Bayesian Design of Experiments in the Presence of Nuisance Parameters
:
PhD program in Statistics
DSS Statistics Seminar
April 17, 2026, 12:00
In person.Room V (CU002)
Webinar^.https://uniroma1.zoom.us/j/83625004899?pwd=bXCtz0
mp759PUh2lkqT0BUoVa0Uegg.1
Passcode: 123456
Bayesian Design of
Experiments in the Presence
of Nuisance Parameters
Shirin Golchi
Department of Epidemiology and Biostatistics
McGill University, Montreal, Canada
Design of experiments has traditionally relied on the frequentist hypothesis testing
framework where the optimal size of the experiment is specified as the minimum
sample size that guarantees a required level of power. Sample size determination
may be performed analytically when the test statistic has a known asymptotic
sampling distribution and, therefore, the power function is available in analytic
form. Bayesian methods have gained popularity in all stages of discovery, namely,
design, analysis and decision making. Bayesian decision procedures rely on
posterior summaries whose sampling distributions are commonly estimated via
Monte Carlo simulations. In the design of scientific studies, the Bayesian approach
incorporates uncertainty about the design value(s) instead of conditioning on a
single value of the model parameter(s). Accounting for uncertainties in the design
value(s) is particularly critical when the model includes nuisance parameters. In this
talk, I present methodology that utilizes the large-sample properties of the posterior
distribution together with Bayesian additive regression trees (BART) to efficiently
obtain the optimal sample size and decision criteria in fixed and adaptive designs. I
introduce a fully Bayesian procedure that incorporates the uncertainty associated
with the model parameters including the nuisance parameters at the design stage.
The proposed approach significantly reduces the computational burden associated
with Bayesian design and enables wide adoption of Bayesian operating
characteristics.
Relatore:
Shirin Golchi
Data:
17/04/2026 - 12:00
Luogo:
[In person.Room V (CU002),Webinar^.https://uniroma1.zoom.us/j/83625004899?pwd=bXCtz0 mp759PUh2lkqT0BUoVa0Uegg.1 Passcode: 123456]
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