We consider $L$-directional associative memories, composed of Hopfield networks, displaying imitative Hebbian intra-network interactions and anti-imitative Hebbian inter-network interactions, where couplings are built over a set of hidden binary patterns. We evaluate the model's performance in reconstructing the whole set of hidden binary patterns when provided with mixtures of noisy versions of these patterns. Our numerical results demonstrate the model's high effectiveness in the reconstruction task for structureless and structured datasets.
Multi-channel pattern reconstruction through $L$-directional associative memories / Agliari, Elena; Alessandrelli, Andrea; Duarte Mourao, Paulo; Fachechi, Alberto. - (2025). (Intervento presentato al convegno ICLR 2025 tenutosi a Singapore).
Multi-channel pattern reconstruction through $L$-directional associative memories
Agliari Elena;Alessandrelli Andrea;Duarte Mourao Paulo;Fachechi Alberto
2025
Abstract
We consider $L$-directional associative memories, composed of Hopfield networks, displaying imitative Hebbian intra-network interactions and anti-imitative Hebbian inter-network interactions, where couplings are built over a set of hidden binary patterns. We evaluate the model's performance in reconstructing the whole set of hidden binary patterns when provided with mixtures of noisy versions of these patterns. Our numerical results demonstrate the model's high effectiveness in the reconstruction task for structureless and structured datasets.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


