Feed forward neural networks receive a growing attention as a data modelling tool in economic classification problems. It is well-known that controlling the design of a neural network can be cumbersome. Inaccuracies may lead to a manifold of problems in the application such as higher errors due to local optima, overfitting and ill-conditioning of the network, especially when the number of observations is small. In this paper we provide a method to overcome these difficulties by regulating the flexibility of the network and by rendering measures for validating the final network. In particular a method is proposed to equilibrate the number of hidden neurons and the value of the weight decay parameter based on 5 and 10-fold cross-validation. I...
The study of Artificial Neural Networks derives from first trials to translate in mathematical model...
Neural networks have been proven to be universal approximators. We use neural networks to investigat...
Abstract: Using a large sample of 46,467 residential properties spanning 1999-2005, we demonstrate u...
Feed forward neural networks receive a growing attention as a data modelling tool in economic classi...
Monotonicity is a constraint which arises in many application domains. We present a machine learning...
This paper examines the potential of a neural network (NN) approach to the analysis of ‘hedonic’ reg...
The article discusses the use of neural networks and attempt to reveal the peculiarities of the diff...
Abstract Neural network algorithms are applied to the problem of option pricing and adopted to sim...
The chapters of this dissertation explore the theoretical and empirical potential of neural networks...
Artificial Neural Network (ANN) is inspired and developed by modern neuroscience, which aims at ref...
This thesis examines the application of neural networks in the context of option pricing. Throughout...
A data-driven approach called CaNN (Calibration Neural Network) is proposed to calibrate financial a...
After production and operations, finance and investments are one of the mostfrequent areas of neural...
Introduction: The use of neural networks for non-linear models helps to understand where linear mode...
The purpose of this report is to examine the applications of deep learning-based approxi- mation tec...
The study of Artificial Neural Networks derives from first trials to translate in mathematical model...
Neural networks have been proven to be universal approximators. We use neural networks to investigat...
Abstract: Using a large sample of 46,467 residential properties spanning 1999-2005, we demonstrate u...
Feed forward neural networks receive a growing attention as a data modelling tool in economic classi...
Monotonicity is a constraint which arises in many application domains. We present a machine learning...
This paper examines the potential of a neural network (NN) approach to the analysis of ‘hedonic’ reg...
The article discusses the use of neural networks and attempt to reveal the peculiarities of the diff...
Abstract Neural network algorithms are applied to the problem of option pricing and adopted to sim...
The chapters of this dissertation explore the theoretical and empirical potential of neural networks...
Artificial Neural Network (ANN) is inspired and developed by modern neuroscience, which aims at ref...
This thesis examines the application of neural networks in the context of option pricing. Throughout...
A data-driven approach called CaNN (Calibration Neural Network) is proposed to calibrate financial a...
After production and operations, finance and investments are one of the mostfrequent areas of neural...
Introduction: The use of neural networks for non-linear models helps to understand where linear mode...
The purpose of this report is to examine the applications of deep learning-based approxi- mation tec...
The study of Artificial Neural Networks derives from first trials to translate in mathematical model...
Neural networks have been proven to be universal approximators. We use neural networks to investigat...
Abstract: Using a large sample of 46,467 residential properties spanning 1999-2005, we demonstrate u...