Dear All,
I am here with some basic questions which which might be very trivial for many in the forum, and my apologies for this. However, please let me know your thoughts and direct me correctly if I am wrong.
Here are results
.
In the above regression model (I have omitted a few variables here to show only main things), I am concerned about the continuous-continuous interaction "c.EPU##c.PROP_WIP_w" and I would like to ask following doubts
1) In the regression table, the coefficient of interaction (c.EPU#c.PROP_WIP_w) is insignificant with t Stats of 0.45 and p value 0.651. As is evident that interaction effect is not significant , is it necessary to test the significance of the interaction coeffecient through "test" or "testparm"?
2) I have used test c.EPU#c.PROP_WIP_w to check the significance and I could see almost same p-value (or are the really same) and Prob > F show that we cannot reject the null. Is this testing way correct
3) Among testparm testings, which one is correct?
Looking forward to some answers
I am here with some basic questions which which might be very trivial for many in the forum, and my apologies for this. However, please let me know your thoughts and direct me correctly if I am wrong.
Here are results
Code:
reghdfe F.REC_TA_w ///
> c.EPU##c.PROP_WIP_w ///
> GOVT_EFF GDP BUS_VOL FME ///
> , absorb (id year) cluster (id)
(dropped 727 singleton observations)
(MWFE estimator converged in 7 iterations)
HDFE Linear regression Number of obs = 86,321
Absorbing 2 HDFE groups F( 20, 9207) = 60.00
Statistics robust to heteroskedasticity Prob > F = 0.0000
R-squared = 0.8147
Adj R-squared = 0.7925
Within R-sq. = 0.0646
Number of clusters (id) = 9,208 Root MSE = 0.0512
(Std. err. adjusted for 9,208 clusters in id)
------------------------------------------------------------------------------------
| Robust
F.REC_TA_w | Coefficient std. err. t P>|t| [95% conf. interval]
-------------------+----------------------------------------------------------------
EPU | -.0002003 .0016535 -0.12 0.904 -.0034415 .0030409
PROP_WIP_w | -.0178172 .0194307 -0.92 0.359 -.0559056 .0202712
|
c.EPU#c.PROP_WIP_w | .0018114 .0039981 0.45 0.651 -.0060258 .0096486
|
GOVT_EFF | .0011215 .0001084 10.35 0.000 .0009091 .0013339
GDP | -.0013491 .0023814 -0.57 0.571 -.0060172 .0033191
BUS_VOL | .0001369 .0003306 0.41 0.679 -.0005112 .0007851
FME | .0149315 .006771 2.21 0.027 .0016589 .0282041
_cons | .2225589 .0240751 9.24 0.000 .1753664 .2697513
------------------------------------------------------------------------------------
Absorbed degrees of freedom:
-----------------------------------------------------+
Absorbed FE | Categories - Redundant = Num. Coefs |
-------------+---------------------------------------|
id | 9208 9208 0 *|
year | 18 1 17 |
-----------------------------------------------------+
* = FE nested within cluster; treated as redundant for DoF computation
.
Code:
test c.EPU#c.PROP_WIP_w ( 1) c.EPU#c.PROP_WIP_w = 0 F( 1, 9207) = 0.21 Prob > F = 0.6505
Code:
testparm c.EPU##c.PROP_WIP_w ( 1) EPU = 0 ( 2) PROP_WIP_w = 0 ( 3) c.EPU#c.PROP_WIP_w = 0 F( 3, 9207) = 2.51 Prob > F = 0.0568 testparm c.EPU#c.PROP_WIP_w ( 1) c.EPU#c.PROP_WIP_w = 0 F( 1, 9207) = 0.21 Prob > F = 0.6505
In the above regression model (I have omitted a few variables here to show only main things), I am concerned about the continuous-continuous interaction "c.EPU##c.PROP_WIP_w" and I would like to ask following doubts
1) In the regression table, the coefficient of interaction (c.EPU#c.PROP_WIP_w) is insignificant with t Stats of 0.45 and p value 0.651. As is evident that interaction effect is not significant , is it necessary to test the significance of the interaction coeffecient through "test" or "testparm"?
2) I have used test c.EPU#c.PROP_WIP_w to check the significance and I could see almost same p-value (or are the really same) and Prob > F show that we cannot reject the null. Is this testing way correct
3) Among testparm testings, which one is correct?
Looking forward to some answers
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