In typical political experiments, researchers randomize a set of households, precincts, or individuals to treatments all at once, and characteristics of all units are known at the time of randomization. However, in many other experiments, subjects ``trickle in'' to be randomized to treatment conditions, usually via complete randomization. To take advantage of the rich background data that researchers often have (but underutilize) in these experiments, we develop methods that use continuous covariates to assign treatments sequentially. We build on biased coin and minimization procedures for discrete covariates, and demonstrate that our methods outperform complete randomization, producing better covariate balance in simulated data. We then de...
Embedding experiments within surveys has reinvigorated survey research. Several survey experiments a...
Data and code to replicate findings from "How to Make Causal Inferences with Time-Series Cross-Secti...
Experimentalists desire precise estimates of treatment effects and nearly always care about how trea...
In typical political experiments, researchers randomize a set of households, precincts, or individua...
Political scientists use randomized treatment assignments to aid causal inference in field experimen...
Randomized experiments are becoming increasingly common in political science. Despite their well-kno...
Consider a small political field experiment in which you will assign a campaign message in four prec...
Experiments have become an increasingly common tool for political science researchers over the last ...
In the social sciences, randomized experimentation is the optimal research design for establishing c...
Randomized experiments are becoming increasingly common in political science. Despite their well-kno...
Early in the twentieth century, Fisher and Neyman demonstrated how to infer effects of agricultural ...
General Information Overview Randomized interventions allow political scientists to claim that compa...
Researchers investigating causal mechanisms in survey experiments often rely on non-randomized quant...
Political scientists are increasingly interested in causal mediation, and to this end, recent studie...
This thesis presents five independent essays that advance causal inference in political science. It ...
Embedding experiments within surveys has reinvigorated survey research. Several survey experiments a...
Data and code to replicate findings from "How to Make Causal Inferences with Time-Series Cross-Secti...
Experimentalists desire precise estimates of treatment effects and nearly always care about how trea...
In typical political experiments, researchers randomize a set of households, precincts, or individua...
Political scientists use randomized treatment assignments to aid causal inference in field experimen...
Randomized experiments are becoming increasingly common in political science. Despite their well-kno...
Consider a small political field experiment in which you will assign a campaign message in four prec...
Experiments have become an increasingly common tool for political science researchers over the last ...
In the social sciences, randomized experimentation is the optimal research design for establishing c...
Randomized experiments are becoming increasingly common in political science. Despite their well-kno...
Early in the twentieth century, Fisher and Neyman demonstrated how to infer effects of agricultural ...
General Information Overview Randomized interventions allow political scientists to claim that compa...
Researchers investigating causal mechanisms in survey experiments often rely on non-randomized quant...
Political scientists are increasingly interested in causal mediation, and to this end, recent studie...
This thesis presents five independent essays that advance causal inference in political science. It ...
Embedding experiments within surveys has reinvigorated survey research. Several survey experiments a...
Data and code to replicate findings from "How to Make Causal Inferences with Time-Series Cross-Secti...
Experimentalists desire precise estimates of treatment effects and nearly always care about how trea...