Probabilistic Size-and-shape Functional Mixed Models
Sunday, Aug 3: 4:05 PM - 4:35 PM
Invited Paper Session
Music City Center
The reliable recovery and uncertainty quantification of a fixed effect function μ in a functional mixed model, for modelling population- and object-level variability in noisily observed functional data, is a notoriously challenging task: variations along the x and y axes are confounded with additive measurement error, and cannot in general be disentangled. The question then as to what properties of μ may be reliably recovered becomes important. We demonstrate that it is possible to recover the size-and-shape of a square-integrable μ under a Bayesian functional mixed model. The size-and-shape of μ is a geometric property invariant to a family of space-time unitary transformations, viewed as rotations of the Hilbert space, that jointly transform the x and y axes. A random object-level unitary transformation then captures size-and-shape preserving deviations of μ from an individual function, while a random linear term and measurement error capture size-and-shape altering deviations. The model is regularized by appropriate priors on the unitary transformations, posterior summaries of which may then be suitably interpreted as optimal data-driven rotations of a fixed orthonormal basis for the Hilbert space. Our numerical experiments demonstrate utility of the proposed model, and superiority over the current state-of-the-art. This is joint work with Fangyi Wang (Statistics, Ohio State University), Oksana Chkrebtii (Statistics, Ohio State University) and Karthik Bharath (Mathematical Sciences, University of Nottingham).
size-and-shape
Bayesian functional mixed model
You have unsaved changes.