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Recent Posts
 Getting started — loading data, writing and saving scripts January 16, 2014
 Getting started – getting helped January 16, 2014
 Getting started — Installation of RStudio and some packages + using ggplot() to make a simple plot January 16, 2014
 Postgraduate data analysis and interpretation January 16, 2014
 Mixedeffects modeling — four hour workshop — part IV: LMEs November 5, 2013
Tag Archives: mixed effects
Modelling – mixed effects – concepts
I am going to take another shot at considering mixed effects modelling. This time from a perspective closer to my starting point. I first learnt about mixedeffects modelling through reading about it in, I think, some paper or chapter by … Continue reading
Posted in 16. Modelling  mixedeffects
Tagged anova(), F', lmer(), minF', mixed effects, mixede, regression
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Mixed effects – continuing the extended example
As noted in a previous post, our mixed effects analysis of the ML lexical decision data suggested that RTs were influenced by significant effects due to: cAge + cART + cTOWRENW + cLength + cOLD + cBG_Mean + cLgSUBTLCD + … Continue reading
Modelling – mixed effects – concepts
In the previous post, we ran through an extended example of a mixedeffects modelling analysis of the ML lexical decision data. We ended the post by getting pvalues for the effects of the predictors included in our model. That was … Continue reading
Posted in 16. Modelling  mixedeffects
Tagged hierarchical, mixed effects, multilevel
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