This paper explores the implications of possible bias cancellation using Rubin-style matching methods with complete and incomplete data. After reviewing the naïve causal estimator and the approaches of Heckman and Rubin to the causal estimation problem, we show how missing data can complicate the estimation of average causal effects in different ways, depending upon the nature of the missing mechanism. While - contrary to published assertions in the literature - bias cancellation does not generally occur when the multivariate distribution of the errors is symmetric, bias cancellation has been observed to occur for the case where selection into training is the treatment variable, and earnings is the outcome variable. A substantive rationale ...
"Propensity score matching provides an estimate of the effect of a 'treatment' variable on an outcom...
This thesis contributes to the field of causal inference, where the main interest is to estimate the...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...
This paper explores the implications of bias cancellation on the estimate of average treatment effec...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
Matching estimators for average treatment effects are widely used in evaluation research despite the...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
Non-compliance is very common in randomized experiments involving human participants. The intent-to-...
The matching method for treatment evaluation does not balance selective unobserved differences betwe...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
Causal interpretation of relationships is complicated by the ‘fundamental problem of causal inferenc...
Although published works rarely include causal estimates from more than a few model specifications, ...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
Causal inference with observational data frequently requires researchers to estimate treatment effec...
The matching method for treatment evaluation does not balance selective unobserved differences betwe...
"Propensity score matching provides an estimate of the effect of a 'treatment' variable on an outcom...
This thesis contributes to the field of causal inference, where the main interest is to estimate the...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...
This paper explores the implications of bias cancellation on the estimate of average treatment effec...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
Matching estimators for average treatment effects are widely used in evaluation research despite the...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
Non-compliance is very common in randomized experiments involving human participants. The intent-to-...
The matching method for treatment evaluation does not balance selective unobserved differences betwe...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
Causal interpretation of relationships is complicated by the ‘fundamental problem of causal inferenc...
Although published works rarely include causal estimates from more than a few model specifications, ...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
Causal inference with observational data frequently requires researchers to estimate treatment effec...
The matching method for treatment evaluation does not balance selective unobserved differences betwe...
"Propensity score matching provides an estimate of the effect of a 'treatment' variable on an outcom...
This thesis contributes to the field of causal inference, where the main interest is to estimate the...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...