I don't quite understand what the p-value in this output means. I don't mean p-values as such, but in this case.
> Model 1: sl ~ le + ky > Model 2: sl ~ le Res.Df RSS Df Sum of Sq F Pr(>F) 1 97 0.51113 2 98 0.51211 -1 -0.00097796 0.1856 0.6676
I get something like that, and now I am wondering which model is the better fit. As there is only ONE and not TWO p-values I'm getting confused. I get different pvalues using summary(model1) or summary(model2)
(T being my indicator variable) and
if I do
this tests the null hypothesis
(Ha: alpha1!=alpha2)c(alpha being my intercept)
So it is tested whether it is better to have one intercept (=>
alpha1==alpha2), or two intercepts (
In this case we would now obviously reject the null Hypotheses, as the p-value is 0.6676.
This would mean we should rather stick with model
fm4, as it is more appropriate for our data.
Did I draw the conclusions right? I tried my very best, but I am not sure what the p-value means. As there is only on, this is what I thought it might mean. Can someone clear things up?