Traditional neural networks assume vectorial inputs as the network is arranged as layers of single line of computing units called neurons. This special structure requires the non-vectorial inputs such as matrices to be converted into vectors. This process can be problematic. Firstly, the spatial information among elements of the data may be lost during vectorisation. Secondly, the solution space becomes very large which demands very special treatments to the network parameters and high computational cost. To address these issues, we propose matrix neural networks (MatNet), which takes matrices directly as inputs. Each neuron senses summarised information through bilinear mapping from lower layer units in exactly the same way as the classic ...
A typical feed forward neural network relies solely on its training algorithm, such as backprop or q...
Deep neural network architectures have recently pro-duced excellent results in a variety of areas in...
Artificial neural networks are systems composed of interconnected simple computing units known as ar...
Traditional neural networks assume vectorial inputs as the network is arranged as layers of single l...
[[abstract]]© 1993 中國工程師學會-This paper describes a novel neural network, called MATNET, to perform th...
One connectionist approach to the classification problem, which has gained popularity in recent year...
Deep neural network architectures have recently produced excellent results in a variety of areas in ...
Deep neural network architectures have recently produced excellent results in a variety of areas in ...
In this paper we present a modified neural network architecture and an algorithm that enables neural...
This paper presents the backpropagation algorithm based on an extended network approach in which the...
This paper proposes the Mesh Neural Network (MNN), a novel architecture which allows neurons to be c...
Matrix completion problems arise in many applications including recommendation systems, computer vis...
We show that the Kak neural network is suitable for optical implementation using a bipolar matrix ve...
Implementation of the Hopfield net which is used in the image processing type of applications where ...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
A typical feed forward neural network relies solely on its training algorithm, such as backprop or q...
Deep neural network architectures have recently pro-duced excellent results in a variety of areas in...
Artificial neural networks are systems composed of interconnected simple computing units known as ar...
Traditional neural networks assume vectorial inputs as the network is arranged as layers of single l...
[[abstract]]© 1993 中國工程師學會-This paper describes a novel neural network, called MATNET, to perform th...
One connectionist approach to the classification problem, which has gained popularity in recent year...
Deep neural network architectures have recently produced excellent results in a variety of areas in ...
Deep neural network architectures have recently produced excellent results in a variety of areas in ...
In this paper we present a modified neural network architecture and an algorithm that enables neural...
This paper presents the backpropagation algorithm based on an extended network approach in which the...
This paper proposes the Mesh Neural Network (MNN), a novel architecture which allows neurons to be c...
Matrix completion problems arise in many applications including recommendation systems, computer vis...
We show that the Kak neural network is suitable for optical implementation using a bipolar matrix ve...
Implementation of the Hopfield net which is used in the image processing type of applications where ...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
A typical feed forward neural network relies solely on its training algorithm, such as backprop or q...
Deep neural network architectures have recently pro-duced excellent results in a variety of areas in...
Artificial neural networks are systems composed of interconnected simple computing units known as ar...