Hi all,
Regarding instrumental variable estimation, I am a bit confused regarding the LATE interpretation in settings with a continuous instrument. With a binary instrument, we obtain a Wald estimator and the first stage is the proportion of compliers, and the second stage estimate is the LATE on compliers.
Card (2001) compiles reasons why IV estimates may be larger in magnitude than OLS estimates in the context of the effect of schooling on wages. One of these reasons is that IV picks up the effect of schooling on the subset of individuals who would benefit the most from it, and links it to the LATE reasoning.
However, do this reasoning and interpretation (second-stage effect and first stage effect) hold with a continuous instrument? I am trying to relate it to the marginal treatment effects literature, with all treatment effects actually representing various weighted averages of marginal treatment effects.
To give an example, the instrument we use is a Bartik-style shift-share instrument, which varies across time and units. It is a fractional variable, and the endogenous variable is also a fractional variable.
I have tried looking into the user written mtefe command, however the treatment variable has to be binary, and I am not sure whether this is the right econometric route to go down...
Our IV estimates are much larger than OLS estimates. One of the reasons is that the first stage coefficient is 0.5, given that the endogenous variable is fractional, a coefficient comprised within the unit interval seems plausible...
Please could someone explain whether Card's (2001) abovementioned interpretation is applicable to this context, with a continuous instrument?
Regarding instrumental variable estimation, I am a bit confused regarding the LATE interpretation in settings with a continuous instrument. With a binary instrument, we obtain a Wald estimator and the first stage is the proportion of compliers, and the second stage estimate is the LATE on compliers.
Card (2001) compiles reasons why IV estimates may be larger in magnitude than OLS estimates in the context of the effect of schooling on wages. One of these reasons is that IV picks up the effect of schooling on the subset of individuals who would benefit the most from it, and links it to the LATE reasoning.
However, do this reasoning and interpretation (second-stage effect and first stage effect) hold with a continuous instrument? I am trying to relate it to the marginal treatment effects literature, with all treatment effects actually representing various weighted averages of marginal treatment effects.
To give an example, the instrument we use is a Bartik-style shift-share instrument, which varies across time and units. It is a fractional variable, and the endogenous variable is also a fractional variable.
I have tried looking into the user written mtefe command, however the treatment variable has to be binary, and I am not sure whether this is the right econometric route to go down...
Our IV estimates are much larger than OLS estimates. One of the reasons is that the first stage coefficient is 0.5, given that the endogenous variable is fractional, a coefficient comprised within the unit interval seems plausible...
Please could someone explain whether Card's (2001) abovementioned interpretation is applicable to this context, with a continuous instrument?
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