ITLGNECOMP-PHNov 4, 2025

Redundancy Maximization as a Principle of Associative Memory Learning

arXiv:2511.02584v11 citationsh-index: 36
Originality Highly original
AI Analysis

This work addresses the limited performance of associative memory models, which are crucial for pattern retrieval in AI systems, by introducing a novel information-theoretic approach that significantly enhances capacity.

The authors tackled the problem of low memory capacity in classical Hopfield networks by proposing redundancy maximization as a learning principle, achieving a memory capacity of 1.59, which is over ten times higher than the 0.14 capacity of traditional networks and outperforms recent state-of-the-art implementations.

Associative memory, traditionally modeled by Hopfield networks, enables the retrieval of previously stored patterns from partial or noisy cues. Yet, the local computational principles which are required to enable this function remain incompletely understood. To formally characterize the local information processing in such systems, we employ a recent extension of information theory - Partial Information Decomposition (PID). PID decomposes the contribution of different inputs to an output into unique information from each input, redundant information across inputs, and synergistic information that emerges from combining different inputs. Applying this framework to individual neurons in classical Hopfield networks we find that below the memory capacity, the information in a neuron's activity is characterized by high redundancy between the external pattern input and the internal recurrent input, while synergy and unique information are close to zero until the memory capacity is surpassed and performance drops steeply. Inspired by this observation, we use redundancy as an information-theoretic learning goal, which is directly optimized for each neuron, dramatically increasing the network's memory capacity to 1.59, a more than tenfold improvement over the 0.14 capacity of classical Hopfield networks and even outperforming recent state-of-the-art implementations of Hopfield networks. Ultimately, this work establishes redundancy maximization as a new design principle for associative memories and opens pathways for new associative memory models based on information-theoretic goals.

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