PIMS Lunchbox Lecture: Rob Deardon
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A video of this event is available on mathtube.org
Experimental design is a branch of statistics focused upon designing experimental studies in a way that maximizes the amount of salient information produced by the experiment. It is a topic which has been well studied in the context of linear systems. However, many physical, biological, economic, financial and engineering systems of interest are inherently non-linear in nature. Experimental design for non-linear models is complicated by the fact that the optimal design depends upon the parameters that we are using the experiment to estimate. A Bayesian, often simulation-based, framework is a natural setting for such design problems. We will illustrate the use of such a framework by considering the design of an animal disease transmission experiment where the underlying goal is to identify some characteristics of the disease dynamics (e.g. a vaccine effect, or the infectious period).
Additional Information
Location:
Downtown Campus, University of Calgary
Room 626, 907-8 Avenue SW
Lecture Time: 12:00pm
Rob Deardon, Department of Mathematics and Statistics and Faculty of Veterinary Medicine, University of Calgary
PIMS is grateful for the support of Alberta Innovation and Advanced Education, and the University of Calgary for their support of this series of lectures.