In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchical architecture such that their couplings scale with their reciprocal distance. As a full statistical mechanics solution is not yet available, after a streamlined introduction to the state of the art via that route, the problem is consistently approached through signal-to-noise technique and extensive numerical simulations. Focusing on the low-storage regime, where the amount of stored patterns grows at most logarithmical with the system size, we prove that these non-mean-field Hopfield-like networks display a richer phase diagram than their classical counterparts. In particular, these networks are able to perform serial processing (i.e. retr...
Synchronization of neurons forming a network with a hierarchical structure is essential for the brai...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
We investigate the efficient transmission and processing of weak, subthreshold signals in a realisti...
In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchic...
In this paper, we introduce and investigate the statistical mechanics of hierarchical neural network...
We adapt belief-propagation techniques to study the equilibrium behavior of a bipartite spin glass, ...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
Many real-world networks are directed, sparse and hierarchical, with a mixture of feed-forward and f...
A modern challenge of Artificial Intelligence is learning multiple patterns at once (i.e.parallel le...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
We introduce a novel type of neural network, termed the parallelHopfield network, that can simultane...
With the common three-layer neural network architectures, the processing of a large number of signal...
The mean field Hopfield model is the paradigm for serial processing networks: a system able to retri...
Synchronization of neurons forming a network with a hierarchical structure is essential for the brai...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
We investigate the efficient transmission and processing of weak, subthreshold signals in a realisti...
In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchic...
In this paper, we introduce and investigate the statistical mechanics of hierarchical neural network...
We adapt belief-propagation techniques to study the equilibrium behavior of a bipartite spin glass, ...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
Many real-world networks are directed, sparse and hierarchical, with a mixture of feed-forward and f...
A modern challenge of Artificial Intelligence is learning multiple patterns at once (i.e.parallel le...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
We introduce a novel type of neural network, termed the parallelHopfield network, that can simultane...
With the common three-layer neural network architectures, the processing of a large number of signal...
The mean field Hopfield model is the paradigm for serial processing networks: a system able to retri...
Synchronization of neurons forming a network with a hierarchical structure is essential for the brai...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
We investigate the efficient transmission and processing of weak, subthreshold signals in a realisti...