Associative content-addressable networks with exponentially many robust stable states

04/06/2017
by   Rishidev Chaudhuri, et al.
0

The brain must robustly store a large number of memories, corresponding to the many events encountered over a lifetime. However, the number of memory states in existing neural network models either grows weakly with network size or recall fails catastrophically with vanishingly little noise. We construct an associative content-addressable memory with exponentially many stable states and robust error-correction. The network possesses expander graph connectivity on a restricted Boltzmann machine architecture. The expansion property allows simple neural network dynamics to perform at par with modern error-correcting codes. Appropriate networks can be constructed with sparse random connections, glomerular nodes, and associative learning using low dynamic-range weights. Thus, sparse quasi-random structures---characteristic of important error-correcting codes---may provide for high-performance computation in artificial neural networks and the brain.

READ FULL TEXT

page 22

page 38

research
06/22/2018

Quantum Codes from Neural Networks

We report on the usefulness of using neural networks as a variational st...
research
07/12/2023

New Three and Four-Dimensional Toric and Burst-Error-Correcting Quantum Codes

Ongoing research and experiments have enabled quantum memory to realize ...
research
11/11/2020

Error-correcting Codes for Short Tandem Duplication and Substitution Errors

Due to its high data density and longevity, DNA is considered a promisin...
research
02/04/2022

Direct observation of a dynamical glass transition in a nanomagnetic artificial Hopfield network

Spin glasses, generally defined as disordered systems with randomized co...
research
05/09/2023

Simplicial Hopfield networks

Hopfield networks are artificial neural networks which store memory patt...
research
11/20/2020

Graph Signal Recovery Using Restricted Boltzmann Machines

We propose a model-agnostic pipeline to recover graph signals from an ex...
research
01/08/2013

Coupled Neural Associative Memories

We propose a novel architecture to design a neural associative memory th...

Please sign up or login with your details

Forgot password? Click here to reset