Analisis Skor Literasi Membaca Siswa Indonesia Menggunakan Linier Mixed Models

Vera Maya Santi, S. Azzahra, Dania Siregar
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Abstract

The linear mixed models is a development of the linear model which includes both fixed and random effects in the model. Random effect in the model is used to model complex data that has a grouping structure. The grouping structure can occur because the same observations are measured repeatedly or each observation is measured only once but these observations have some form of group structure. Students who participate in the Program for International Student Assessment (PISA) are nested in several schools, so the PISA data structure is quite complex and requires a more in-depth analysis. Quantitative studies on PISA, especially in reading literacy, are still rarely done. The purpose of this study is to determine what factors effect the Indonesian student’s PISA reading literacy scores using a linear mixed model approach with school being used as a random effect in the model. The findings of the study are that the factors that affects Indonesian student’s PISA reading literacy scores are the class being taken, gender, mother's highest education, facilities at home, school entry age, student discipline and failed a grade. The result of the estimation of random effect variance which is not equal to zero indicates that there is a random effect from the student’s school on PISA reading literacy scores. Based on model diagnostics and parameter testing, it was concluded that the model obtained is fitted in modeling Indonesian student’s PISA reading literacy scores.
使用线性混频器分析印尼学生阅读读写成绩
线性混合模型是在线性模型的基础上发展起来的,它同时包含了模型中的固定效应和随机效应。利用模型中的随机效应对具有分组结构的复杂数据进行建模。分组结构可以发生,因为相同的观测值被反复测量,或者每个观测值只被测量一次,但这些观测值具有某种形式的组结构。参加国际学生评估项目(PISA)的学生嵌套在几所学校,因此PISA的数据结构相当复杂,需要更深入的分析。关于PISA的定量研究,尤其是阅读能力方面的研究,仍然很少有人做。本研究的目的是确定哪些因素影响印尼学生的PISA阅读素养分数使用线性混合模型方法,学校被用作模型中的随机效应。研究发现,影响印尼学生PISA阅读能力分数的因素是所选班级、性别、母亲的最高教育程度、家里的设施、入学年龄、学生纪律和不及格。随机效应方差的估计结果不等于零,表明学生的学校对PISA阅读素养成绩存在随机效应。通过模型诊断和参数检验,得出模型拟合印尼学生PISA阅读素养成绩的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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