A class of hierarchical neural network models introduced by Dotsenko for the storage and associative recall of strongly correlated memories is studied analytically and numerically. In these models, patterns stored in higher levels of the hierarchy represent generalized categories and those stored in lower levels describe finer details. We first show that the models originally proposed by Dotsenko have a serious flaw: they are not able to detect or correct errors in categorization which may be present in the input. We then describe three different models which attempt to overcome this shortcoming of the original models. In the first model, the interaction between different levels of the hierarchy has the form of an external field conjugate t...
The present paper proposes a neural network model which has an ability of hierarchical categor· izat...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
Abstract In this work we study a Hebbian neural network, where neurons are arranged according to a h...
A class of hierarchical neural network models introduced by Dotsenko for the storage and associative...
A class of hierarchical neural network models introduced by Dotsenko for the storage and associative...
The progress in information technologies enables applications of artificial neural networks even in ...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
This diploma thesis deals with hierarchical associative memories (HAM), which have been experimental...
We analyze the storage capacity of a variant of the Hopfield model with semantically correlated patt...
Hopfield-type, neural-network models. A mathematical framework for cornporing the two models is deve...
A numerical analysis of the retrieval behavior of an associative memory model where the memorized pa...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
In this paper, we introduce and investigate the statistical mechanics of hierarchical neural network...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
The present paper proposes a neural network model which has an ability of hierarchical categor· izat...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
Abstract In this work we study a Hebbian neural network, where neurons are arranged according to a h...
A class of hierarchical neural network models introduced by Dotsenko for the storage and associative...
A class of hierarchical neural network models introduced by Dotsenko for the storage and associative...
The progress in information technologies enables applications of artificial neural networks even in ...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
This diploma thesis deals with hierarchical associative memories (HAM), which have been experimental...
We analyze the storage capacity of a variant of the Hopfield model with semantically correlated patt...
Hopfield-type, neural-network models. A mathematical framework for cornporing the two models is deve...
A numerical analysis of the retrieval behavior of an associative memory model where the memorized pa...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
In this paper, we introduce and investigate the statistical mechanics of hierarchical neural network...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
The present paper proposes a neural network model which has an ability of hierarchical categor· izat...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
Abstract In this work we study a Hebbian neural network, where neurons are arranged according to a h...