Hi all,
I am currently analysing the influence of the financial development on economic growth using system GMM. N =43, T=8 and set of control variables
I am trying to check weather the independent variable (fdxstwo ) might have a u-shaped / inverse u-shaped correlation to the dependent variable (rgdpg) with system GMM
Here are my results
According to P-value = 0.241 this means there is an Inverse U shape relation between financial development (fdxstwo) and economic growth (rgdpg). However, when I back to the GMM results I find the coefficient of the level financial development (fdxstwo) = -.4580117 has a negative sign and the squared one is positive (fdxsquartwo) = 0.0033699 meaning that the relationship is u-shaped AND THIS IS OPPSITE TO UTEST decision!
Do I just focus on the utest decision? If yes, why the Gmm give the opposite interpretation?
Please guide me to the correct understanding
Thank you
Badiah
I am currently analysing the influence of the financial development on economic growth using system GMM. N =43, T=8 and set of control variables
I am trying to check weather the independent variable (fdxstwo ) might have a u-shaped / inverse u-shaped correlation to the dependent variable (rgdpg) with system GMM
Here are my results
Code:
xtabond2 rgdpg rgdpg_lag1 ihs_inigdppc fdxstwo c.fdxsquartwo ihs_inf ihs_gfcf ihs_gov ihs_trd ihs_lbor y*, gmm(rgdpg ihs_inigdppc fdxstwo c.fdxsquartwo ihs_gfcf , lag(2 5) collapse eq(diff)) iv(ihs_inf ihs_gov ihs_lbor ihs_trd , eq(diff)) gmm(rgdpg fdxstwo c.fdxsquartwo ihs_gfcf, lag(1 1) collapse eq(level)) ivstyle(y*, equation(level)) twostep robust Favoring space over speed. To switch, type or click on mata: mata set matafavor speed, perm. year dropped due to collinearity yr_1 dropped due to collinearity yr_2 dropped due to collinearity yr_8 dropped due to collinearity Warning: Two-step estimated covariance matrix of moments is singular. Using a generalized inverse to calculate optimal weighting matrix for two-step estimation. Difference-in-Sargan/Hansen statistics may be negative. Dynamic panel-data estimation, two-step system GMM ------------------------------------------------------------------------------ Group variable: id Number of obs = 301 Time variable : year Number of groups = 43 Number of instruments = 35 Obs per group: min = 7 Wald chi2(15) = 304.78 avg = 7.00 Prob > chi2 = 0.000 max = 7 ------------------------------------------------------------------------------ | Corrected rgdpg | Coefficient std. err. z P>|z| [95% conf. interval] -------------+---------------------------------------------------------------- rgdpg_lag1 | -.012188 .1191046 -0.10 0.918 -.2456288 .2212528 ihs_inigdppc | 2.709269 4.068484 0.67 0.505 -5.264814 10.68335 fdxstwo | -.4580117 .1786356 -2.56 0.010 -.8081311 -.1078923 fdxsquartwo | .0033699 .0018742 1.80 0.072 -.0003035 .0070432 ihs_inf | -1.241957 .3137191 -3.96 0.000 -1.856835 -.6270785 ihs_gfcf | 15.39889 4.351249 3.54 0.000 6.870596 23.92718 ihs_gov | -2.381506 3.479245 -0.68 0.494 -9.200702 4.43769 ihs_trd | 6.915461 1.889015 3.66 0.000 3.213059 10.61786 ihs_lbor | -22.44103 8.464955 -2.65 0.008 -39.03204 -5.850023 year3 | -.0806661 .0669904 -1.20 0.229 -.211965 .0506327 yr_3 | .2723212 .3655125 0.75 0.456 -.4440702 .9887125 yr_4 | .2183402 .6200907 0.35 0.725 -.9970153 1.433696 yr_5 | -2.630467 .6420469 -4.10 0.000 -3.888855 -1.372078 yr_6 | -.954281 .5092936 -1.87 0.061 -1.952478 .0439161 yr_7 | -.9572508 .5601684 -1.71 0.087 -2.055161 .1406591 _cons | 174.9178 170.7205 1.02 0.306 -159.6883 509.5238 ------------------------------------------------------------------------------ Instruments for first differences equation Standard D.(ihs_inf ihs_gov ihs_lbor ihs_trd) GMM-type (missing=0, separate instruments for each period unless collapsed) L(2/5).(rgdpg ihs_inigdppc fdxstwo fdxsquartwo ihs_gfcf) collapsed Instruments for levels equation Standard year3 year yr_1 yr_2 yr_3 yr_4 yr_5 yr_6 yr_7 yr_8 _cons GMM-type (missing=0, separate instruments for each period unless collapsed) DL.(rgdpg fdxstwo fdxsquartwo ihs_gfcf) collapsed ------------------------------------------------------------------------------ Arellano-Bond test for AR(1) in first differences: z = -2.08 Pr > z = 0.038 Arellano-Bond test for AR(2) in first differences: z = -0.35 Pr > z = 0.725 ------------------------------------------------------------------------------ Sargan test of overid. restrictions: chi2(19) = 92.83 Prob > chi2 = 0.000 (Not robust, but not weakened by many instruments.) Hansen test of overid. restrictions: chi2(19) = 22.55 Prob > chi2 = 0.258 (Robust, but weakened by many instruments.) Difference-in-Hansen tests of exogeneity of instrument subsets: iv(ihs_inf ihs_gov ihs_lbor ihs_trd, eq(diff)) Hansen test excluding group: chi2(15) = 20.73 Prob > chi2 = 0.146 Difference (null H = exogenous): chi2(4) = 1.82 Prob > chi2 = 0.769 iv(year3 year yr_1 yr_2 yr_3 yr_4 yr_5 yr_6 yr_7 yr_8, eq(level)) Hansen test excluding group: chi2(12) = 18.83 Prob > chi2 = 0.093 Difference (null H = exogenous): chi2(7) = 3.72 Prob > chi2 = 0.812 . utest fdxstwo fdxsquartwo Specification: f(x)=x^2 Extreme point: 67.95693 Test: H1: U shape vs. H0: Monotone or Inverse U shape ------------------------------------------------- | Lower bound Upper bound -----------------+------------------------------- Interval | 12.9673 93.312 Slope | -.3706156 .1708864 t-value | -2.55363 .7023809 P>|t| | .0055767 .2414922 ------------------------------------------------- Overall test of presence of a U shape: t-value = 0.70 P>|t| = .241 .
Do I just focus on the utest decision? If yes, why the Gmm give the opposite interpretation?
Please guide me to the correct understanding
Thank you
Badiah
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