In recent years, neural networks have become an increasingly powerful tool in scientific computing. The universal approximation theorem asserts that a neural network may be constructed to approximate any given continuous function at desired accuracy. The backpropagation algorithm further allows efficient optimization of the parameters in training a neural network. Powered by GPU's, effective computations for scientific and engineering problems are thereby enabled. In addition, we show that finite element shape functions may also be approximated by neural networks
This is Chapter 2 of Part 1 of the book titled "Deep Learning": a nine-part easy-to-grasp textbook w...
Artificial neural networks may probably be the single most successful technology in the last two dec...
Recently there has been much interest in understanding why deep neural networks are preferred to sha...
Neural networks are an attempt to build computer networks called artificial neurons, which imitate t...
Neural networks are an attempt to build computer networks called artificial neurons, which imitate t...
Various researchers have used one hidden layer neural networks (weighted sums of sigmoids) to find t...
Various researchers have used one hidden layer neural networks (weighted sums of sigmoids) to find t...
Inspired by biological neural networks, Artificial neural networks are massively parallel computing ...
The remarkable success of machine learning methods for tacking problems in computer vision and natur...
This is a small code that helps test the function approximation by dense neural networks. The co...
This paper is a mathematical introduction to Artificial Neural Network (ANN). We will show how it is...
AbstractIn this work, some ubiquitous neural networks are applied to model the landscape of a known ...
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
Conventionally programmed digital computers can process numbers with great speed and precision, but ...
There is presently great interest in the abilities of neural networks to mimic "qualitative rea...
This is Chapter 2 of Part 1 of the book titled "Deep Learning": a nine-part easy-to-grasp textbook w...
Artificial neural networks may probably be the single most successful technology in the last two dec...
Recently there has been much interest in understanding why deep neural networks are preferred to sha...
Neural networks are an attempt to build computer networks called artificial neurons, which imitate t...
Neural networks are an attempt to build computer networks called artificial neurons, which imitate t...
Various researchers have used one hidden layer neural networks (weighted sums of sigmoids) to find t...
Various researchers have used one hidden layer neural networks (weighted sums of sigmoids) to find t...
Inspired by biological neural networks, Artificial neural networks are massively parallel computing ...
The remarkable success of machine learning methods for tacking problems in computer vision and natur...
This is a small code that helps test the function approximation by dense neural networks. The co...
This paper is a mathematical introduction to Artificial Neural Network (ANN). We will show how it is...
AbstractIn this work, some ubiquitous neural networks are applied to model the landscape of a known ...
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
Conventionally programmed digital computers can process numbers with great speed and precision, but ...
There is presently great interest in the abilities of neural networks to mimic "qualitative rea...
This is Chapter 2 of Part 1 of the book titled "Deep Learning": a nine-part easy-to-grasp textbook w...
Artificial neural networks may probably be the single most successful technology in the last two dec...
Recently there has been much interest in understanding why deep neural networks are preferred to sha...