Auto-associative neural networks (e.g. the Hopfield model implementing the standard Hebbian prescription) serve as a foundational framework for pattern recognition and associative memory in statistical mechanics. However, their hetero-associative counterparts, though less explored, exhibit even richer computational capabilities. In this work, we examine a straightforward extension of Kosko's bidirectional associative memory, namely a three-directional associative memory, that is a tripartite neural network equipped with generalized Hebbian weights. Through both analytical approaches (using replica-symmetric statistical mechanics) and computational methods (via Monte Carlo simulations), we derive phase diagrams within the space of control parameters, revealing a region where the network can successfully perform pattern recognition as well as other tasks. In particular, it can achieve pattern disentanglement, namely, when presented with a mixture of patterns, the network can recover the original patterns. Furthermore, the system is capable of retrieving Markovian sequences of patterns and performing generalized frequency modulation.
Agliari, E., Alessandrelli, A., Barra, A., Centonze, M.S., Ricci-Tersenghi, F. (2025). Generalized hetero-associative neural networks. JOURNAL OF STATISTICAL MECHANICS: THEORY AND EXPERIMENT, 2025(1), 1-47 [10.1088/1742-5468/ada918].
Generalized hetero-associative neural networks
Elena Agliari;Adriano Barra;Martino Salomone Centonze;
2025
Abstract
Auto-associative neural networks (e.g. the Hopfield model implementing the standard Hebbian prescription) serve as a foundational framework for pattern recognition and associative memory in statistical mechanics. However, their hetero-associative counterparts, though less explored, exhibit even richer computational capabilities. In this work, we examine a straightforward extension of Kosko's bidirectional associative memory, namely a three-directional associative memory, that is a tripartite neural network equipped with generalized Hebbian weights. Through both analytical approaches (using replica-symmetric statistical mechanics) and computational methods (via Monte Carlo simulations), we derive phase diagrams within the space of control parameters, revealing a region where the network can successfully perform pattern recognition as well as other tasks. In particular, it can achieve pattern disentanglement, namely, when presented with a mixture of patterns, the network can recover the original patterns. Furthermore, the system is capable of retrieving Markovian sequences of patterns and performing generalized frequency modulation.File | Dimensione | Formato | |
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