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http://dx.doi.org/10.5392/IJoC.2019.15.3.007

Analysis of 'Better Class' Characteristics and Patterns from College Lecture Evaluation by Longitudinal Big Data  

Nam, Min-Woo (Department of Education Daejeon University)
Cho, Eun-Soon (Department of Education Mokwon University)
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Abstract
The purpose of this study was to analyze characteristics and patterns of 'better class' by using the longitudinal text mining big data analysis technique from subjective lecture evaluation comments. First, this study classified upper 30% classes to deduce certain characteristics and patterns from every five-year subjective text data for 10 years. A total of 47,177courses (100%) from spring semester 2005 to fall semester 2014 were analyzed from a university at a metropolitan city in the mid area of South Korea. This study extracted meaningful words such as good, course, professor, appreciation, lecture, interesting, useful, know, easy, improvement, progress, teaching material, passion, and concern from the order of frequency 2005-2009. The other set of words were class, appreciation, professor, good, course, interesting, understanding, useful, help, student, effort, thinking, not difficult, explanation, lecture, hard, pleasant, easy, study, examination, like, various, fun, and knowledge 2010-2014. This study suggests that the characteristics and patterns of 'better class' at college, should be analyzed according to different academic code such as liberal arts, fine arts, social science, engineering, math and science, and etc.
Keywords
Course Evaluation; Longitudinal Big Data; Text Mining; Better Class' Characteristics;
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