Hello Stata community,
I am trying to estimate the new law enacted in South Korea impact on the industrial accidents, which are the death rate and the injury rate.
In order to check the pre-parallel trend for the death rate and the injury rate, I used “eventdd.”, which is made by Stata users in Stata 18.
However, the results I tried failed with the collinearity.
Please refer to my codes and the results I mentioned before.
I should include “i.year.” to estimate the causality of my research topic, which is the time effect.
But, whenever I put “i.year.”, the collinearity occurs with the messages in the command window.
Notice that the problem for checking the pre-parallel trend would be the continued collinearity.
How can I do this situation in Stata?
How can I test the pre-parallel trend to use Difference-in-Difference using the “eventdd.”?
I would appreciate it if you could help me estimate the pre-parallel trend for checking the Difference-in-Difference.
Thank you for your help in advance.
Jun
I am trying to estimate the new law enacted in South Korea impact on the industrial accidents, which are the death rate and the injury rate.
In order to check the pre-parallel trend for the death rate and the injury rate, I used “eventdd.”, which is made by Stata users in Stata 18.
However, the results I tried failed with the collinearity.
Please refer to my codes and the results I mentioned before.
Code:
eventdd death_rate post i.year [pweight= mean_worker], timevar(timetotreat) ci(rcap) method(fe, cluster(id)) (sum of wgt is 18,021,670.016541) (sum of wgt is 18,021,670.016541) (sum of wgt is 18,021,670.016541) note: 2019.year omitted because of collinearity note: 2022.year omitted because of collinearity note: lead4 omitted because of collinearity note: lead3 omitted because of collinearity note: lead2 omitted because of collinearity note: lag0 omitted because of collinearity Fixed-effects (within) regression Number of obs = 278 Group variable: id Number of groups = 99 R-squared: Obs per group: Within = 0.0001 min = 1 Between = 0.0000 avg = 2.8 Overall = 0.0006 max = 6 F(5, 98) = 1.41 corr(u_i, Xb) = -0.0042 Prob > F = 0.2284 (Std. err. adjusted for 99 clusters in id) ------------------------------------------------------------------------------ | Robust death_rate | Coefficient std. err. t P>|t| [95% conf. interval] -------------+---------------------------------------------------------------- post | .1113053 .0731395 1.52 0.131 -.0338377 .2564482 | year | 2018 | -.0156951 .1819686 -0.09 0.931 -.3768059 .3454157 2019 | 0 (omitted) 2020 | -.0115101 .1112224 -0.10 0.918 -.2322273 .2092072 2021 | .0795687 .0817585 0.97 0.333 -.0826785 .2418158 2022 | 0 (omitted) | lead5 | -.2303968 .1721523 -1.34 0.184 -.5720276 .1112339 lead4 | 0 (omitted) lead3 | 0 (omitted) lead2 | 0 (omitted) lag0 | 0 (omitted) _cons | .7130373 .0682963 10.44 0.000 .5775056 .848569 -------------+---------------------------------------------------------------- sigma_u | 612.41442 sigma_e | 12.90711 rho | .99955601 (fraction of variance due to u_i) ------------------------------------------------------------------------------
I should include “i.year.” to estimate the causality of my research topic, which is the time effect.
But, whenever I put “i.year.”, the collinearity occurs with the messages in the command window.
Notice that the problem for checking the pre-parallel trend would be the continued collinearity.
How can I do this situation in Stata?
How can I test the pre-parallel trend to use Difference-in-Difference using the “eventdd.”?
I would appreciate it if you could help me estimate the pre-parallel trend for checking the Difference-in-Difference.
Thank you for your help in advance.
Jun
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