Hello Sebastian,
I have some additional questions about the use of xtdpdbc.
1. When I use two lagged dependent variables in one of my projects, the coefficient of the first lag is greater than 1.00. Is this a problem, as I believe it would be if I were using xtdpdgmm? If I use only one lag, the coefficient is well below 1.00. Does that suggest that I should use only the first lag? Below are the results I get, first using only one lag and then two lags.
2. As seen in the results above, the coefficient of x1 (my main variable of interest) for the current period is positive and statistically significant, but not much greater than the coefficient of the lag of x1, which is negatively signed. When I calculate the long-run effects of x1 (in the manner discussed in earlier posts), the long-run coefficient is not statistically significant. Do these results suggest that x1 has a short-run effect on y, but this effect does not increase over time (in other words, no long-run effect)?
Thanks.
I have some additional questions about the use of xtdpdbc.
1. When I use two lagged dependent variables in one of my projects, the coefficient of the first lag is greater than 1.00. Is this a problem, as I believe it would be if I were using xtdpdgmm? If I use only one lag, the coefficient is well below 1.00. Does that suggest that I should use only the first lag? Below are the results I get, first using only one lag and then two lags.
Code:
. xtdpdbc y l(0/1).(x1 x2 x3 x4 x5 x6 x7 ) if l2.y~=., fe vce(robust) lags(1) teffects
Bias-corrected estimation
Iteration 0: f(b) = .00080012
Iteration 1: f(b) = 4.311e-06
Iteration 2: f(b) = 6.914e-10
Iteration 3: f(b) = 2.391e-16
Group variable: ccode Number of obs = 970
Time variable: year Number of groups = 67
Obs per group: min = 5
avg = 14.47761
max = 19
(Std. err. adjusted for clustering on ccode)
------------------------------------------------------------------------------
| Robust
y | Coefficient std. err. z P>|z| [95% conf. interval]
-------------+----------------------------------------------------------------
y |
L1. | .9505701 .032202 29.52 0.000 .8874553 1.013685
|
x1 |
--. | .0338362 .0119252 2.84 0.005 .0104632 .0572092
L1. | -.0314495 .0113423 -2.77 0.006 -.0536799 -.0092191
|
x2 |
--. | -.0080593 .0107437 -0.75 0.453 -.0291165 .0129979
L1. | .0077397 .0089561 0.86 0.387 -.0098139 .0252934
|
x3 |
--. | .0095416 .0031686 3.01 0.003 .0033314 .0157519
L1. | -.0025377 .0022687 -1.12 0.263 -.0069842 .0019088
|
x4 |
--. | -.0388867 .0131287 -2.96 0.003 -.0646184 -.013155
L1. | .0260135 .0127738 2.04 0.042 .0009773 .0510498
|
x5 |
--. | -.0077469 .0040453 -1.92 0.055 -.0156755 .0001817
L1. | .0006256 .0027068 0.23 0.817 -.0046797 .0059309
|
x6 |
--. | .0041924 .0150888 0.28 0.781 -.025381 .0337659
L1. | -.0073131 .0154181 -0.47 0.635 -.037532 .0229058
|
x7 |
--. | -.0016741 .0025556 -0.66 0.512 -.006683 .0033348
L1. | .0040669 .0030768 1.32 0.186 -.0019636 .0100973
|
year |
2001 | .0000659 .0155769 0.00 0.997 -.0304642 .030596
2002 | .0261921 .016956 1.54 0.122 -.007041 .0594253
2003 | .0267463 .0191526 1.40 0.163 -.0107922 .0642848
2004 | .0032066 .0168039 0.19 0.849 -.0297284 .0361416
2005 | -.0096127 .0176495 -0.54 0.586 -.0442051 .0249797
2006 | -.0034658 .0165419 -0.21 0.834 -.0358874 .0289558
2007 | .0105695 .0185388 0.57 0.569 -.0257658 .0469048
2008 | .0033926 .0184238 0.18 0.854 -.0327174 .0395025
2009 | .0058206 .0181105 0.32 0.748 -.0296753 .0413166
2010 | .0232615 .0180021 1.29 0.196 -.0120219 .0585449
2011 | -.0081063 .0219142 -0.37 0.711 -.0510572 .0348447
2012 | -.0076749 .0186275 -0.41 0.680 -.0441842 .0288343
2013 | -.0162198 .0196031 -0.83 0.408 -.0546413 .0222016
2014 | -.0000364 .0185574 -0.00 0.998 -.0364082 .0363354
2015 | .0054735 .0213165 0.26 0.797 -.0363061 .0472531
2016 | -.0096166 .0187961 -0.51 0.609 -.0464562 .0272231
2017 | -.0080846 .0166891 -0.48 0.628 -.0407945 .0246254
2018 | .0112082 .0158973 0.71 0.481 -.0199498 .0423663
|
_cons | .0335686 .0215907 1.55 0.120 -.0087484 .0758855
------------------------------------------------------------------------------
. xtdpdbc y l(0/1).(x1 x2 x3 x4 x5 x6 x7 ) if l2.y~=., fe vce(robust) lags(2) teffects
Bias-corrected estimation
Iteration 0: f(b) = .00088917
Iteration 1: f(b) = 3.530e-06
Iteration 2: f(b) = 6.444e-09
Iteration 3: f(b) = 3.986e-14
Group variable: ccode Number of obs = 970
Time variable: year Number of groups = 67
Obs per group: min = 5
avg = 14.47761
max = 19
(Std. err. adjusted for clustering on ccode)
------------------------------------------------------------------------------
| Robust
y | Coefficient std. err. z P>|z| [95% conf. interval]
-------------+----------------------------------------------------------------
y |
L1. | 1.079941 .0932062 11.59 0.000 .8972602 1.262622
L2. | -.1456414 .0836234 -1.74 0.082 -.3095402 .0182574
|
x1 |
--. | .0320216 .0110966 2.89 0.004 .0102727 .0537705
L1. | -.0286191 .0104707 -2.73 0.006 -.0491414 -.0080969
|
x2 |
--. | -.008389 .0107657 -0.78 0.436 -.0294894 .0127114
L1. | .0072774 .0091959 0.79 0.429 -.0107462 .0253011
|
x3 |
--. | .0089407 .0029207 3.06 0.002 .0032162 .0146653
L1. | -.0033645 .0024326 -1.38 0.167 -.0081322 .0014032
|
x4 |
--. | -.0340336 .0114255 -2.98 0.003 -.0564272 -.01164
L1. | .0218265 .0107334 2.03 0.042 .0007895 .0428635
|
x5 |
--. | -.0076639 .0040157 -1.91 0.056 -.0155345 .0002066
L1. | .0015686 .0024271 0.65 0.518 -.0031883 .0063255
|
x6 |
--. | .0032186 .0129516 0.25 0.804 -.022166 .0286032
L1. | -.0054722 .0131681 -0.42 0.678 -.0312811 .0203367
|
x7 |
--. | .0000721 .0023317 0.03 0.975 -.004498 .0046422
L1. | .002005 .0022469 0.89 0.372 -.0023988 .0064088
|
year |
2001 | -.0019082 .0170997 -0.11 0.911 -.0354231 .0316066
2002 | .0238397 .0169462 1.41 0.159 -.0093743 .0570537
2003 | .0222379 .0199436 1.12 0.265 -.0168507 .0613266
2004 | .0014419 .0170003 0.08 0.932 -.0318781 .0347619
2005 | -.0093809 .0171457 -0.55 0.584 -.0429858 .0242239
2006 | -.0018028 .0158745 -0.11 0.910 -.0329161 .0293106
2007 | .0114593 .0180345 0.64 0.525 -.0238878 .0468063
2008 | .0022069 .0183826 0.12 0.904 -.0338223 .0382361
2009 | .0035213 .0174704 0.20 0.840 -.03072 .0377627
2010 | .022896 .0177357 1.29 0.197 -.0118653 .0576572
2011 | -.0093328 .0220228 -0.42 0.672 -.0524966 .0338311
2012 | -.0064383 .0175773 -0.37 0.714 -.0408892 .0280127
2013 | -.0144945 .0191387 -0.76 0.449 -.0520057 .0230167
2014 | .0028155 .018004 0.16 0.876 -.0324716 .0381026
2015 | .0046752 .0206528 0.23 0.821 -.0358035 .0451539
2016 | -.0102328 .0179129 -0.57 0.568 -.0453415 .0248758
2017 | -.0059206 .0167213 -0.35 0.723 -.0386939 .0268526
2018 | .0131007 .0157716 0.83 0.406 -.0178111 .0440125
|
_cons | .0433748 .0208475 2.08 0.037 .0025145 .0842351
------------------------------------------------------------------------------
.
Thanks.

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