Semiparametric doubly robust methods for causal inference help protect against bias due to model misspecification, while also reducing sensitivity to the curse of dimensionality (e.g., when high-dimensional covariate adjustment is necessary). However, doubly robust methods have not yet been developed in numerous important settings. In particular, standard semiparametric theory mostly only considers independent and identically distributed samples and smooth parameters that can be estimated at classical root-n rates. In this dissertation we extend this theory and develop novel methodology for three settings outside these bounds: (1) matched cohort studies, (2) nonparametric dose-response estimation, and (3) complex high-dimensional effects wi...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
Drawing inferences about the effects of exposures or treatments is a common challenge in many scient...
This dissertation focuses on modern causal inference under uncertainty and data restrictions, with a...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Continuous treatments (e.g., doses) arise often in practice, but available causal effect estimators ...
Continuous treatments (e.g. doses) arise often in practice, but many available causal effect estimat...
Continuous treatments (e.g. doses) arise often in practice, but many available causal effect estimat...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
Estimation of the causal dose-response curve is an old problem in statistics. In a non parametric mo...
Intensive longitudinal data, defined as time-varying data collected frequently over time, holds imme...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
We consider estimation of the causal effect of a binary treatment on an outcome, conditionally on co...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
Drawing inferences about the effects of exposures or treatments is a common challenge in many scient...
This dissertation focuses on modern causal inference under uncertainty and data restrictions, with a...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Continuous treatments (e.g., doses) arise often in practice, but available causal effect estimators ...
Continuous treatments (e.g. doses) arise often in practice, but many available causal effect estimat...
Continuous treatments (e.g. doses) arise often in practice, but many available causal effect estimat...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
Estimation of the causal dose-response curve is an old problem in statistics. In a non parametric mo...
Intensive longitudinal data, defined as time-varying data collected frequently over time, holds imme...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
We consider estimation of the causal effect of a binary treatment on an outcome, conditionally on co...
To estimate the treatment effect in an observational study, we use a semiparametric locally efficien...
Drawing inferences about the effects of exposures or treatments is a common challenge in many scient...
This dissertation focuses on modern causal inference under uncertainty and data restrictions, with a...