Poster
Convolutional Deep Kernel Machines
Edward Milsom · Ben Anson · Laurence Aitchison
Halle B
Standard infinite-width limits of neural networks sacrifice the ability for intermediate layers to learn representations from data. Recent work ("A theory of representation learning gives a deep generalisation of kernel methods", Yang et al. 2023) modified the Neural Network Gaussian Process (NNGP) limit of Bayesian neural networks so that representation learning is retained. Furthermore, they found that applying this modified limit to a deep Gaussian process gives a practical learning algorithm which they dubbed the "deep kernel machine" (DKM). However, they only considered the simplest possible setting: regression in small, fully connected networks with e.g. 10 input features. Here, we introduce convolutional deep kernel machines. This required us to develop a novel inter-domain inducing point approximation, as well as introducing and experimentally assessing a number of techniques not previously seen in DKMs, including analogues to batch normalisation, different likelihoods, and different types of top-layer. The resulting model trains in roughly 28 GPU hours, achieving around 99\% test accuracy on MNIST, 71\% on CIFAR-100, and 92\% on CIFAR-10, which is SOTA for kernel methods.