Hello everybody 
I did measure the DiD estimation via: reg gl fa ## ki, r
The output is:
(1)
Number of obs = 152
F( 3, 34861) = 2.03
Prob > F = 0.1073
R-squared = 0.0002
Root MSE = 20.687
fa1#ki
1 1 P>|t| = 0,032; Coef=0,8; SD=0,4
(2)
Number of obs = 148
F( 3, 52579) = 3.70
Prob > F = 0.0112
R-squared = 0.0002
Root MSE = 20.005
fa2#ki
1 1 P>|t| = 0,031; Coef=0,9; SD=0,4
Now my questions would be:
1. Do I have to discard the model (1) because Prob> F is not significant? Shouldn't the Prob>F value only say whether R2 as such is valid or not?
2. BOTH models have a very very small R2. How do I handle this? (2) is significant, but only predicts gl in about 0.02%? Would I have to stop further calculations at this point? Or shall I go on due to its significance?
3. While R2 is very small, Root MSE is very large. How do I deal with this relationship?
4. Moreover, regarding the reporting of my data: Can I use p instead of P> | t | ? (e.g. p = 0.031 instead of P> | t | = 0.031)
To me my outcomes seem to be a bit contradictory. And I am not that sure about how to further proceed.
Up to now, I mainly use the Princeton pdf-slides to interpret my data: http://www.princeton.edu/~otorres/DID101.pdf & https://www.princeton.edu/~otorres/Panel101.pdf.
It would be great if someone knows how to handle the data and might help me.
Thanks in advance!

I did measure the DiD estimation via: reg gl fa ## ki, r
The output is:
(1)
Number of obs = 152
F( 3, 34861) = 2.03
Prob > F = 0.1073
R-squared = 0.0002
Root MSE = 20.687
fa1#ki
1 1 P>|t| = 0,032; Coef=0,8; SD=0,4
(2)
Number of obs = 148
F( 3, 52579) = 3.70
Prob > F = 0.0112
R-squared = 0.0002
Root MSE = 20.005
fa2#ki
1 1 P>|t| = 0,031; Coef=0,9; SD=0,4
Now my questions would be:
1. Do I have to discard the model (1) because Prob> F is not significant? Shouldn't the Prob>F value only say whether R2 as such is valid or not?
2. BOTH models have a very very small R2. How do I handle this? (2) is significant, but only predicts gl in about 0.02%? Would I have to stop further calculations at this point? Or shall I go on due to its significance?
3. While R2 is very small, Root MSE is very large. How do I deal with this relationship?
4. Moreover, regarding the reporting of my data: Can I use p instead of P> | t | ? (e.g. p = 0.031 instead of P> | t | = 0.031)
To me my outcomes seem to be a bit contradictory. And I am not that sure about how to further proceed.
Up to now, I mainly use the Princeton pdf-slides to interpret my data: http://www.princeton.edu/~otorres/DID101.pdf & https://www.princeton.edu/~otorres/Panel101.pdf.
It would be great if someone knows how to handle the data and might help me.
Thanks in advance!

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