It is common to conduct causal inference in matched observational studies by proceeding as though treatment assignments within matched sets are assigned uniformly at random and using this distribution as the basis for inference. This approach ignores observed discrepancies in matched sets that may be consequential for the distribution of treatment, which are succinctly captured by within-set differences in the propensity score. We address this problem via covariate-adaptive randomization inference, which modifies the permutation probabilities to vary with estimated propensity score discrepancies and avoids requirements to exclude matched pairs or model an outcome variable. We show that the test achieves type I error control arbitrarily clos...
This dissertation explores methodological topics in the analysis of randomized experiments, with a f...
This paper studies inference in a randomized controlled trial (RCT) with covariate-adaptive randomiz...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
<p>This article studies inference for the average treatment effect in randomized controlled trials w...
This paper studies inference for the average treatment effect in randomized controlled trials with c...
By slightly reframing the concept of covariance adjustment in randomized experiments, a method of ex...
One central goal of design of observational studies is to embed non-experimental data into an approx...
In observational causal inference, exact covariate matching plays two statistical roles: (i) it effe...
Concerns have been expressed over the validity of statistical inference under covariate-adaptive ran...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
In this paper we provide some general asymptotic properties of covariate-adaptive (CA) randomized de...
We demonstrate that clinical trials using response adaptive randomized treatment assignment rules ar...
In many randomized and observational studies the allocation of treatment among a sample of n indepen...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
<div><p>Covariate-adaptive designs are often implemented to balance important covariates in clinical...
This dissertation explores methodological topics in the analysis of randomized experiments, with a f...
This paper studies inference in a randomized controlled trial (RCT) with covariate-adaptive randomiz...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
<p>This article studies inference for the average treatment effect in randomized controlled trials w...
This paper studies inference for the average treatment effect in randomized controlled trials with c...
By slightly reframing the concept of covariance adjustment in randomized experiments, a method of ex...
One central goal of design of observational studies is to embed non-experimental data into an approx...
In observational causal inference, exact covariate matching plays two statistical roles: (i) it effe...
Concerns have been expressed over the validity of statistical inference under covariate-adaptive ran...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
In this paper we provide some general asymptotic properties of covariate-adaptive (CA) randomized de...
We demonstrate that clinical trials using response adaptive randomized treatment assignment rules ar...
In many randomized and observational studies the allocation of treatment among a sample of n indepen...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
<div><p>Covariate-adaptive designs are often implemented to balance important covariates in clinical...
This dissertation explores methodological topics in the analysis of randomized experiments, with a f...
This paper studies inference in a randomized controlled trial (RCT) with covariate-adaptive randomiz...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...