Competitive learning to generate sparse representations for associative memory

01/05/2023
by   Luis Sacouto, et al.
0

One of the most well established brain principles, hebbian learning, has led to the theoretical concept of neural assemblies. Based on it, many interesting brain theories have spawned. Palm's work implements this concept through binary associative memory, in a model that not only has a wide cognitive explanatory power but also makes neuroscientific predictions. Yet, associative memory can only work with logarithmic sparse representations, which makes it extremely difficult to apply the model to real data. We propose a biologically plausible network that encodes images into codes that are suitable for associative memory. It is organized into groups of neurons that specialize on local receptive fields, and learn through a competitive scheme. After conducting auto- and hetero-association experiments on two visual data sets, we can conclude that our network not only beats sparse coding baselines, but also that it comes close to the performance achieved using optimal random codes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/07/2020

From Artificial Intelligence to Brain Intelligence: The basis learning and memory algorithm for brain-like intelligence

The algorithm of brain learning and memory is still undetermined. The ba...
research
06/27/2023

The Architecture of a Biologically Plausible Language Organ

We present a simulated biologically plausible language organ, made up of...
research
04/30/2021

Using brain inspired principles to unsupervisedly learn good representations for visual pattern recognition

Although deep learning has solved difficult problems in visual pattern r...
research
05/19/2023

Sequential Memory with Temporal Predictive Coding

Memorizing the temporal order of event sequences is critical for the sur...
research
12/28/2022

Sparse Coding in a Dual Memory System for Lifelong Learning

Efficient continual learning in humans is enabled by a rich set of neuro...
research
02/22/2023

Sparse, Geometric Autoencoder Models of V1

The classical sparse coding model represents visual stimuli as a linear ...
research
09/06/2016

Deviant Learning Algorithm: Learning Sparse Mismatch Representations through Time and Space

Predictive coding (PDC) has recently attracted attention in the neurosci...

Please sign up or login with your details

Forgot password? Click here to reset