In observational studies of treatment effects, matched samples have traditionally been constructed using two tools, namely close matches on one or two key covariates and close matches on the propensity score to stochastically balance large numbers of covariates. Here we propose a third tool, fine balance, obtained using the assignment algorithm in a new way. We use all three tools to construct a matched sample for an ongoing study of provider specialty in the treatment of ovarian cancer. Fine balance refers to exact balance of a nominal covariate, often one with many categories, but it does not require individually matched treated and control subjects for this variable. In the example the nominal variable has 72 = 9 × 8 categories formed fr...
In a tapered matched comparison, one group of individuals, called the focal group, is compared to tw...
Multivariate matching is used to remove bias between treatment and control groups in observational s...
Although blocking or pairing before randomization is a basic principle of experimental design, the p...
In multivariate matching, fine balance constrains the marginal distributions of a nominal variable i...
In observational studies of treatment effects, matched samples are created so treated and control gr...
New optimal balanced pair matching methods are proposed in an attempt to balance the marginal distri...
In observational studies, matching can be used to remove bias between treated and control subjects. ...
In some observational studies of treatment effects, matched samples are created so treated and contr...
Every newly trained surgeon performs her first unsupervised operation. How do the health outcomes of...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
Matching on covariates is a well-established framework for estimating causal effects in observationa...
We propose a simplified approach to matching for causal inference that simultaneously optimizes bala...
This thesis unites three papers discussing new strategies for matched pair designs using observation...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
A new form of matching—optimal balanced risk set matching—is applied in an observationa l study of a...
In a tapered matched comparison, one group of individuals, called the focal group, is compared to tw...
Multivariate matching is used to remove bias between treatment and control groups in observational s...
Although blocking or pairing before randomization is a basic principle of experimental design, the p...
In multivariate matching, fine balance constrains the marginal distributions of a nominal variable i...
In observational studies of treatment effects, matched samples are created so treated and control gr...
New optimal balanced pair matching methods are proposed in an attempt to balance the marginal distri...
In observational studies, matching can be used to remove bias between treated and control subjects. ...
In some observational studies of treatment effects, matched samples are created so treated and contr...
Every newly trained surgeon performs her first unsupervised operation. How do the health outcomes of...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
Matching on covariates is a well-established framework for estimating causal effects in observationa...
We propose a simplified approach to matching for causal inference that simultaneously optimizes bala...
This thesis unites three papers discussing new strategies for matched pair designs using observation...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
A new form of matching—optimal balanced risk set matching—is applied in an observationa l study of a...
In a tapered matched comparison, one group of individuals, called the focal group, is compared to tw...
Multivariate matching is used to remove bias between treatment and control groups in observational s...
Although blocking or pairing before randomization is a basic principle of experimental design, the p...