In the last few years it has been shown that recurrent neural networks are adequate for processing general data structures like trees and graphs, which opens the doors to a number of new interesting applications previously unexplored. In this paper, we analyze the efficiency of learning the membership of DO AGs (Directed Ordered Acyclic Graphs) in terms of local minima of the error surface by relying on the principle that their absence is a guarantee of efficient learning. We give sufficient conditions under which the error surface is local minima free. Specifically, we define a topological index associated with a collection of DOAGs that makes it possible to design the architecture so as to avoid local minima
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
The recursive paradigm extends the neural network processing and learning algorithms to deal with st...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
In the last few years it has been shown that recurrent neural networks are adequate for processing g...
The present work deals with one of the major and not yet completely understood topics of supervised ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
The recursive paradigm extends the neural network processing and learning algorithms to deal with st...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
In the last few years it has been shown that recurrent neural networks are adequate for processing g...
The present work deals with one of the major and not yet completely understood topics of supervised ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
We are interested in the relationship between learning efficiency and representation in the case of ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...
The recursive paradigm extends the neural network processing and learning algorithms to deal with st...
Recursive neural networks are conceived for processing graphs and extend the well-known recurrent mo...