Mixed-effect models are flexible tools for researchers in a myriad of fields, but that flexibility comes at the cost of complexity and if users are not careful in how their model is specified, they could be making faulty inferences from their data. We argue that there is significant confusion around appropriate random effects to be included in a model given the study design, with researchers generally being better at specifying the fixed effects of a model, which map onto to their research hypotheses. To that end, we present an instructive framework for evaluating the random effects of a model in three different situations: (1) longitudinal designs; (2) factorial repeated measures; and (3) when dealing with multiple sources of variance. We ...
Mixed-effect models are frequently used to control for the nonindependence of data points, for examp...
Mixed effects models have become one of the major approaches to the analysis of longitudinal studies...
Mixed effect models have become very popular, especially for the analysis of longitudinal data. One ...
Experimental designs that sample both subjects and stimuli from a larger population need to account ...
Mixed-effect modeling is recommended for data with repeated measures, as often encountered in design...
BACKGROUND: In clinical trials a fixed effects research model assumes that the patients selected for...
University of Minnesota Ph.D. disseration. June 2010. Major: Educational Psychology. Advisor: Jeffre...
This chapter describes a class of statistical model that is able to account for most of the cases of...
Psychologists, psycholinguists, and other researchers using language stimuli have been struggling fo...
Nested data structures, in which conditions include multiple trials and are fully crossed with parti...
Combining statistical information across studies is a standard research tool in applied psychology. ...
Nonlinear mixed-effects models are frequently used for pharmacokinetic data analysis, and they accou...
We consider a well-known controversy that stems from the use of two mixed models for the analysis of...
In this paper, we develop a simple diagnostic test for the random-effects distribution in mixed mode...
This paper assesses the options available to researchers analysing multilevel (including longitudina...
Mixed-effect models are frequently used to control for the nonindependence of data points, for examp...
Mixed effects models have become one of the major approaches to the analysis of longitudinal studies...
Mixed effect models have become very popular, especially for the analysis of longitudinal data. One ...
Experimental designs that sample both subjects and stimuli from a larger population need to account ...
Mixed-effect modeling is recommended for data with repeated measures, as often encountered in design...
BACKGROUND: In clinical trials a fixed effects research model assumes that the patients selected for...
University of Minnesota Ph.D. disseration. June 2010. Major: Educational Psychology. Advisor: Jeffre...
This chapter describes a class of statistical model that is able to account for most of the cases of...
Psychologists, psycholinguists, and other researchers using language stimuli have been struggling fo...
Nested data structures, in which conditions include multiple trials and are fully crossed with parti...
Combining statistical information across studies is a standard research tool in applied psychology. ...
Nonlinear mixed-effects models are frequently used for pharmacokinetic data analysis, and they accou...
We consider a well-known controversy that stems from the use of two mixed models for the analysis of...
In this paper, we develop a simple diagnostic test for the random-effects distribution in mixed mode...
This paper assesses the options available to researchers analysing multilevel (including longitudina...
Mixed-effect models are frequently used to control for the nonindependence of data points, for examp...
Mixed effects models have become one of the major approaches to the analysis of longitudinal studies...
Mixed effect models have become very popular, especially for the analysis of longitudinal data. One ...