2021
DOI: 10.48550/arxiv.2111.04558
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Fast and Scalable Spike and Slab Variable Selection in High-Dimensional Gaussian Processes

Abstract: Variable selection in Gaussian processes (GPs) is typically undertaken by thresholding the inverse lengthscales of 'automatic relevance determination' kernels, but in highdimensional datasets this approach can be unreliable. A more probabilistically principled alternative is to use spike and slab priors and infer a posterior probability of variable inclusion. However, existing implementations in GPs are extremely costly to run in both high-dimensional and large-n datasets, or are intractable for most kernels. … Show more

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