This paper proposes the Mesh Neural Network (MNN), a novel architecture which allows neurons to be connected in any topology, to efficiently route information. In MNNs, information is propagated between neurons throughout a state transition function. State and error gradients are then directly computed from state updates without backward computation. The MNN architecture and the error propagation schema is formalized and derived in tensor algebra. The proposed computational model can fully supply a gradient descent process, and is potentially suitable for very large scale sparse NNs, due to its expressivity and training efficiency, with respect to NNs based on back-propagation and computational graphs
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
In this paper, we study the supervised learning in neural networks. Unlike the common practice of ba...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
This paper proposes the Mesh Neural Network (MNN), a novel architecture which allows neurons to be c...
This paper proposes the Mesh Neural Network (MNN), a novel architecture which allows neurons to be c...
We propose a new learning framework, signal propagation (sigprop), for propagating a learning signal...
Inspired by biological neural networks, Artificial neural networks are massively parallel computing ...
This paper presents the backpropagation algorithm based on an extended network approach in which the...
The aim of this paper is to introduce a new learning procedure for neural networks and to demonstrat...
This paper presents some simple techniques to improve the backpropagation algorithm. Since learning ...
for Neural Networks Deriving gradient algorithms for time-dependent neural network struc-tures typic...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
The purpose of this chapter is to introduce a powerful class of mathematical models: the artificial ...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
In this paper, we study the supervised learning in neural networks. Unlike the common practice of ba...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
This paper proposes the Mesh Neural Network (MNN), a novel architecture which allows neurons to be c...
This paper proposes the Mesh Neural Network (MNN), a novel architecture which allows neurons to be c...
We propose a new learning framework, signal propagation (sigprop), for propagating a learning signal...
Inspired by biological neural networks, Artificial neural networks are massively parallel computing ...
This paper presents the backpropagation algorithm based on an extended network approach in which the...
The aim of this paper is to introduce a new learning procedure for neural networks and to demonstrat...
This paper presents some simple techniques to improve the backpropagation algorithm. Since learning ...
for Neural Networks Deriving gradient algorithms for time-dependent neural network struc-tures typic...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
The purpose of this chapter is to introduce a powerful class of mathematical models: the artificial ...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
In this paper, we study the supervised learning in neural networks. Unlike the common practice of ba...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...