Proposition Two-stage least squares estimators and variants thereof are widely used to infer the effect of an exposure on an outcome using instrumental variables (IVs). Two-stage least squares estimators enjoy greater robustness to model misspecification than other two-stage estimators but can be inefficient when the exposure is non-linearly related to the IV (or covariates). Locally efficient double-robust estimators overcome this concern. These make use of a possibly non-linear model for the exposure to increase efficiency but remain consistent when that model is misspecified, so long as either a model for the IV or for the outcome model is correctly specified. However, their finite sample performance can be poor when the models for the I...
In this paper, we study a weak instrumental variables model for longitudinal data. A two stage least...
Theories demand much of data, often more than a single data collection can provide. For example, man...
Instrumental variable methods allow unbiased estimation in the presence of unmeasured confounders wh...
Proposition Two-stage least squares estimators and variants thereof are widely used to infer the eff...
In the presence of omitted variables or similar validity threats, regression estimates are biased. U...
Abstract The instrumental variable method consistently estimates the effect of a treatment when ther...
This paper puts forward a new instrumental variables (IV) approach for linear panel data models with...
We consider the bias of the two-stage least squares (2SLS) estimator in linear instrumental variable...
This is the author accepted manuscript. The final version is available from the Institute of Mathema...
Two-stage-least-squares (2SLS) estimates are biased towards the probability limit of OLS estimates. ...
We consider the estimation of the average treatment effect in the treated as a function of baseline ...
Instrumental variable (IV) analysis is used to address unmeasured confounding when comparing two non...
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...
Unmeasured confounding is a common concern when clinical and health services researchers attempt to ...
In this paper, we study a weak instrumental variables model for longitudinal data. A two stage least...
Theories demand much of data, often more than a single data collection can provide. For example, man...
Instrumental variable methods allow unbiased estimation in the presence of unmeasured confounders wh...
Proposition Two-stage least squares estimators and variants thereof are widely used to infer the eff...
In the presence of omitted variables or similar validity threats, regression estimates are biased. U...
Abstract The instrumental variable method consistently estimates the effect of a treatment when ther...
This paper puts forward a new instrumental variables (IV) approach for linear panel data models with...
We consider the bias of the two-stage least squares (2SLS) estimator in linear instrumental variable...
This is the author accepted manuscript. The final version is available from the Institute of Mathema...
Two-stage-least-squares (2SLS) estimates are biased towards the probability limit of OLS estimates. ...
We consider the estimation of the average treatment effect in the treated as a function of baseline ...
Instrumental variable (IV) analysis is used to address unmeasured confounding when comparing two non...
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...
Unmeasured confounding is a common concern when clinical and health services researchers attempt to ...
In this paper, we study a weak instrumental variables model for longitudinal data. A two stage least...
Theories demand much of data, often more than a single data collection can provide. For example, man...
Instrumental variable methods allow unbiased estimation in the presence of unmeasured confounders wh...