Thesis (Ph.D.)--University of Washington, 2015This study utilizes a data driven simulation design, which deviates from the traditional model-based approaches most commonly adopted in quasi-experimental Monte Carlo (MC) simulation studies, to answer two main questions. First, this study explores the finite sample properties of the most utilized quasi-experimental methods that control for observable selection bias in the field of education and compares them to traditional regression methods. Second, this study lends an insight into the effects of ignoring the multilevel structure of data commonly found in the field when using quasi-experimental methods. Specifically, treatment effects were estimated using (1) Ordinary Least Squares (OLS) m...
The Working Paper gives an overview about the topic of causal inference,covered in the Institute on ...
When researchers are unable to randomly assign students to treatment conditions, selection bias is i...
This paper examines how pretest measures of a study outcome reduce selection bias in observational s...
Thesis (Ph.D.)--University of Washington, 2015This study utilizes a data driven simulation design, w...
Recent calls for accountability have focused on scientifically based research that isolates causal m...
Recent calls for accountability have focused on scientifically based research that isolates causal m...
Over the past decade, the generalizability of randomized experiments, defined as the level of consis...
Over the past decade, the generalizability of randomized experiments, defined as the level of consis...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
Over the past decade, the generalizability of randomized experiments, defined as the level of consis...
Background / Context: Description of prior research and its intellectual context. In educational res...
Often it is infeasible or unethical to use random assignment in educational settings to study import...
any studies in social science that aim to estimate the effect of an intervention suffer from treatme...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
The Working Paper gives an overview about the topic of causal inference,covered in the Institute on ...
When researchers are unable to randomly assign students to treatment conditions, selection bias is i...
This paper examines how pretest measures of a study outcome reduce selection bias in observational s...
Thesis (Ph.D.)--University of Washington, 2015This study utilizes a data driven simulation design, w...
Recent calls for accountability have focused on scientifically based research that isolates causal m...
Recent calls for accountability have focused on scientifically based research that isolates causal m...
Over the past decade, the generalizability of randomized experiments, defined as the level of consis...
Over the past decade, the generalizability of randomized experiments, defined as the level of consis...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
Over the past decade, the generalizability of randomized experiments, defined as the level of consis...
Background / Context: Description of prior research and its intellectual context. In educational res...
Often it is infeasible or unethical to use random assignment in educational settings to study import...
any studies in social science that aim to estimate the effect of an intervention suffer from treatme...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
The Working Paper gives an overview about the topic of causal inference,covered in the Institute on ...
When researchers are unable to randomly assign students to treatment conditions, selection bias is i...
This paper examines how pretest measures of a study outcome reduce selection bias in observational s...