On Substantive Research Hypotheses, Conditional Independence Graphs and Graphical Chain Models 论文

1990Journal of the Royal Statistical Society Series B (Statistical Methodology)引用 225
Bayesian Modeling and Causal InferenceStatistical Methods and ApplicationsSensory Analysis and Statistical Methods

摘要

SUMMARY Graphs consisting of points, and lines or arrows as connections between selected pairs of points, are used to formulate hypotheses about relations between variables. Points stand for variables, connections represent associations. When a missing connection is interpreted as a conditional independence, the graph characterizes a conditional independence structure as well. Statistical models, called graphical chain models, correspond to special types of graphs which are interpreted in this fashion. Examples are used to illustrate how conditional independences are reflected in summary statistics derived from the models and how the graphs help to identify analogies and equivalences between different models. Graphical chain models are shown to provide a unifying concept for many statistical techniques that in the past have proven to be useful in analyses of data. They also provide tools for new types of analysis.