Instrumental variables can be used to make inferences about causal effects in the presence of unmeasured confounding. For a model in which the instrument, intermediate/treatment, and outcome variables are all binary, Balke and Pearl (1997, Journal of the American Statistical Association 92: 1172–1176) derived nonparametric bounds for the intervention probabilities and the average causal effect. We have implemented these bounds in two commands: bpbounds and bpboundsi. We have also implemented several extensions to these bounds. One of these extensions applies when the instrument and outcome are measured in one sample and the instrument and intermediate are measured in another sample. We have also implemented the bounds for an instrument with...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
We investigate the problem of bounding causal effects from experimental studies in which treatment a...
Instrumental variables are widely used for the identification of the causal effect of one random var...
Instrumental variables can be used to make inferences about causal effects in the presence of unmeas...
Instrumental variables have proven useful, in particular within the social sciences and economics, f...
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...
Nonignorable missingness and noncompliance can occur even in well-designed randomized experiments, m...
Instrumental variables allow for quantification of cause and effect relationships even in the absenc...
Instrumental variables (IV) methods have been widely used to determine the causal effect of a treatm...
Instrumental variable methods can identify causal effects even when the treatment and outcome are co...
Instrumental variables (IV) methods have been widely used to determine the causal effect of a treatm...
This paper extends the identification results in Nevo and Rosen(2012) to nonparametric models. We de...
Causal treatment effect estimation is a key problem that arises in a variety ofreal-world settings, ...
Instrumental variables have been widely used for estimating the causal effect between exposure and o...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
We investigate the problem of bounding causal effects from experimental studies in which treatment a...
Instrumental variables are widely used for the identification of the causal effect of one random var...
Instrumental variables can be used to make inferences about causal effects in the presence of unmeas...
Instrumental variables have proven useful, in particular within the social sciences and economics, f...
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...
Nonignorable missingness and noncompliance can occur even in well-designed randomized experiments, m...
Instrumental variables allow for quantification of cause and effect relationships even in the absenc...
Instrumental variables (IV) methods have been widely used to determine the causal effect of a treatm...
Instrumental variable methods can identify causal effects even when the treatment and outcome are co...
Instrumental variables (IV) methods have been widely used to determine the causal effect of a treatm...
This paper extends the identification results in Nevo and Rosen(2012) to nonparametric models. We de...
Causal treatment effect estimation is a key problem that arises in a variety ofreal-world settings, ...
Instrumental variables have been widely used for estimating the causal effect between exposure and o...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
We investigate the problem of bounding causal effects from experimental studies in which treatment a...
Instrumental variables are widely used for the identification of the causal effect of one random var...