<p>Two-stage randomization is a powerful design for estimating treatment effects in the presence of interference; that is, when one individual’s treatment assignment affects another individual’s outcomes. Our motivating example is a two-stage randomized trial evaluating an intervention to reduce student absenteeism in the School District of Philadelphia. In that experiment, households with multiple students were first assigned to treatment or control; then, in treated households, one student was randomly assigned to treatment. Using this example, we highlight key considerations for analyzing two-stage experiments in practice. Our first contribution is to address additional complexities that arise when household sizes vary; in this case, res...
This paper shows how to use a randomized saturation experimental design to identify and estimate cau...
In experiments that study social phenomena, such as peer influence or herd immunity, the treatment o...
A fundamental assumption usually made in causal inference is that of no interference between individ...
In a randomized experiment comparing two treatments, there is interference between units if applying...
Recently, increasing attention has focused on making causal inference when interference is possible....
In this paper we discuss how the " encouragement design "used in randomized controlled trials can be...
Interference occurs between individuals when the treatment (or exposure) of one individual affects t...
Making inferences about the causal effects is essential for public health and biomedical studies. Ra...
Estimating the effects of interventions in networks is complicated due to interference, such that th...
Recently, increasing attention has focused on making causal inference when interference is possible,...
<p>Understanding and characterizing treatment effect variation in randomized experiments has become ...
Three critical issues for causal inference that often occur in modern, complicated experiments are i...
The Principal Stratification method estimates a causal intervention effect by taking account of subj...
Randomized experiments are seen as the most rigorous methodology for testing causal explanations for...
This dissertation explores methodological topics in the analysis of randomized experiments, with a f...
This paper shows how to use a randomized saturation experimental design to identify and estimate cau...
In experiments that study social phenomena, such as peer influence or herd immunity, the treatment o...
A fundamental assumption usually made in causal inference is that of no interference between individ...
In a randomized experiment comparing two treatments, there is interference between units if applying...
Recently, increasing attention has focused on making causal inference when interference is possible....
In this paper we discuss how the " encouragement design "used in randomized controlled trials can be...
Interference occurs between individuals when the treatment (or exposure) of one individual affects t...
Making inferences about the causal effects is essential for public health and biomedical studies. Ra...
Estimating the effects of interventions in networks is complicated due to interference, such that th...
Recently, increasing attention has focused on making causal inference when interference is possible,...
<p>Understanding and characterizing treatment effect variation in randomized experiments has become ...
Three critical issues for causal inference that often occur in modern, complicated experiments are i...
The Principal Stratification method estimates a causal intervention effect by taking account of subj...
Randomized experiments are seen as the most rigorous methodology for testing causal explanations for...
This dissertation explores methodological topics in the analysis of randomized experiments, with a f...
This paper shows how to use a randomized saturation experimental design to identify and estimate cau...
In experiments that study social phenomena, such as peer influence or herd immunity, the treatment o...
A fundamental assumption usually made in causal inference is that of no interference between individ...