An attractor neural network architecture with an ultra high information capacity: numerical results
Alireza Alemi

TL;DR
This paper introduces a hierarchical attractor neural network architecture that significantly enhances information capacity, achieving exponential growth with network expansion, and demonstrates the underlying mechanisms through simulations and mean-field analysis.
Contribution
The paper proposes a novel hierarchical attractor network with a two-layer structure and local learning rules, achieving ultra high information capacity beyond conventional models.
Findings
Capacity grows exponentially with the expansion ratio N_h/N_v.
Correlation between hidden and visible units underpins high capacity.
Symmetry in connectivity increases with expansion ratio at maximal capacity.
Abstract
Attractor neural network is an important theoretical scenario for modeling memory function in the hippocampus and in the cortex. In these models, memories are stored in the plastic recurrent connections of neural populations in the form of "attractor states". The maximal information capacity for conventional abstract attractor networks with unconstrained connections is 2 bits/synapse. However, an unconstrained synapse has the capacity to store infinite amount of bits in a noiseless theoretical scenario: a capacity that conventional attractor networks cannot achieve. Here, I propose a hierarchical attractor network that can achieve an ultra high information capacity. The network has two layers: a visible layer with neurons, and a hidden layer with neurons. The visible-to-hidden connections are set at random and kept fixed during the training phase, in which the memory…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Applications · Advanced Memory and Neural Computing
