<p>The informal folklore of observational studies claims that if an irrelevant observed covariate is left uncontrolled, say unmatched, then it will influence treatment assignment in haphazard ways, thereby diminishing the biases from unmeasured covariates. We prove a result along these lines: it is true, in a certain sense, to a limited degree, under certain conditions. Alas, the conditions are neither inconsequential nor easy to check in empirical work; indeed, they are often dubious, more often implausible. We suggest the result is most useful in the computerized construction of a second control group, where the investigator can see more in available data without necessarily believing the required conditions. One of the two control groups...
Some experiments involve more than one random assignment of treatments to units. An analogous situat...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
PURPOSE: Observational studies are prone to (unmeasured) confounding. Sensitivity analysis of unmeas...
The informal folklore of observational studies claims that if an irrelevant observed covariate is le...
This thesis considers observational studies in which experimental units are not randomly assigned to...
The ability to compare similar groups is central to causal inference. If two groups are the same exc...
In the analysis of causal effects in non-experimental studies, conditioning on observable covariates...
The assumption of strongly ignorable treatment assignment is required for eliminating selection bias...
Description of prior research and/or its intellectual context and/or its policy context. In observat...
In the analysis of causal effects in non-experimental studies, conditioning on observable covariates...
An observational or nonrandomized study of treatment effects may be biased by failure to control for...
e¤ects caused by a treatment when ethical or prac-tical issues prevent random assignment of units to...
Causal inference with observational data frequently requires researchers to estimate treatment effec...
Thesis (Master's)--University of Washington, 2016-06Observational studies often suffer from the prob...
For estimating causal effects of treatments, randomized experiments are generally considered the gol...
Some experiments involve more than one random assignment of treatments to units. An analogous situat...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
PURPOSE: Observational studies are prone to (unmeasured) confounding. Sensitivity analysis of unmeas...
The informal folklore of observational studies claims that if an irrelevant observed covariate is le...
This thesis considers observational studies in which experimental units are not randomly assigned to...
The ability to compare similar groups is central to causal inference. If two groups are the same exc...
In the analysis of causal effects in non-experimental studies, conditioning on observable covariates...
The assumption of strongly ignorable treatment assignment is required for eliminating selection bias...
Description of prior research and/or its intellectual context and/or its policy context. In observat...
In the analysis of causal effects in non-experimental studies, conditioning on observable covariates...
An observational or nonrandomized study of treatment effects may be biased by failure to control for...
e¤ects caused by a treatment when ethical or prac-tical issues prevent random assignment of units to...
Causal inference with observational data frequently requires researchers to estimate treatment effec...
Thesis (Master's)--University of Washington, 2016-06Observational studies often suffer from the prob...
For estimating causal effects of treatments, randomized experiments are generally considered the gol...
Some experiments involve more than one random assignment of treatments to units. An analogous situat...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
PURPOSE: Observational studies are prone to (unmeasured) confounding. Sensitivity analysis of unmeas...