Abstract |
New methods for the simultaneous inference of graphical models and
covariates effects in the Bayesian framework will be discussed. I will
consider regression settings where the interest is in the estimation
of sparse networks among a set of primary variables, and where
covariates may impact the strength of edges. The proposed models
utilize spike-and-slab priors to perform edge selection, and Gaussian
process priors to allow for flexibility in the covariate effects.
Efficient and scalable algorithms for posterior inference will be
employed for the estimation of the models. Simulation studies will
demonstrate how the proposed models improve on the accuracy of
existing methods, in both network recovery and covariate selection. I
will show applications of the proposed models to neuroimaging and
genomic datasets.
2:30-3:00pm: talk for graduate students (note the different time) |
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