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X-ORIGINAL-URL:https://canssiontario.utoronto.ca/
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UID:MEC-0410a1c4a3742c73adeee2b39910723b@canssiontario.utoronto.ca
DTSTART:20260122T183000Z
DTEND:20260122T193000Z
DTSTAMP:20250617T153000Z
CREATED:20250617
LAST-MODIFIED:20251119
SUMMARY:CAST Seminar: Andrew Gelman
DESCRIPTION:\nJoin us at the CANSSI Ontario STatistics Seminars (CAST) with\n\n\n\nAndrew Gelman\n\n\n\nProfessor, Departments of Statistics and Political ScienceDirector, Applied Statistics CentreColumbia University\n\n\n\nTalk Title\n\n\n\nHierarchical Bayesian Modeling as a Way of Life\n\n\n\nSuggested Readings\n\n\n\n[2004] Standard voting power indexes don’t work: An empirical analysis:  https://sites.stat.columbia.edu/gelman/research/published/gelmankatzbafumi.pdf\n\n\n\n[2006] Multilevel (hierarchical) modeling: What it can and cannot do:  https://sites.stat.columbia.edu/gelman/research/published/multi2.pdf\n\n\n\n[2006] Bayesian measures of explained variance and pooling in multilevel (hierarchical) models:  https://sites.stat.columbia.edu/gelman/research/published/rsquared.pdf\n\n\n\n[2018] R-squared for Bayesian regression models:  https://sites.stat.columbia.edu/gelman/research/published/bayes_R2_v3.pdf\n\n\n\n[2022] A proposal for informative default priors scaled by the standard error of estimates:  https://sites.stat.columbia.edu/gelman/research/published/default_prior_zwet.pdf\n\n\n\nAbstract\n\n\n\nHierarchical Bayesian modeling is useful for partial pooling in meta-analysis, small-area estimation, and many other areas in which we want to make dense inferences from sparse data.  Although these methods have been around for several decades, many little-known issues and open questions remain.  We discuss several of these, including meta-analysis with a single study, empirical models for the signal-to-noise ratio, the relation between error variance and group size, anthropic priors, the search for a theoretical justification of weakly informative priors, different measures of influence, why we should care about R-squared, the Vermont/Wyoming problem, different ways to model varying treatment effects, the unification of causal methods in econometrics, and the possibility of a new level of abstraction for expressing multilevel models with interactions.\n\n\n\nSpeaker Profile\n\n\n\nAndrew Gelman is a professor of statistics and political science at Columbia University. His books include Bayesian Data Analysis (with John Carlin, Hal Stern, David Dunson, Aki Vehtari, and Donald Rubin), Red State, Blue State, Rich State, Poor State: Why Americans Vote the Way They Do (with David Park, Boris Shor, and Jeronimo Cortina), Regression and Other Stories (with Jennifer Hill and Aki Vehtari), Active Statistics (with Aki Vehatri), and the forthcoming Bayesian Workflow (with many collaborators).\n\n\n\nHe has done research on applications ranging from elections and public opinion to laboratory assays and toxicology; on the theory and practice of Bayesian statistical methods, from design and data collection through modeling, analysis, and model evaluation; and on statistical computing, graphics, and communication.\n\n\n\n\n
URL:https://canssiontario.utoronto.ca/event/cast-seminar-andrew-gelman/
ORGANIZER;CN=CANSSI Ontario:MAILTO:esther.berzunza@utoronto.ca
CATEGORIES:CANSSI Ontario Statistics Seminars
LOCATION:Zoom (Online)
ATTACH;FMTTYPE=image/png:https://canssiontario.utoronto.ca/wp-content/uploads/2025/06/Gelman-Andrew.png
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