Hello everyone, 
Up to now, I ran Random-Effects Models. Due to quite small outcomes wether significances I struggle with the interpretations. I have quite similar problems with the DiD esmimation and the same dataset. Might it be a problem with the data?
Input: xtreg ..., re (proofed by hausman & LM)
Output:
Random-effects GLS
Group variable: per
[…]
Obs per group: min = 7
avg = 8.0
max = 16
R-sq: within = 0.0000
between = 0.0523
overall = 0.0214
Wald chi2(11) = 55.00
Prob > chi2 = 0.0000
corr(u_i, X) = 0 (assumed)
My questions would be:
The modelfits and the interpretation represents a real hurdle form me.
Thank you very much in advance!

Up to now, I ran Random-Effects Models. Due to quite small outcomes wether significances I struggle with the interpretations. I have quite similar problems with the DiD esmimation and the same dataset. Might it be a problem with the data?
Input: xtreg ..., re (proofed by hausman & LM)
Output:
Random-effects GLS
Group variable: per
[…]
Obs per group: min = 7
avg = 8.0
max = 16
R-sq: within = 0.0000
between = 0.0523
overall = 0.0214
Wald chi2(11) = 55.00
Prob > chi2 = 0.0000
corr(u_i, X) = 0 (assumed)
My questions would be:
- I have about 10 independent variables in that -re- model. Does the modelfit count for each of those variables nevertheless? So if the model predicts the dependent variable e.g. to 10% each of my variable predicts the dependent variable to 10%? That doesn’t really make sense to me.
- Due to the fact that I have quite a lot independent variables, might that be a reason for the rather small R2? So can I take it for granted or isn’t it that precise or even valid/relevant anymore?
I have read that I had to take care with the interpretation of R2, because data may be quite different, although the R2-outcome stays the same. - The question that arises for me is whether - with such a small predictive value, even if the model is significant - I can expect a real effect of my independent variables? Does the coefficient is more important than R2? So how do I predict a quite high coefficient although the R2value might be quite small for example? Or is the coefficient irrelevant in this context? Then it wouldn’t matter if the coefficient were a significant value of -coef.=4.52 or coef.=-0.002, because in any cases the variable would only makes a 2.1% prediction for the dependent varaible anyway.
- Prob > chi2 is significant. That means I can declare the -re- as „valid“? Or would I have to call it differently?
- Within my persons the my output can predicted the effect on my dependent variable of 0% - so it can’t predict it? Between the single persons (so the differences between person A and person B) are predictable to 5,23% and over the whole dataset (so for every single line in my dataset) to 0,214%?
- corr is "0". In my -fe- models it’s above 0. FE Modellen war corr. immer größer null. Is this a problem?
The modelfits and the interpretation represents a real hurdle form me.
Thank you very much in advance!

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