Hi all,
I'm running a Panel VAR model and am having a little trouble interpreting Hansen's J stat and ultimately which model to select.
I've used the command
, where $totlist is my list of endogenous variables. I've got 4 models so have done this 4 times which has generated the 4 model selection outputs:
My interpretation would be that the 2nd lag above would be optimal as it doesn't reject Hansen's null that overidentifying restrictions are valid, whereas the 1st lag does. Then the 2nd lag has the lowest BIC, AIC and QIC of the remaining possible specifications.
Would I have to pick the 3rd lag model here as it's the specification which doesn't reject Hansen's null at 10%, despite it having a lower J statistic and higher IC scores than the 1st and 2nd lag specifications?
Here I assume one would pick the 2nd lag specification using the same logic as for the first model?
Here I'd also assume we'd pick the 2nd lag specification?
I'm running a Panel VAR model and am having a little trouble interpreting Hansen's J stat and ultimately which model to select.
I've used the command
Code:
pvarsoc $totlist, pvaro(instl(1/5))
Code:
pvarsoc $totlist, pvaro(instl(1/5)) Running panel VAR lag order selection on estimation sample .... Selection order criteria Sample: 2011 - 2017 No. of obs = 2639 No. of panels = 377 Ave. no. of T = 7.000 +--------------------------------------------------------------------------+ | lag | CD J J pvalue MBIC MAIC MQIC | |-------+------------------------------------------------------------------| | 1 | -2.596933 65.13786 .0020818 -218.4757 -6.862139 -83.47689 | | 2 | -5.053263 31.64495 .2454891 -181.0652 -22.35505 -79.81612 | | 3 | -1.246003 23.18428 .1836075 -118.6225 -12.81572 -51.12309 | | 4 | .3191439 10.48746 .3124811 -60.41594 -7.512539 -26.66623 | +--------------------------------------------------------------------------+
Code:
pvarsoc $domlist, pvaro(instl(1/5)) Running panel VAR lag order selection on estimation sample .... Selection order criteria Sample: 2011 - 2017 No. of obs = 2639 No. of panels = 377 Ave. no. of T = 7.000 +--------------------------------------------------------------------------+ | lag | CD J J pvalue MBIC MAIC MQIC | |-------+------------------------------------------------------------------| | 1 | -.0752307 105.3864 9.96e-09 -178.2272 33.38636 -43.22839 | | 2 | -3.862367 50.55263 .0039265 -162.1576 -3.447369 -60.90843 | | 3 | -.0798814 28.17421 .0594531 -113.6326 -7.825792 -46.13317 | | 4 | .7180911 18.62677 .0285602 -52.27663 .6267652 -18.52692 | +--------------------------------------------------------------------------+
Code:
pvarsoc $tralist, pvaro(instl(1/5)) Running panel VAR lag order selection on estimation sample .... Selection order criteria Sample: 2011 - 2017 No. of obs = 2639 No. of panels = 377 Ave. no. of T = 7.000 +--------------------------------------------------------------------------+ | lag | CD J J pvalue MBIC MAIC MQIC | |-------+------------------------------------------------------------------| | 1 | -.6489056 73.37046 .000233 -210.2431 1.370459 -75.24429 | | 2 | -57.66134 28.93977 .3638259 -183.7704 -25.06023 -82.5213 | | 3 | -.499046 18.289 .4367726 -123.5178 -17.711 -56.01838 | | 4 | .4825675 8.501449 .4845053 -62.40195 -9.498551 -28.65224 | +--------------------------------------------------------------------------+
Code:
pvarsoc $comlist, pvaro(instl(1/5)) Running panel VAR lag order selection on estimation sample .... Selection order criteria Sample: 2011 - 2017 No. of obs = 2639 No. of panels = 377 Ave. no. of T = 7.000 +--------------------------------------------------------------------------+ | lag | CD J J pvalue MBIC MAIC MQIC | |-------+------------------------------------------------------------------| | 1 | -4.369977 66.75003 .001379 -216.8636 -5.249975 -81.86473 | | 2 | -2.193906 13.62676 .9846386 -199.0834 -40.37324 -97.83431 | | 3 | .1746443 14.51639 .6948614 -127.2904 -21.48361 -59.79098 | | 4 | .5633934 9.842786 .363362 -61.06061 -8.157214 -27.3109 | +--------------------------------------------------------------------------+
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