We consider the problem of learning the dependence of one random variable on another, from a finite string of independently identically distributed (i.i.d.) copies of the pair. The problem is first converted to that of learning a function of the latter random variable and an independent random variable uniformly distributed on the unit interval. However, this cannot be achieved using the usual function learning techniques because the samples of the uniformly distributed random variables are not available. We propose a novel loss function, the minimizer of which results in an approximation to the needed function. Through successive approximation results (suggested by the proposed loss function), a suitable class of functions represented by c...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
We consider the problem of learning the dependence of one random variable on another, from a finite ...
We consider the problem of learning the dependence of one random variable on another, from a finite ...
We consider the problem of learning the dependence of one random variable on another, from a finite ...
Abstract—We consider the problem of learning the dependence of one random variable on another, from ...
We discuss two classes of convergent algorithms for learning continuous functions (and also regressi...
The problem of supervised learning can be phrased in terms of finding a good approximation to some u...
Many connectionist learning algorithms consists of minimizing a cost of the form C(w) = E(J(z; w)) ...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
This paper proposes a new family of algorithms for training neural networks (NNs). These...
AbstractWe consider the problem of Learning Neural Networks from samples. The sample size which is s...
The problem of adjusting the weights (learning) in multilayer feedforward neural networks (NN) is kn...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
We consider the problem of learning the dependence of one random variable on another, from a finite ...
We consider the problem of learning the dependence of one random variable on another, from a finite ...
We consider the problem of learning the dependence of one random variable on another, from a finite ...
Abstract—We consider the problem of learning the dependence of one random variable on another, from ...
We discuss two classes of convergent algorithms for learning continuous functions (and also regressi...
The problem of supervised learning can be phrased in terms of finding a good approximation to some u...
Many connectionist learning algorithms consists of minimizing a cost of the form C(w) = E(J(z; w)) ...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
This paper proposes a new family of algorithms for training neural networks (NNs). These...
AbstractWe consider the problem of Learning Neural Networks from samples. The sample size which is s...
The problem of adjusting the weights (learning) in multilayer feedforward neural networks (NN) is kn...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...
Artificial Neural Networks (ANNs) must be able to learn by experience from environment. This propert...