Mining students’ behavior in web-based learning programs
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摘要
There has been a proliferation of web-based learning programs (WBLPs). Unlike traditional computer-based learning programs, WBLPs are used by a population of learners who have diverse background. How different learners access the WBLPs has been investigated by several studies, which indicate that cognitive style is an important factor that influences learners’ preferences. However, these studies mainly use statistical methods to analyze learners’ preferences. In this paper, we propose to analyze learners’ preferences with a data mining technique. Findings in our study show that Field Independent learners frequently use backward/forward buttons and spent less time for navigation. On the other hand, Field Dependent learners often use main menu and have more repeated visiting. Implications for these findings are discussed.
论文关键词:Cognitive styles,Data mining,Field dependence,Web-based learning
论文评审过程:Available online 4 March 2008.
论文官网地址:https://doi.org/10.1016/j.eswa.2008.02.054