This paper proposes a novel algorithm for training recurrent neural network models of nonlinear dynamical systems from an input/output training dataset. Arbitrary convex and twice-differentiable loss functions and regularization terms are handled by sequential least squares and either a line-search (LS) or a trust-region method \`a la Levenberg-Marquardt (LM) for ensuring convergence. In addition, to handle non-smooth regularization terms such as $\ell_1$, $\ell_0$, and group-Lasso regularizers, as well as to impose possibly non-convex constraints such as integer and mixed-integer constraints, we combine sequential least squares with the alternating direction method of multipliers (ADMM). We call the resulting algorithm NAILS (nonconvex ADM...
A recurrent neural network solving the approximate nonnegative matrix factorization (NMF) problem is...
This paper describes a special type of dynamic neural network called the Recursive Neural Network (R...
In this paper a novel approach to learning in Recurrent Neural Networks (RNN) is introduced and appl...
In this work a novel approach to the training of recurrent neural nets is presented. The algorithm e...
This paper presents a new approach to learning in recurrent neural networks, based on the descent of...
In this work a novel approach to the training of recurrent neural nets is presented. the algorithm e...
Recurrent neural networks have the potential to perform significantly better than the commonly used ...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
In this paper a new approach to learning in recurrent neural networks is presented. The method propo...
A real time recurrent learning (RTRL) algorithm with an adaptive-learning rate for nonlinear adaptiv...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
Automatic nonlinear-system identification is very useful for various disciplines including, e.g., au...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
We survey learning algorithms for recurrent neural networks with hidden units, and put the various t...
In this chapter, we describe the basic concepts behind the functioning of recurrent neural networks ...
A recurrent neural network solving the approximate nonnegative matrix factorization (NMF) problem is...
This paper describes a special type of dynamic neural network called the Recursive Neural Network (R...
In this paper a novel approach to learning in Recurrent Neural Networks (RNN) is introduced and appl...
In this work a novel approach to the training of recurrent neural nets is presented. The algorithm e...
This paper presents a new approach to learning in recurrent neural networks, based on the descent of...
In this work a novel approach to the training of recurrent neural nets is presented. the algorithm e...
Recurrent neural networks have the potential to perform significantly better than the commonly used ...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
In this paper a new approach to learning in recurrent neural networks is presented. The method propo...
A real time recurrent learning (RTRL) algorithm with an adaptive-learning rate for nonlinear adaptiv...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
Automatic nonlinear-system identification is very useful for various disciplines including, e.g., au...
Given a task of tracking a trajectory, a recurrent neural network may be considered as a black-box n...
We survey learning algorithms for recurrent neural networks with hidden units, and put the various t...
In this chapter, we describe the basic concepts behind the functioning of recurrent neural networks ...
A recurrent neural network solving the approximate nonnegative matrix factorization (NMF) problem is...
This paper describes a special type of dynamic neural network called the Recursive Neural Network (R...
In this paper a novel approach to learning in Recurrent Neural Networks (RNN) is introduced and appl...