Hello everyone,
Hope you all are safe and well during these turbulent times. I have a quick question. I'm trying to make heads or tails of the output from the margins command.
Here are two other links that I found helpful:
1. https://stats.stackexchange.com/ques.../243463#243463
2. https://www.statalist.org/forums/for...centage-points
Here is my output from a binary response model (dependent variable takes values 0 or 1), thus the marginal effect is in a percentage point change. My explanatory variable is logged, hence leaving the 'dx' alone in the calculation.
Question: How do I reconcile the two effects? It doesn't makes sense to call for an elasticity (eydx) when y is already in proportional change format, but I'm not sure how to reconcile. Thanks for any and all help!
Hope you all are safe and well during these turbulent times. I have a quick question. I'm trying to make heads or tails of the output from the margins command.
Here are two other links that I found helpful:
1. https://stats.stackexchange.com/ques.../243463#243463
2. https://www.statalist.org/forums/for...centage-points
Here is my output from a binary response model (dependent variable takes values 0 or 1), thus the marginal effect is in a percentage point change. My explanatory variable is logged, hence leaving the 'dx' alone in the calculation.
Question: How do I reconcile the two effects? It doesn't makes sense to call for an elasticity (eydx) when y is already in proportional change format, but I'm not sure how to reconcile. Thanks for any and all help!
Code:
. margins, dydx(log_Fam) Average marginal effects Number of obs = 41,672 Model VCE : Robust Expression : Pr(PickupNewPx), predict() dy/dx w.r.t. : log_Fam ------------------------------------------------------------------------------ | Delta-method | dy/dx Std. Err. z P>|z| [95% Conf. Interval] -------------+---------------------------------------------------------------- log_Fam | .0112132 .0021374 5.25 0.000 .007024 .0154024 ------------------------------------------------------------------------------ . margins, eydx(log_Fam) Average marginal effects Number of obs = 41,672 Model VCE : Robust Expression : Pr(PickupNewPx), predict() ey/dx w.r.t. : log_Fam ------------------------------------------------------------------------------ | Delta-method | ey/dx Std. Err. z P>|z| [95% Conf. Interval] -------------+---------------------------------------------------------------- log_Fam | .0193496 .0037827 5.12 0.000 .0119356 .0267636 ------------------------------------------------------------------------------
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