We are delighted to announce that our next speaker is
Larry Wasserman
(Carnegie Mellon University) who will talk about "
Robust
Simulation Based Inference" on
Wednesday the 25th March at 2pm Uk time (note
the different day and time!) with an abstract reported below.
Title: Robust Simulation Based Inference
Abstract: Simulation-Based Inference (SBI) is an
approach to statistical inference where simulations from an
assumed model are used to construct estimators and confidence
sets. SBI is often used when the likelihood is intractable and
to construct confidence sets that do not rely on asymptotic
methods or regularity conditions. Traditional SBI methods
assume that the model is correct, but, as always, this can
lead to invalid inference when the model is misspecified. This
paper introduces robust methods that allow for valid
frequentist inference in the presence of model
misspecification. We propose a framework where the target of
inference is a projection parameter that minimizes a
discrepancy between the true distribution and the assumed
model. The method guarantees valid inference, even when the
model is incorrectly specified and even if the standard
regularity conditions fail. Alternatively, we introduce model
expansion through exponential tilting as another way to
account for model misspecification. We also develop an SBI
based goodness-of-fit test to detect model misspecification.
Finally, we propose two ideas that are useful in the SBI
framework beyond robust inference: an SBI based method to
obtain closed form approximations of intractable models and an
active learning approach to more efficiently sample the
parameter space.
Keywords: Exponential tilting, model misspecification,
robust inference, simulation based inference, valid inference.
Reference: L. Tomaselli, V. Ventura, L. Wasserman.
Robust Simulation Based Inference. Preprint at
ArXiv:2508.02404,2025.
Best,
Umberto Picchini on the behalf of the
OWABI Organisers