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ICLR 2021

Probabilistic Numeric Convolutional Neural Networks

Conference Paper Poster Presentations Artificial Intelligence ยท Machine Learning

Abstract

Continuous input signals like images and time series that are irregularly sampled or have missing values are challenging for existing deep learning methods. Coherently defined feature representations must depend on the values in unobserved regions of the input. Drawing from the work in probabilistic numerics, we propose Probabilistic Numeric Convolutional Neural Networks which represent features as Gaussian processes, providing a probabilistic description of discretization error. We then define a convolutional layer as the evolution of a PDE defined on this GP, followed by a nonlinearity. This approach also naturally admits steerable equivariant convolutions under e.g. the rotation group. In experiments we show that our approach yields a $3\times$ reduction of error from the previous state of the art on the SuperPixel-MNIST dataset and competitive performance on the medical time series dataset PhysioNet2012.

Authors

Keywords

  • probabilistic numerics
  • gaussian processes
  • discretization error
  • pde
  • superpixel
  • irregularly spaced time series
  • misssing data
  • spatial uncertainty

Context

Venue
International Conference on Learning Representations
Archive span
2013-2025
Indexed papers
10294
Paper id
320439743917368499