The universe approximate theorem states that a shallow neural network (one hidden layer) can represent any non-linear function. In this paper, we aim at examining how good a shallow neural network is for solving non-linear decision making problems. We proposed a performance driven incremental approach to searching the best shallow neural network for decision making, given a data set. The experimental results on the two benchmark data sets, Breast Cancer in Wisconsin and SMS Spams, demonstrate the correction of universe approximate theorem, and show that the number of hidden neurons, taking about the half of input number, is good enough to represent the function from data. It is shown that the performance driven BP learning is faster than th...
Neural networks are a very successful machine learning technique. At present, deep (multi-layer) neu...
We propose an optimal architecture for deep neural networks of given size. The optimal architecture ...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Training deep neural networks with the error backpropagation algorithm is considered implausible fro...
The realization of complex classification tasks requires training of deep learning (DL) architecture...
The paper reviews and extends an emerging body of theoretical results on deep learning including the...
Thesis (Ph.D.)--University of Washington, 2019The advent of deep neural networks has revolutionized ...
[Abstract] Artificial Neural Networks (ANN) and Machine Learning (ML) currently also known as Deep ...
Deep learning (DL) is playing an increasingly important role in our lives. It has already made a hug...
The basic structure and definitions of artificial neural networks are exposed, as an introduction to...
Single-index models are a class of functions given by an unknown univariate ``link'' function applie...
Recently, researchers in the artificial neural network field have focused their attention on connect...
Recently, the Deep Learning (DL) research community has focused on developing efficient and highly p...
This book covers both classical and modern models in deep learning. The primary focus is on the theo...
Nowadays, the most revolutionary area in computer science is deep learning algorithms and models. Th...
Neural networks are a very successful machine learning technique. At present, deep (multi-layer) neu...
We propose an optimal architecture for deep neural networks of given size. The optimal architecture ...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Training deep neural networks with the error backpropagation algorithm is considered implausible fro...
The realization of complex classification tasks requires training of deep learning (DL) architecture...
The paper reviews and extends an emerging body of theoretical results on deep learning including the...
Thesis (Ph.D.)--University of Washington, 2019The advent of deep neural networks has revolutionized ...
[Abstract] Artificial Neural Networks (ANN) and Machine Learning (ML) currently also known as Deep ...
Deep learning (DL) is playing an increasingly important role in our lives. It has already made a hug...
The basic structure and definitions of artificial neural networks are exposed, as an introduction to...
Single-index models are a class of functions given by an unknown univariate ``link'' function applie...
Recently, researchers in the artificial neural network field have focused their attention on connect...
Recently, the Deep Learning (DL) research community has focused on developing efficient and highly p...
This book covers both classical and modern models in deep learning. The primary focus is on the theo...
Nowadays, the most revolutionary area in computer science is deep learning algorithms and models. Th...
Neural networks are a very successful machine learning technique. At present, deep (multi-layer) neu...
We propose an optimal architecture for deep neural networks of given size. The optimal architecture ...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...