Multivariate Adaptive Regression Splines (MARS) for Modeling Student Status at Universitas Terbuka

Siti Hadijah Hasanah
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引用次数: 1

Abstract

Multivariate Adaptive Regression Splines (MARS) used to model the active student’s status in the Department of Statistics at Universitas Terbuka and determine the factors that influence the response variable. This study consists of 9 variables, namely gender, age, education, marital status, job, initial registration year, number of registrations, credits, and GPA, but after modeling using the MARS method, the explanatory variable can affect the response variable is the initial registration year. Several registrations, GPA, and credits. Based on the results of the R output and using a 95% confidence interval, each base 1 to 10 function is partially significant with the p-value of the base 1-10 function being smaller than 0.05 and simultaneously with a smaller p-value. of 0.05, so that the above model has a significant effect partially or simultaneously on the response variable. From these results, it is concluded that the MARS model is suitable for determining the factors that affect the active status of students.
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多变量自适应回归样条(MARS)在特布卡大学学生状态建模中的应用
多变量自适应回归样条(MARS)用于对特布卡大学统计学系活跃学生的状态进行建模,并确定影响响应变量的因素。本研究由性别、年龄、受教育程度、婚姻状况、职业、初次注册年份、注册次数、学分、GPA 9个变量组成,但通过MARS方法建模后,能够影响响应变量的解释变量是初次注册年份。几个注册,GPA和学分。根据R输出的结果,使用95%的置信区间,每个基1至10函数部分显著,基1至10函数的p值小于0.05,同时p值较小。的0.05,使得上述模型对响应变量部分或同时产生显著影响。从这些结果可以看出,MARS模型适用于确定影响学生活跃状态的因素。
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