Hierarchical Modeling and Prior Information - An Example from Toxicology
Center for Language & Speech Processing(CLSP), JHU via YouTube
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Learn hierarchical modeling techniques and the effective use of prior information through a detailed toxicology case study in this seminar by Andrew Gelman from Columbia University. Explore advanced statistical methods for handling complex data structures where observations are naturally grouped or nested, and discover how to incorporate existing knowledge through prior distributions. Examine real-world applications of Bayesian hierarchical models in toxicological research, understanding how these methods can improve inference when dealing with limited data, multiple treatment groups, or varying experimental conditions. Gain insights into model specification, parameter estimation, and interpretation of results in hierarchical frameworks, with particular emphasis on how prior information can enhance statistical analysis in scientific research contexts.
Syllabus
Andrew Gelman: Hierarchical modeling and prior information: an example from toxicology
Taught by
Center for Language & Speech Processing(CLSP), JHU