Indiana University-Purdue University Indianapolis (IUPUI)Observational data are frequently used for causal inference of treatment effects on prespecified outcomes. Several widely used causal inference methods have adopted the method of inverse propensity score weighting (IPW) to alleviate the in uence of confounding. However, the IPW-type methods, including the doubly robust methods, are prone to large variation in the estimation of causal e ects due to possible extreme weights. In this research, we developed an ordinary least-squares (OLS)-based causal inference method, which does not involve the inverse weighting of the individual propensity scores. We first considered the scenario of homogeneous treatment effect. We proposed a ...
Analyzing data to estimate the effect of treatment on health outcomes can play a major role in the f...
Observational studies differ from experimental studies in that assignment of subjects to treatments ...
We describe R package “causalweight” for causal inference based on inverse probability weighting (I...
Assessing treatment effects in observational studies is a multifaceted problem that not only involve...
The propensity score analysis is one of the most widely used methods for studying the causal treatme...
Causal inference is a popular problem in biostatistics, economics, and health science studies. The g...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
There is an increasing appeal in answering causal questions, and this interest has drawn perspective...
This dissertation consists of three projects related to causal inference based on observational data...
In this article we develop the theoretical properties of the propensity function, which is a general...
We propose a doubly robust approach to characterizing treatment effect heterogeneity in observationa...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
In this article we develop the theoretical properties of the propensity function, which is a general...
Analyzing data to estimate the effect of treatment on health outcomes can play a major role in the f...
Observational studies differ from experimental studies in that assignment of subjects to treatments ...
We describe R package “causalweight” for causal inference based on inverse probability weighting (I...
Assessing treatment effects in observational studies is a multifaceted problem that not only involve...
The propensity score analysis is one of the most widely used methods for studying the causal treatme...
Causal inference is a popular problem in biostatistics, economics, and health science studies. The g...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
There is an increasing appeal in answering causal questions, and this interest has drawn perspective...
This dissertation consists of three projects related to causal inference based on observational data...
In this article we develop the theoretical properties of the propensity function, which is a general...
We propose a doubly robust approach to characterizing treatment effect heterogeneity in observationa...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
In this article we develop the theoretical properties of the propensity function, which is a general...
Analyzing data to estimate the effect of treatment on health outcomes can play a major role in the f...
Observational studies differ from experimental studies in that assignment of subjects to treatments ...
We describe R package “causalweight” for causal inference based on inverse probability weighting (I...