Efficient Gaussian Neural Processes for Regression
Stratis Markou, James Requeima, Wessel Bruinsma, Richard Turner

TL;DR
This paper introduces an efficient Gaussian Neural Process model that captures output dependencies and scales to higher-dimensional data, improving predictive performance and applicability in complex tasks.
Contribution
It proposes a scalable alternative to FullConvGNP that models output dependencies with maximum likelihood training for 2D and 3D data.
Findings
Good performance in synthetic experiments
Models successfully capture output dependencies
Scalable to higher-dimensional data
Abstract
Conditional Neural Processes (CNP; Garnelo et al., 2018) are an attractive family of meta-learning models which produce well-calibrated predictions, enable fast inference at test time, and are trainable via a simple maximum likelihood procedure. A limitation of CNPs is their inability to model dependencies in the outputs. This significantly hurts predictive performance and renders it impossible to draw coherent function samples, which limits the applicability of CNPs in down-stream applications and decision making. Neural Processes (NPs; Garnelo et al., 2018) attempt to alleviate this issue by using latent variables, relying on these to model output dependencies, but introduces difficulties stemming from approximate inference. One recent alternative (Bruinsma et al., 2021), which we refer to as the FullConvGNP, models dependencies in the predictions while still being trainable via exact…
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