期刊名称:Researchers World - Journal of Arts Science & Commerce
印刷版ISSN:2229-4686
电子版ISSN:2229-4686
出版年度:2019
卷号:10
期号:3
页码:1-12
DOI:10.18843/rwjasc/v10i3/01
出版社:Educational Research Multimedia & Publication
摘要:Classification and prediction are some of the capabilities of Data Mining. This study will
implement a classification model using the Fisher Linear Discriminant (FLD) function. After
the classification model is obtained, the model is used to predict the Grade Point Average
category (GPA-1st). The FLD classification models used are 9 models derived from
cumulative student data from 2008 to 2016 academic year. In the FLD model, GPA-1st is
used as the dependent variable, while the factors of high school location, high school status,
high school type, and English proficiency level are used as independent variables. These
models are used to predict the GPA-1st category for students in 2017. Crosstab tables are
used to measure the accuracy of the classification model and accuracy of the prediction model.
As the result, the accuracy average of the 9 classification models in students' GPA-1st is
68.67%. While the accuracy average of predictions using 9 models is 58.28%.
关键词:classification; prediction; crosstab table; Fisher Linear Discriminant (FLD)