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A comparative analysis of the effects of instructional design factors on student success in e-learning: multiple-regression versus neural networks

机译:教学设计因素对学生在电子学习中成功的影响的比较分析:多元回归与神经网络

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摘要

This study explores the relationship between the student performance and instructional design. The research was conducted at the E-Learning School at a university in Turkey. A list of design factors that had potential influence on student success was created through a review of the literature and interviews with relevant experts. From this, the five most import design factors were chosen. The experts scored 25 university courses on the extent to which they demonstrated the chosen design factors. Multiple regression and supervised artificial neural network (ANN) models were used to examine the relationship between student grade point averages and the scores on the five design factors. The results indicated that there is no statistical difference between the two models. Both models identified the use of examples and applications as the most influential factor. The ANN model provided more information and was used to predict the course-specific factor values required for a desired level of success.
机译:本研究探讨了学生表现与教学设计之间的关系。这项研究是在土耳其一所大学的电子学习学校进行的。通过回顾文献并与相关专家进行访谈,创建了对学生成功有潜在影响的设计因素清单。由此,选择了五个最重要的设计因素。专家们在证明所选设计因素的程度上对25门大学课程进行了评分。使用多元回归和监督人工神经网络(ANN)模型来检查学生平均成绩与五个设计因素得分之间的关​​系。结果表明两个模型之间没有统计学差异。两种模型都将示例和应用程序的使用确定为最有影响力的因素。人工神经网络模型提供了更多的信息,并被用于预测达到预期成功水平所需的特定于课程的因素值。

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