Kernel Memory Networks: A Unifying Framework for Memory Modeling
Abstract
We consider the problem of training a neural network to store a set of patterns with maximal noise robustness. A solution, in terms of optimal weights and state update rules, is derived by training each individual neuron to perform either kernel classification or interpolation with a minimum weight norm. By applying this method to feed-forward and recurrent networks, we derive optimal models, termed kernel memory networks, that include, as special cases, many of the hetero- and auto-associative memory models that have been proposed over the past years, such as modern Hopfield networks and Kanerva's sparse distributed memory. We modify Kanerva's model and demonstrate a simple way to design a kernel memory network that can store an exponential number of continuous-valued patterns with a finite basin of attraction. The framework of kernel memory networks offers a simple and intuitive way to understand the storage capacity of previous memory models, and allows for new biological interpretations in terms of dendritic non-linearities and synaptic cross-talk.
Cite
@article{arxiv.2208.09416,
title = {Kernel Memory Networks: A Unifying Framework for Memory Modeling},
author = {Georgios Iatropoulos and Johanni Brea and Wulfram Gerstner},
journal= {arXiv preprint arXiv:2208.09416},
year = {2024}
}
Comments
24 pages, 5 figures. This is the version published in the NeurIPS 2022 proceedings