In the last few years several kinds of recurrent neural networks (RNNs) have been proposed for solving linear and nonlinear optimization problems. In this paper, we provide a survey of RNNs that can be used to solve both the constrained quadratic optimization problem related to support vector machine (SVM) learning, and the SVM model selection by automatic hyperparameter tuning. The appeal of this approach is the possibility of implementing such networks on analog VLSI systems with relative easiness. We review several proposals appeared so far in the literature and test their behavior when applied to solve a telecommunication application, where a special purpose adaptive hardware is of great interest
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Support Vector Machines are gaining more and more acceptance thanks to their success in many real-wo...
A learning algorithm for radial basis function support vector machines (RBF-SVM) that can be easily ...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
We propose here a VLSI friendly algorithm for the implementation of the learning phase of Support Ve...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
We show how to implement a simple procedure for support vector machine training as a recurrent neura...
This book aims to present a viable alternative to the Hopfield Neural Network (HNN) model for analog...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
Abstract. The usefulness of an articial analog neural network is closely bound to its trainability. ...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
In this paper we propose some very simple algorithms and architectures for a digital VLSI implementa...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...
Support Vector Machines are gaining more and more acceptance thanks to their success in many real-wo...
A learning algorithm for radial basis function support vector machines (RBF-SVM) that can be easily ...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
We propose here a VLSI friendly algorithm for the implementation of the learning phase of Support Ve...
Analog VLSI on-chip learning Neural Networks represent a mature technology for a large number of app...
We show how to implement a simple procedure for support vector machine training as a recurrent neura...
This book aims to present a viable alternative to the Hopfield Neural Network (HNN) model for analog...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
Abstract. The usefulness of an articial analog neural network is closely bound to its trainability. ...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
In this paper we propose some very simple algorithms and architectures for a digital VLSI implementa...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
In this chapter, we introduce an analog chip hosting a self-learning neural network with local learn...