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Incorporating statistical and neural network approaches for student course satisfaction analysis and prediction

机译:结合统计和神经网络方法进行学生课程满意度分析和预测

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Students' perception on course satisfaction through student surveys has become more influential in institutional operations because their experience in study may affect not only the prospective student's decision in choosing the institution for their tertiary education, but also the retention of existing students. Student course satisfaction is a multivariate nonlinear problem. Neural network (NN) techniques have been successfully applied to approximating nonlinear functions in many disciplines, but there has been little information available in applying NN to the modelling of student course satisfaction. In this paper, based on the student survey results collected from 43 courses in 11 semesters from 2002 to 2007, statistical analysis and NN techniques are incorporated for establishing some dynamic models for analysing and predicting student course satisfaction. The factors identified from this process also allow new strategies to be drawn for improving course satisfaction in the future. This study shows that both the number of students (NS) enrolled to a course and the high distinction (HD) rate in final grading are the two most influential factors to student course satisfaction. The three-layer multilayer perceptron (MLP) models outperform the linear regressions in predicting student course satisfaction, with the best outcome being achieved by combining both NS and HD as the input to the networks.
机译:通过学生问卷调查,学生对课程满意度的认识已对机构运营产生了更大的影响,因为他们的学习经历不仅会影响准学生选择高等教育机构的决定,而且还会影响现有学生的保留。学生课程满意度是一个多元非线性问题。在许多学科中,神经网络(NN)技术已成功地应用于逼近非线性函数,但是在将NN用于学生课程满意度的建模方面,几乎没有可用的信息。本文基于2002年至2007年11个学期的43门课程的学生调查结果,结合统计分析和NN技术,建立了一些动态模型来分析和预测学生的课程满意度。从该过程中识别出的因素还允许制定新的策略,以提高将来的课程满意度。这项研究表明,参加课程的学生人数(NS)和最终成绩中的高分(HD)率都是影响学生课程满意度的两个最有影响力的因素。三层多层感知器(MLP)模型在预测学生的课程满意度方面胜过线性回归,通过将NS和HD两者作为网络输入,可以获得最佳结果。

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