Multilevel growth curve model;
Double serial correlation;
Student growth;
School effects;
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摘要:
Multilevel growth curve models for repeated measures data have become increasingly popular and stand as a flexible tool for investigating longitudinal change in students’ outcome variables. In addition, these models allow the estimation of school effects on students’ outcomes though making strong assumptions about the serial independence of level-1 residuals. This paper introduces a method which takes into account the serial correlation of level-1 residuals and also introduces such serial correlation at level-2 in a complex double serial correlation (DSC) multilevel growth curve model. The results of this study from both real and simulated data show a great improvement in school effects estimates compared to those that have previously been found using multilevel growth curve models without correcting for DSC for both the students’ status and growth criteria.
机构:
School of Statistics and Data Science,Nankai University
Department of Applied Mathematics,The Hong Kong Polytechnic UniversitySchool of Statistics and Data Science,Nankai University
Jin YANG
Chuan-hua WEI
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机构:
Department of Statistics,School of Science,Minzu University of ChinaSchool of Statistics and Data Science,Nankai University