This thesis and related research is motivated by my interest in understanding the use of time-varying treatments in causal inference from complex longitudinal data, which play a prominent role in public health, economics, and epidemiology, as well as in biological and medical sciences. Longitudinal data allow the direct study of temporal changes within individuals and across populations, therefore give us the edge to utilize time this important factor to explore causal relationships than static data. There are also a variety challenges that arise in analyzing longitudinal data. By the very nature of repeated measurements, longitudinal data are multivariate in various dimensions and have completed random-error structures, which make many con...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
We propose methods for analyzing longitudinal data, obtained in clinical trials and other applicati...
Intensive longitudinal data, defined as time-varying data collected frequently over time, holds imme...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
Longitudinal studies, randomized or observational, can provide insight into the impact of treatment ...
In causal inference for longitudinal data, standard methods usually assume that the underlying proce...
In causal inference for longitudinal data, standard methods usually assume that the underlying proce...
Many modern problems in causal inference have non-trivial complications beyond the classical setting...
In longitudinal settings, causal inference methods usually rely on a discretization of the patient ...
Bayesian statistical methods are becoming increasingly in demand in clinical and public health resea...
Observational studies differ from experimental studies in that assignment of subjects to treatments ...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
We propose methods for analyzing longitudinal data, obtained in clinical trials and other applicati...
Intensive longitudinal data, defined as time-varying data collected frequently over time, holds imme...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
Longitudinal studies, randomized or observational, can provide insight into the impact of treatment ...
In causal inference for longitudinal data, standard methods usually assume that the underlying proce...
In causal inference for longitudinal data, standard methods usually assume that the underlying proce...
Many modern problems in causal inference have non-trivial complications beyond the classical setting...
In longitudinal settings, causal inference methods usually rely on a discretization of the patient ...
Bayesian statistical methods are becoming increasingly in demand in clinical and public health resea...
Observational studies differ from experimental studies in that assignment of subjects to treatments ...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
This article considers the problem of assessing causal effect moderation in longitudinal settings in...
We propose methods for analyzing longitudinal data, obtained in clinical trials and other applicati...
Intensive longitudinal data, defined as time-varying data collected frequently over time, holds imme...