Mixed-effect models are frequently used to control for the nonindependence of data points, for example, when repeated measures from the same individuals are available. The aim of these models is often to estimate fixed effects and to test their significance. This is usually done by including random intercepts, that is, intercepts that are allowed to vary between individuals. The widespread belief is that this controls for all types of pseudoreplication within individuals. Here we show that this is not the case, if the aim is to estimate effects that vary within individuals and individuals differ in their response to these effects. In these cases, random intercept models give overconfident estimates leading to conclusions that are not suppor...
Random effects models (that is, regressions with varying intercepts that are modeled with error) are...
A basic assumption in mixed revealed preference (RP)/stated preference (SP) estimation is that both ...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
Schielzeth H, Forstmeier W. Conclusions beyond support: overconfident estimates in mixed models. Beh...
There has been considerable and controversial research over the past two decades into how successful...
Mixed models are gaining popularity in psychology. For frequentist mixed models, previous research s...
We test the proposition that response bias can have two different bases; reflecting eitherdiffering ...
In applications of linear mixed-effects models, experimenters often desire uncertainty quantificatio...
Erev, Wallsten, and Budescu (1994) demonstrated that over- and underconfidence can be observed simul...
Mixed-effect models are flexible tools for researchers in a myriad of fields, but that flexibility c...
In psychology, researchers often predict a dependent variable (DV) consisting of multiple measuremen...
Mixed models may be defined with or without reference to sampling, and can be used to predict realiz...
The overconfidence observed in calibration studies has recently been questioned on both psychologica...
Overdispersion is common in models of count data in ecology and evolutionary biology, and can occur ...
Mixed effects models have become one of the major approaches to the analysis of longitudinal studies...
Random effects models (that is, regressions with varying intercepts that are modeled with error) are...
A basic assumption in mixed revealed preference (RP)/stated preference (SP) estimation is that both ...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
Schielzeth H, Forstmeier W. Conclusions beyond support: overconfident estimates in mixed models. Beh...
There has been considerable and controversial research over the past two decades into how successful...
Mixed models are gaining popularity in psychology. For frequentist mixed models, previous research s...
We test the proposition that response bias can have two different bases; reflecting eitherdiffering ...
In applications of linear mixed-effects models, experimenters often desire uncertainty quantificatio...
Erev, Wallsten, and Budescu (1994) demonstrated that over- and underconfidence can be observed simul...
Mixed-effect models are flexible tools for researchers in a myriad of fields, but that flexibility c...
In psychology, researchers often predict a dependent variable (DV) consisting of multiple measuremen...
Mixed models may be defined with or without reference to sampling, and can be used to predict realiz...
The overconfidence observed in calibration studies has recently been questioned on both psychologica...
Overdispersion is common in models of count data in ecology and evolutionary biology, and can occur ...
Mixed effects models have become one of the major approaches to the analysis of longitudinal studies...
Random effects models (that is, regressions with varying intercepts that are modeled with error) are...
A basic assumption in mixed revealed preference (RP)/stated preference (SP) estimation is that both ...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...