J. Peugh. Journal of school psychology, 48 (1):
85-112(February 2010)5521<m:linebreak></m:linebreak>JID: 0050303; RF: 31; 2009/09/07 received; 2009/09/08 accepted; 2009/10/06 aheadofprint; ppublish;<m:linebreak></m:linebreak>Multilevel.
DOI: 10.1016/j.jsp.2009.09.002
Abstract
Collecting data from students within classrooms or schools, and collecting data from students on multiple occasions over time, are two common sampling methods used in educational research that often require multilevel modeling (MLM) data analysis techniques to avoid Type-1 errors. The purpose of this article is to clarify the seven major steps involved in a multilevel analysis: (1) clarifying the research question, (2) choosing the appropriate parameter estimator, (3) assessing the need for MLM, (4) building the level-1 model, (5) building the level-2 model, (6) multilevel effect size reporting, and (7) likelihood ratio model testing. The seven steps are illustrated with both a cross-sectional and a longitudinal MLM example from the National Educational Longitudinal Study (NELS) dataset. The goal of this article is to assist applied researchers in conducting and interpreting multilevel analyses and to offer recommendations to guide the reporting of MLM analysis results.
%0 Journal Article
%1 Peugh2010
%A Peugh, James L
%D 2010
%J Journal of school psychology
%K Adolescent AnalysisofVariance Cross-SectionalStudies DataInterpretation EducationalStatus Female Humans LikelihoodFunctions LongitudinalStudies Male Models MultilevelAnalysis MultilevelAnalysis:methods ResearchDesign ResearchDesign:statistics&numericaldata SampleSize Schools SocioeconomicFactors Statistical Students Students:psychology Students:statistics&numericaldata
%N 1
%P 85-112
%R 10.1016/j.jsp.2009.09.002
%T A practical guide to multilevel modeling.
%U http://www.ncbi.nlm.nih.gov/pubmed/20006989
%V 48
%X Collecting data from students within classrooms or schools, and collecting data from students on multiple occasions over time, are two common sampling methods used in educational research that often require multilevel modeling (MLM) data analysis techniques to avoid Type-1 errors. The purpose of this article is to clarify the seven major steps involved in a multilevel analysis: (1) clarifying the research question, (2) choosing the appropriate parameter estimator, (3) assessing the need for MLM, (4) building the level-1 model, (5) building the level-2 model, (6) multilevel effect size reporting, and (7) likelihood ratio model testing. The seven steps are illustrated with both a cross-sectional and a longitudinal MLM example from the National Educational Longitudinal Study (NELS) dataset. The goal of this article is to assist applied researchers in conducting and interpreting multilevel analyses and to offer recommendations to guide the reporting of MLM analysis results.
%@ 1873-3506; 0022-4405
@article{Peugh2010,
abstract = {Collecting data from students within classrooms or schools, and collecting data from students on multiple occasions over time, are two common sampling methods used in educational research that often require multilevel modeling (MLM) data analysis techniques to avoid Type-1 errors. The purpose of this article is to clarify the seven major steps involved in a multilevel analysis: (1) clarifying the research question, (2) choosing the appropriate parameter estimator, (3) assessing the need for MLM, (4) building the level-1 model, (5) building the level-2 model, (6) multilevel effect size reporting, and (7) likelihood ratio model testing. The seven steps are illustrated with both a cross-sectional and a longitudinal MLM example from the National Educational Longitudinal Study (NELS) dataset. The goal of this article is to assist applied researchers in conducting and interpreting multilevel analyses and to offer recommendations to guide the reporting of MLM analysis results.},
added-at = {2023-02-03T11:44:35.000+0100},
author = {Peugh, James L},
biburl = {https://www.bibsonomy.org/bibtex/2fe5c8cb618a73543867891c4d699db92/jepcastel},
city = {University of Virginia, Curry School of Education, Charlottesville, VA 22903-2495, USA. jp3za@Virginia.edu},
doi = {10.1016/j.jsp.2009.09.002},
interhash = {8d36d9e286647de4414f886db6857ad5},
intrahash = {fe5c8cb618a73543867891c4d699db92},
isbn = {1873-3506; 0022-4405},
issn = {1873-3506},
journal = {Journal of school psychology},
keywords = {Adolescent AnalysisofVariance Cross-SectionalStudies DataInterpretation EducationalStatus Female Humans LikelihoodFunctions LongitudinalStudies Male Models MultilevelAnalysis MultilevelAnalysis:methods ResearchDesign ResearchDesign:statistics&numericaldata SampleSize Schools SocioeconomicFactors Statistical Students Students:psychology Students:statistics&numericaldata},
month = {2},
note = {5521<m:linebreak></m:linebreak>JID: 0050303; RF: 31; 2009/09/07 [received]; 2009/09/08 [accepted]; 2009/10/06 [aheadofprint]; ppublish;<m:linebreak></m:linebreak>Multilevel},
number = 1,
pages = {85-112},
pmid = {20006989},
timestamp = {2023-02-03T11:44:35.000+0100},
title = {A practical guide to multilevel modeling.},
url = {http://www.ncbi.nlm.nih.gov/pubmed/20006989},
volume = 48,
year = 2010
}