Brain-like combination of feedforward and recurrent network components
achieves prototype extraction and robust pattern recognition
- URL: http://arxiv.org/abs/2206.15036v1
- Date: Thu, 30 Jun 2022 06:03:11 GMT
- Title: Brain-like combination of feedforward and recurrent network components
achieves prototype extraction and robust pattern recognition
- Authors: Naresh Balaji Ravichandran, Anders Lansner, Pawel Herman
- Abstract summary: Associative memory has been a prominent candidate for the computation performed by the massively recurrent neocortical networks.
We combine a recurrent attractor network with a feedforward network that learns distributed representations using an unsupervised Hebbian-Bayesian learning rule.
We demonstrate that the recurrent attractor component implements associative memory when trained on the feedforward-driven internal (hidden) representations.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Associative memory has been a prominent candidate for the computation
performed by the massively recurrent neocortical networks. Attractor networks
implementing associative memory have offered mechanistic explanation for many
cognitive phenomena. However, attractor memory models are typically trained
using orthogonal or random patterns to avoid interference between memories,
which makes them unfeasible for naturally occurring complex correlated stimuli
like images. We approach this problem by combining a recurrent attractor
network with a feedforward network that learns distributed representations
using an unsupervised Hebbian-Bayesian learning rule. The resulting network
model incorporates many known biological properties: unsupervised learning,
Hebbian plasticity, sparse distributed activations, sparse connectivity,
columnar and laminar cortical architecture, etc. We evaluate the synergistic
effects of the feedforward and recurrent network components in complex pattern
recognition tasks on the MNIST handwritten digits dataset. We demonstrate that
the recurrent attractor component implements associative memory when trained on
the feedforward-driven internal (hidden) representations. The associative
memory is also shown to perform prototype extraction from the training data and
make the representations robust to severely distorted input. We argue that
several aspects of the proposed integration of feedforward and recurrent
computations are particularly attractive from a machine learning perspective.
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