Variational Bayes for Gaussian Factor Models under the Cumulative Shrinkage Process
The cumulative shrinkage process is an increasing shrinkage prior that can be employed within models in which additional terms are supposed to play a progressively negligible role. A natural application is to Gaussian factor models, where such a process has proved effective in inducing parsimonious...
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Zusammenfassung: | The cumulative shrinkage process is an increasing shrinkage prior that can be
employed within models in which additional terms are supposed to play a
progressively negligible role. A natural application is to Gaussian factor
models, where such a process has proved effective in inducing parsimonious
representations while providing accurate inference on the data covariance
matrix. The cumulative shrinkage process came with an adaptive Gibbs sampler
that tunes the number of latent factors throughout iterations, which makes it
faster than the non-adaptive Gibbs sampler. In this work we propose a
variational algorithm for Gaussian factor models endowed with a cumulative
shrinkage process. Such a strategy provides comparable inference with respect
to the adaptive Gibbs sampler and further reduces runtime |
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DOI: | 10.48550/arxiv.2008.05310 |