Abstract The instrumental variable method consistently estimates the effect of a treatment when there is unmeasured confounding and a valid instrumental variable. A valid instrumental variable is a variable that is independent of unmeasured confounders and affects the treatment but does not have a direct effect on the outcome beyond its effect on the treatment. Two commonly used estimators for using an instrumental variable to estimate a treatment effect are the two stage least squares estimator and the control function estimator. For linear causal effect models, these two estimators are equivalent, but for nonlinear causal effect models, the estimators are different. We provide a systematic comparison of these two estimators for nonlinear ...
To correct for confounding, the method of instrumental variables (IV) has been proposed. Its use in ...
Instrumental variable approaches have gained popularity for estimating causal effects in the presenc...
In the presence of omitted variables or similar validity threats, regression estimates are biased. U...
This dissertation proposes new instrumental variable methods to identify, estimate and test for caus...
Recent researches in econometrics and statistics have gained considerable insights into the use of i...
This paper builds on the structural equations, treatment effect, and machine learning literatures to...
Abstract: This paper builds on the structural equations, treatment effect, and machine learning lite...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
Proposition Two-stage least squares estimators and variants thereof are widely used to infer the eff...
Instrumental Variable (IV) estimation is a powerful strategy for estimating causal influence, even i...
To estimate causal effects, analysts performing observational studies in health settings utilize sev...
Instrumental variable analysis (IVA) is used to control unobserved confounders and estimate average ...
To correct for confounding, the method of instrumental variables (IV) has been proposed. Its use in ...
Instrumental variable approaches have gained popularity for estimating causal effects in the presenc...
In the presence of omitted variables or similar validity threats, regression estimates are biased. U...
This dissertation proposes new instrumental variable methods to identify, estimate and test for caus...
Recent researches in econometrics and statistics have gained considerable insights into the use of i...
This paper builds on the structural equations, treatment effect, and machine learning literatures to...
Abstract: This paper builds on the structural equations, treatment effect, and machine learning lite...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
Proposition Two-stage least squares estimators and variants thereof are widely used to infer the eff...
Instrumental Variable (IV) estimation is a powerful strategy for estimating causal influence, even i...
To estimate causal effects, analysts performing observational studies in health settings utilize sev...
Instrumental variable analysis (IVA) is used to control unobserved confounders and estimate average ...
To correct for confounding, the method of instrumental variables (IV) has been proposed. Its use in ...
Instrumental variable approaches have gained popularity for estimating causal effects in the presenc...
In the presence of omitted variables or similar validity threats, regression estimates are biased. U...