A three-threshold learning rule approaches the maximal capacity of recurrent neural networks
Alireza Alemi, Carlo Baldassi, Nicolas Brunel, Riccardo Zecchina

TL;DR
This paper introduces a three-threshold learning rule for recurrent neural networks that achieves near-maximal storage capacity by relying solely on local information, improving upon traditional models like Hopfield networks.
Contribution
The authors develop a novel online learning rule based on transforming perceptron learning, enabling high-capacity memory storage without explicit supervision.
Findings
Capacity close to analytical predictions.
Capacity depends on external input strength.
Synaptic connectivity shows increased sparsity and symmetry with more stored patterns.
Abstract
Understanding the theoretical foundations of how memories are encoded and retrieved in neural populations is a central challenge in neuroscience. A popular theoretical scenario for modeling memory function is the attractor neural network scenario, whose prototype is the Hopfield model. The model has a poor storage capacity, compared with the capacity achieved with perceptron learning algorithms. Here, by transforming the perceptron learning rule, we present an online learning rule for a recurrent neural network that achieves near-maximal storage capacity without an explicit supervisory error signal, relying only upon locally accessible information. The fully-connected network consists of excitatory binary neurons with plastic recurrent connections and non-plastic inhibitory feedback stabilizing the network dynamics; the memory patterns are presented online as strong afferent currents,…
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