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 for loss of spatial information and huge solution space. To address these issues, we propose matrix neural networks (MatNet), which takes matrices directly as inputs. Each layer summarises and passes information through bilinear mapping. Under this structure, back prorogation and gradient descent combination can be utilised to obtain network parameters efficiently. Furthermore, it can be conveniently extended for multi-modal inputs. We apply MatNet to MNIST handwritten d...
The corners and the middle points, which are extracted as features from the line approximation of a ...
In the recommendation system, data comes in the form of a vector or matrix. Matrix factorization tec...
This paper presents an overview of novel networking strategies for neural networks which significant...
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...
Matrix completion problems arise in many applications including recommendation systems, computer vis...
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 ...
Neural networks and particularly Deep learning have been comparatively little studied from the theor...
First, a brief overview of neural networks and their applications are described, including the BAM (...
Arnonkijpanich B, Hammer B, Hasenfuss A, Lursinsap C. Matrix Learning for Topographic Neural Maps. I...
Significance Matrix completion is a fundamental problem in machine learning that arises i...
This article introduces a novel neural network framework for the approximate bilinear algorithm that...
Deep neural network architectures have recently pro-duced excellent results in a variety of areas in...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
The corners and the middle points, which are extracted as features from the line approximation of a ...
In the recommendation system, data comes in the form of a vector or matrix. Matrix factorization tec...
This paper presents an overview of novel networking strategies for neural networks which significant...
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...
Matrix completion problems arise in many applications including recommendation systems, computer vis...
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 ...
Neural networks and particularly Deep learning have been comparatively little studied from the theor...
First, a brief overview of neural networks and their applications are described, including the BAM (...
Arnonkijpanich B, Hammer B, Hasenfuss A, Lursinsap C. Matrix Learning for Topographic Neural Maps. I...
Significance Matrix completion is a fundamental problem in machine learning that arises i...
This article introduces a novel neural network framework for the approximate bilinear algorithm that...
Deep neural network architectures have recently pro-duced excellent results in a variety of areas in...
Developments in deep learning with ANNs (Artificial Neural Networks) are paving the way for revoluti...
The corners and the middle points, which are extracted as features from the line approximation of a ...
In the recommendation system, data comes in the form of a vector or matrix. Matrix factorization tec...
This paper presents an overview of novel networking strategies for neural networks which significant...