Learning algorithms have been used both on feed-forward deterministic networks and on feed-back statistical networks to capture input-output relations and do pattern classification. These learning algorithms are examined for a class of problems characterized by noisy or statistical data, in which the networks learn the relation between input data and probability distributions of answers. In simple but nontrivial networks the two learning rules are closely related. Under some circumstances the learning problem for the statistical networks can be solved without Monte Carlo procedures. The usual arbitrary learning goals of feed-forward networks can be given useful probabilistic meaning
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
Information retrieval in a neural network is viewed as a procedure in which the network computes a &...
Multilayer perceptrons (MLPs) or artificial neural nets are popular models used for non-linear regre...
Learning algorithms have been used both on feed-forward deterministic networks and on feed-back stat...
Introduction The work reported here began with the desire to find a network architecture that shared...
In this study, we focus on feed-forward neural networks with a single hidden layer. The research tou...
We show how a feed-forward neural network can be sucessfully trained by using a simulated annealing ...
Leaming in neural networks has attracted considerable interest in recent years. Our focus is on lea...
In terms of the Bias/Variance decomposition, very flexible (i.e., complex) Supervised Machine Learni...
We study the probabilistic generative models parameterized by feedforward neural networks. An attrac...
Artificial neural networks are brain-like models of parallel computations and cognitive phenomena. W...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
We present an overview of current research on artificial neural networks, emphasizing a statistica...
The goal of data mining is to solve various problems dealing with knowledge extraction from huge amo...
This paper presents an architecture and learning algorithm for a feedforward neural network implemen...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
Information retrieval in a neural network is viewed as a procedure in which the network computes a &...
Multilayer perceptrons (MLPs) or artificial neural nets are popular models used for non-linear regre...
Learning algorithms have been used both on feed-forward deterministic networks and on feed-back stat...
Introduction The work reported here began with the desire to find a network architecture that shared...
In this study, we focus on feed-forward neural networks with a single hidden layer. The research tou...
We show how a feed-forward neural network can be sucessfully trained by using a simulated annealing ...
Leaming in neural networks has attracted considerable interest in recent years. Our focus is on lea...
In terms of the Bias/Variance decomposition, very flexible (i.e., complex) Supervised Machine Learni...
We study the probabilistic generative models parameterized by feedforward neural networks. An attrac...
Artificial neural networks are brain-like models of parallel computations and cognitive phenomena. W...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
We present an overview of current research on artificial neural networks, emphasizing a statistica...
The goal of data mining is to solve various problems dealing with knowledge extraction from huge amo...
This paper presents an architecture and learning algorithm for a feedforward neural network implemen...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
Information retrieval in a neural network is viewed as a procedure in which the network computes a &...
Multilayer perceptrons (MLPs) or artificial neural nets are popular models used for non-linear regre...