It is common practice for researchers in the social sciences and education to use model selection techniques to search for best fitting models and to carry out inference as if these models were given a priori. This study examined the effect of model selection on inference in the framework of loglinear modeling. The purposes were to (i) examine the consequences when the behavior of model selection is ignored; and (ii) investigate the performance of the estimator provided by the Bayesian model averaging method and evaluate the usefulness of the multi-model inference as opposed to the single model inference. The basic finding of this study was that inference based on a single "best fit" model chosen from a set of candidate models leads to un...
In clinical trials, patients are enrolled into two treatment arms. A researcher may be interested in...
This dissertation is composed of three essays evaluating Bayesian model selection criteria in variou...
Background Statistical model building requires selection of variables for a model dependi...
While model selection is viewed as a fundamental task in data analysis, it imposes considerable effe...
In this thesis, we argue that the development of a number of context-dependent modifications to stan...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
Forward Stepwise Selection is a widely used model selection algorithm. It is, however, hard to do in...
This thesis is concerned with the theory of econometric model selection, an area of fundamental imp...
Finite mixture regression (FMR) models are powerful modeling tools to analyze data of various types ...
Model selection is a challenging issue in high dimensional statistical analysis, and many approaches...
In the absence of random assignment, researchers must consider the impact of selection bias – pre-ex...
While model selection is viewed as a fundamental task in data analysis, it imposes considerable effe...
In clinical trials, patients are enrolled into two treatment arms. A researcher may be interested in...
Model selection has become an ubiquitous statistical activity in the last decades, none the least du...
In clinical trials, patients are enrolled into two treatment arms. A researcher may be interested in...
This dissertation is composed of three essays evaluating Bayesian model selection criteria in variou...
Background Statistical model building requires selection of variables for a model dependi...
While model selection is viewed as a fundamental task in data analysis, it imposes considerable effe...
In this thesis, we argue that the development of a number of context-dependent modifications to stan...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
Forward Stepwise Selection is a widely used model selection algorithm. It is, however, hard to do in...
This thesis is concerned with the theory of econometric model selection, an area of fundamental imp...
Finite mixture regression (FMR) models are powerful modeling tools to analyze data of various types ...
Model selection is a challenging issue in high dimensional statistical analysis, and many approaches...
In the absence of random assignment, researchers must consider the impact of selection bias – pre-ex...
While model selection is viewed as a fundamental task in data analysis, it imposes considerable effe...
In clinical trials, patients are enrolled into two treatment arms. A researcher may be interested in...
Model selection has become an ubiquitous statistical activity in the last decades, none the least du...
In clinical trials, patients are enrolled into two treatment arms. A researcher may be interested in...
This dissertation is composed of three essays evaluating Bayesian model selection criteria in variou...
Background Statistical model building requires selection of variables for a model dependi...