I have a very simple stat question probably.
So, I am fitting linear mixed models like this:
lme(dependent ~ Group + Sex + Age + npgs, data=boookclub, random = ~ 1| subject)
Group is a factor variable with levels = 0, 1 , 2 , 3
The dependent are continuous variables standardized (mean 0) and the others are covariates with sex being factor, with Male/Female levels, Age being numerical, and npgs being numerical continuous standardized as well.
When I get the table with beta, standard error, t and p values, I get this:
Value Std.Error DF t-value p-value
(Intercept) -0.04550502 0.02933385 187 -1.551280 0.0025
Group1 0.04219801 0.03536929 181 1.193069 0.2344
Group2 0.03350827 0.03705896 181 0.904188 0.3671
Group3 0.00192119 0.03012654 181 0.063771 0.9492
SexMale 0.03866387 0.05012901 181 0.771287 0.4415
Age -0.00011675 0.00148684 181 -0.078520 0.9375
npgs 0.15308844 0.01637163 181 9.350835 0.0000
SexMale:Age 0.00492966 0.00276117 181 1.785352 0.0759
My problem is: how do I get the beta of Group0? In this case the intercept is Group0 but also the average of npgs, being npgs standardized. How do I get the Beta of Group0? And how can I check if Group0 is significantly associated to the dependent? I'd like to see the effect of all Group levels.
Thanks