Equivariant Learning of Stochastic Fields: Gaussian Processes and Steerable Conditional Neural Processes

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Authors Peter Holderrieth, Michael Hutchinson, Yee Whye Teh arXiv ID 2011.12916 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 33 Venue International Conference on Machine Learning Last Checked 2 months ago
Abstract
Motivated by objects such as electric fields or fluid streams, we study the problem of learning stochastic fields, i.e. stochastic processes whose samples are fields like those occurring in physics and engineering. Considering general transformations such as rotations and reflections, we show that spatial invariance of stochastic fields requires an inference model to be equivariant. Leveraging recent advances from the equivariance literature, we study equivariance in two classes of models. Firstly, we fully characterise equivariant Gaussian processes. Secondly, we introduce Steerable Conditional Neural Processes (SteerCNPs), a new, fully equivariant member of the Neural Process family. In experiments with Gaussian process vector fields, images, and real-world weather data, we observe that SteerCNPs significantly improve the performance of previous models and equivariance leads to improvements in transfer learning tasks.
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