In some observational studies of treatment effects, matched samples are created so treated and control groups are similar in terms of observable covariates. Traditionally such matched samples consist of matched pairs. However, alternative forms of matching may have desirable features. One strategy that may improve efficiency is to match a variable number of control units to each treated unit. Another strategy to improve balance is to adopt a fine balance constraint. Under a fine balance constraint, a nominal covariate is exactly balanced, but it does not require individually matched treated and control subjects for this variable. Here, we propose a method to allow for fine balance constraints when each treated unit is matched to a variable ...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
Every newly trained surgeon performs her first unsupervised operation. How do the health outcomes of...
Background In case-control studies most algorithms allow the controls to be sampled several times, w...
In observational studies of treatment effects, matched samples are created so treated and control gr...
In multivariate matching, fine balance constrains the marginal distributions of a nominal variable i...
In observational studies of treatment effects, matched samples have traditionally been constructed u...
Conventionally, the construction of a pair-matched sample selects treated and control units and pair...
In observational studies, treated subjects and controls are often matched to remove bias in pre-trea...
Comparative effectiveness studies can identify the causal effect of treatment if treatment is unconf...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
New optimal balanced pair matching methods are proposed in an attempt to balance the marginal distri...
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 bala...
Matching for several nominal covariates with many levels has usually been thought to be difficult be...
In observational studies, matching can be used to remove bias between treated and control subjects. ...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
Every newly trained surgeon performs her first unsupervised operation. How do the health outcomes of...
Background In case-control studies most algorithms allow the controls to be sampled several times, w...
In observational studies of treatment effects, matched samples are created so treated and control gr...
In multivariate matching, fine balance constrains the marginal distributions of a nominal variable i...
In observational studies of treatment effects, matched samples have traditionally been constructed u...
Conventionally, the construction of a pair-matched sample selects treated and control units and pair...
In observational studies, treated subjects and controls are often matched to remove bias in pre-trea...
Comparative effectiveness studies can identify the causal effect of treatment if treatment is unconf...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
New optimal balanced pair matching methods are proposed in an attempt to balance the marginal distri...
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 bala...
Matching for several nominal covariates with many levels has usually been thought to be difficult be...
In observational studies, matching can be used to remove bias between treated and control subjects. ...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
Every newly trained surgeon performs her first unsupervised operation. How do the health outcomes of...
Background In case-control studies most algorithms allow the controls to be sampled several times, w...