The aim of this dissertation is the application of recurrent neural networks (RNNs) to solving some problems from a matrix algebra with particular reference to the computations of the generalized inverses as well as solving the matrix equations of constant (timeinvariant) matrices. We examine the ability to exploit the correlation between the dynamic state equations of recurrent neural networks for computing generalized inverses and integral representations of these generalized inverses. Recurrent neural networks are composed of independent parts (sub-networks). These sub-networks can work simultaneously, so parallel and distributed processing can be accomplished. In this way, the computational advantages over the existing sequen...
Recurrent neural networks (RNNs) offer flexible machine learning tools which share the learning abil...
An implicit recurrent neural network model (IRNN) is proposed in this paper for solving on-line time...
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
Our goal is to investigate and exploit an analogy between the scaled hyperpower family (SHPI family)...
AbstractRecurrent neural networks for solving linear matrix equations are proposed. The proposed rec...
Following the idea of using first-order time derivatives, this paper presents a general recurrent n...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
10.1109/CDC.2003.1272262Proceedings of the IEEE Conference on Decision and Control66169-6174PCDC
AbstractAs the efficient calculation of eigenpairs of a matrix, especially, a general real matrix, i...
This paper describes a special type of dynamic neural network called the Recursive Neural Network (R...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
A recurrent neural network solving the approximate nonnegative matrix factorization (NMF) problem is...
A novel kind of a hybrid recursive neural implicit dynamics for real-time matrix inversion has been ...
We introduce a recurrent network architecture for modelling a general class of dynamical systems
Makarov VA, Song Y, Velarde MG, Hübner D, Cruse H. Elements for a general memory structure: properti...
Recurrent neural networks (RNNs) offer flexible machine learning tools which share the learning abil...
An implicit recurrent neural network model (IRNN) is proposed in this paper for solving on-line time...
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...
Our goal is to investigate and exploit an analogy between the scaled hyperpower family (SHPI family)...
AbstractRecurrent neural networks for solving linear matrix equations are proposed. The proposed rec...
Following the idea of using first-order time derivatives, this paper presents a general recurrent n...
Hyperpower family of iterative methods of arbitrary convergence order is one of the most frequently ...
10.1109/CDC.2003.1272262Proceedings of the IEEE Conference on Decision and Control66169-6174PCDC
AbstractAs the efficient calculation of eigenpairs of a matrix, especially, a general real matrix, i...
This paper describes a special type of dynamic neural network called the Recursive Neural Network (R...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
A recurrent neural network solving the approximate nonnegative matrix factorization (NMF) problem is...
A novel kind of a hybrid recursive neural implicit dynamics for real-time matrix inversion has been ...
We introduce a recurrent network architecture for modelling a general class of dynamical systems
Makarov VA, Song Y, Velarde MG, Hübner D, Cruse H. Elements for a general memory structure: properti...
Recurrent neural networks (RNNs) offer flexible machine learning tools which share the learning abil...
An implicit recurrent neural network model (IRNN) is proposed in this paper for solving on-line time...
Abstract. A special class of recurrent neural network, termed Zhang neu-ral network (ZNN) depicted i...