Data Processing Using Artificial Neural Networks

W. Alaloul, A. H. Qureshi
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引用次数: 18

Abstract

The artificial neural network (ANN) is a machine learning (ML) methodology that evolved and developed from the scheme of imitating the human brain. Artificial intelligence (AI) pyramid illustrates the evolution of ML approach to ANN and leading to deep learning (DL). Nowadays, researchers are very much attracted to DL processes due to its ability to overcome the selectivity-invariance problem. In this chapter, ANN has been explained by discussing the network topology and development parameters (number of nodes, number of hidden layers, learning rules and activated function). The basic concept of node and neutron has been explained, with the help of diagrams, leading to the ANN model and its operation. All the topics have been discussed in such a scheme to give the reader the basic concept and clarity in a sequential way from ANN perceptron model to deep learning models and underlying types.
使用人工神经网络进行数据处理
人工神经网络(ANN)是一种机器学习(ML)方法,它是从模仿人类大脑的方案演变而来的。人工智能(AI)金字塔说明了机器学习方法到人工神经网络的演变,并导致深度学习(DL)。目前,深度学习过程因其克服选择性不变性问题的能力而备受研究人员的青睐。在本章中,通过讨论网络拓扑和开发参数(节点数、隐藏层数、学习规则和激活函数)来解释人工神经网络。通过图表解释了节点和中子的基本概念,从而引出了人工神经网络模型及其操作。所有主题都在这样一个方案中进行了讨论,以从人工神经网络感知器模型到深度学习模型和底层类型的顺序方式为读者提供了基本概念和清晰度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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