (called severity index) is devised. By applying a Pareto-like analysis, the severity index values are ranked and the most important usability characteristics are identified. The case study results show that the proposed methodology enhances the determination of eLearning system problems by identifying the most pertinent usability factors. The proposed method could provide an invaluable guidance to the usability experts as to what measures should be improved in order to maximize the system usability for a targeted group of end-users of an eLearning system.

论文关键词:eLearning (web-based learning/distance learning),Usability engineering,Severity index,Information fusion,Sensitivity analysis,Machine learning

论文评审过程:Received 21 May 2012, Revised 22 April 2013, Accepted 9 May 2013, Available online 17 May 2013.

论文官网地址:https://doi.org/10.1016/j.dss.2013.05.003