Semour Geisser Distinguished Lecture - September 22, 2005
University of Minnesota
School of Statistics
College of Liberal Arts
Something Old and Something New: Bivariate Normal and Computer Models
James O. Berger
Department of Statistics
Duke University
Thursday, September 22, 2005
3:00 PM, 2-530
Moos Tower
Minneapolis, East Bank Campus
Reception following at 4:30 PM, 300 Ford Hall
Abstract
One
of the earliest problems considered by Seymour Geisser was objective
Bayesian/fiducial inference for a bivariate (multivariate) normal
distribution. Forty plus years later, there are still interesting ideas
of Seymour’s to follow up, both practically and philosophically.
Seymour was a forceful advocate for predictive analysis. This is being
(belatedly) recognized as the central concept in computer model
validation. One of the major activities in science and engineering
today is the development of math-based computer models of scientific
and engineering processes and, after many false starts, it is being
realized that the most basic question in the evaluation of such
computer models is “Does the computer model adequately predict
reality?” A way to approach this question, with examples, will be
discussed.