Bayesian Functional Principal Components Analysis via Variational Message Passing
Tui H. Nolan, Jeff Goldsmith, David Ruppert

TL;DR
This paper introduces a novel Bayesian functional principal components analysis method using variational message passing, enabling efficient inference on large, irregular functional datasets without covariance surface smoothing.
Contribution
It develops the first variational message passing algorithm tailored for Bayesian functional PCA, including new computational fragments for this purpose.
Findings
The method is computationally efficient and scalable.
It accurately captures principal modes of variation.
Application to temperature data demonstrates practical utility.
Abstract
Functional principal components analysis is a popular tool for inference on functional data. Standard approaches rely on an eigendecomposition of a smoothed covariance surface in order to extract the orthonormal functions representing the major modes of variation. This approach can be a computationally intensive procedure, especially in the presence of large datasets with irregular observations. In this article, we develop a Bayesian approach, which aims to determine the Karhunen-Lo\`eve decomposition directly without the need to smooth and estimate a covariance surface. More specifically, we develop a variational Bayesian algorithm via message passing over a factor graph, which is more commonly referred to as variational message passing. Message passing algorithms are a powerful tool for compartmentalizing the algebra and coding required for inference in hierarchical statistical…
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Taxonomy
TopicsStatistical Methods and Inference · Gaussian Processes and Bayesian Inference · Bayesian Methods and Mixture Models
