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Social and Behavioral Sciences Commons

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Full-Text Articles in Social and Behavioral Sciences

Factors That Influence Cross-Validation Of Hierarchical Linear Models, Tracy Widman May 2011

Factors That Influence Cross-Validation Of Hierarchical Linear Models, Tracy Widman

Educational Policy Studies Dissertations

While use of hierarchical linear modeling (HLM) to predict an outcome is reasonable and desirable, employing the model for prediction without first establishing the model’s predictive validity is ill-advised. Estimating the predictive validity of a regression model by cross-validation has been thoroughly researched, but there is a dearth of research investigating the cross-validation of hierarchical linear models. One of the major obstacles in cross-validating HLM is the lack of a measure of explained variance similar to the squared multiple correlation coefficient in regression analysis.

The purpose of this Monte Carlo simulation study is to explore the impact of sample size, …


Sample Size In Ordinal Logistic Hierarchical Linear Modeling, Allison M. Timberlake May 2011

Sample Size In Ordinal Logistic Hierarchical Linear Modeling, Allison M. Timberlake

Educational Policy Studies Dissertations

Most quantitative research is conducted by randomly selecting members of a population on which to conduct a study. When statistics are run on a sample, and not the entire population of interest, they are subject to a certain amount of error. Many factors can impact the amount of error, or bias, in statistical estimates. One important factor is sample size; larger samples are more likely to minimize bias than smaller samples. Therefore, determining the necessary sample size to obtain accurate statistical estimates is a critical component of designing a quantitative study.

Much research has been conducted on the impact of …


Power And Bias In Hierarchical Linear Growth Models: More Measurements For Fewer People, Regine Haardoerfer Feb 2010

Power And Bias In Hierarchical Linear Growth Models: More Measurements For Fewer People, Regine Haardoerfer

Educational Policy Studies Dissertations

Hierarchical Linear Modeling (HLM) sample size recommendations are mostly made with traditional group-design research in mind, as HLM as been used almost exclusively in group-design studies. Single-case research can benefit from utilizing hierarchical linear growth modeling, but sample size recommendations for growth modeling with HLM are scarce and generally do not consider the sample size combinations typical in single-case research. The purpose of this Monte Carlo simulation study was to expand sample size research in hierarchical linear growth modeling to suit single-case designs by testing larger level-1 sample sizes (N1), ranging from 10 to 80, and smaller level-2 sample sizes …