How to Represent Part-Whole Hierarchies in a Neural Network

Author:

Hinton Geoffrey123

Affiliation:

1. Google Research

2. Vector Institute, Toronto, Ontario M5G 1M1, Canada

3. Department of Computer Science, University of Toronto, Toronto, ON M5S 2E4, Canada hinton@cs.toronto.edu

Abstract

AbstractThis article does not describe a working system. Instead, it presents a single idea about representation that allows advances made by several different groups to be combined into an imaginary system called GLOM.1 The advances include transformers, neural fields, contrastive representation learning, distillation, and capsules. GLOM answers the question: How can a neural network with a fixed architecture parse an image into a part-whole hierarchy that has a different structure for each image? The idea is simply to use islands of identical vectors to represent the nodes in the parse tree. If GLOM can be made to work, it should significantly improve the interpretability of the representations produced by transformer-like systems when applied to vision or language.

Publisher

MIT Press

Subject

Cognitive Neuroscience,Arts and Humanities (miscellaneous)

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