深度学习与神经网络

2025-9-25 301 9/25

深度学习与神经网络

作者:赵金晶 等

页数:232

出版社:电子工业出版社

出版日期:2024

ISBN:9787121473739

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内容简介

全书分为7 个章节。第1 章绪论,梳理了人工智能不同技术流派的特点、深度学习的发展及前沿技术;第2 章介绍相关预备知识,包括线性代数、概率论、优化理论以及机器学习的基础知识;第3 章从前馈神经网络的基础模型――感知器出发,介绍前馈神经网络的基本结构以及涉及的激活函数、梯度下降、反向传播等内容;第4 章,介绍深度模型的优化问题,讨论了神经网络优化中常见的病态问题;第5 章介绍深度学习中的正则化方法,包括范数惩罚、数据集增强与噪声注入、提前停止等;第6 章介绍了卷积神经网络,以及卷积神经网络在计算机视觉领域的具体应用;第7 章通过实际案例介绍循环神经网络与卷积神经网络的结合应用。

作者简介

赵金晶,女,1981年生,军事科学院系统工程研究院高级工程师,国防科技大学计算机学院博士毕业,主要研究方向为网络与信息安全、人工智能技术。先后承担国家自然科学基金、国家973计划、863计划等重大项目,曾获国家自然科学基金青年基金资助。获省部级科技进步奖二等奖5项、三等奖1项,发明专利20余项。发表学术论文80余篇,出版学术著作2部。电子邮箱:zhjj0420@126.com李虎,男,1987年生,军事科学院系统工程研究院工程师,国防科技大学计算机学院博士毕业,主要研究方向为网络与信息安全。先后承担、参与国家973计划、863计划、装备预研等各类科研项目10余项。获省部级科技进步奖二等奖2项、发明专利10余项,发表论文20余篇。电子邮箱:lihu@nudt.edu.cn张明,男,1990年生,军事科学院系统工程研究院工程师,北京系统工程研究所硕士毕业,主要研究方向为机器学习和人工智能安全。先后参与、主持国家自然科学基金、重点实验室基金、国家973重大项目、装备预研和国防科技创新特区等各类科研项目10余项。获省部级科技进步奖一等奖1项,二等奖2项。发表学术论文20余篇,其中SCI检索5篇,EI检索10余篇。电子邮箱:zm_stiss@163.com

目录

第1 章 绪论····················································································.1

1.1 人工智能·············································································.2

1.1.1 人工智能技术的发展历程···············································.3

1.1.2 人工智能技术的流派·····················································.9

1.2 深度学习与神经网络概述······················································.11

1.2.1 深度学习与神经网络技术的发展历程······························.11

1.2.2 深度学习与神经网络的前沿技术····································.16

1.3 深度学习系统架构·······························································.17

1.4 深度学习框架·····································································.19

1.5 深度学习的应用··································································.20

1.5.1 计算机视觉·······························································.20

1.5.2 语音语义··································································.21

1.5.3 自然语言处理····························································.22

1.6 人工智能潜在的安全风险······················································.22

1.6.1 数据层面的风险·························································.23

1.6.2 算法模型层面的风险···················································.23

1.6.3 智能计算框架层面的风险·············································.23

1.6.4 基础软硬件层面的风险················································.24

1.6.5 应用服务层面的风险···················································.24

本章小结··················································································.24

第2 章 预备知识············································································.25

2.1 相关数学基础·····································································.25

2.1.1 线性代数··································································.25

2.1.2 概率论·····································································.27

2.1.3 优化理论··································································.32

2.2 机器学习基础·····································································.34

2.2.1 机器学习算法的基本流程·············································.35

2.2.2 机器学习常用评价指标················································.36

2.2.3 典型机器学习算法······················································.41

2.3 实验环境基础·····································································.49

2.3.1 GPU 驱动的安装配置··················································.49

2.3.2 依赖环境的安装配置···················································.52

2.3.3 深度学习框架的安装配置·············································.54

2.3.4 集成开发环境的安装配置·············································.56

本章小结··················································································.57

第3 章 前馈神经网络······································································.58

3.1 感知器··············································································.58

3.1.1 单层感知器·······························································.58

3.1.2 多层感知器·······························································.61

3.1.3 前馈神经网络的基本结构·············································.62

3.2 激活函数···········································································.63

3.2.1 Sigmoid 函数·····························································.63

3.2.2 ReLU 函数································································.65

3.2.3 Tanh 函数·································································.67

3.2.4 Softmax 函数·····························································.68

3.3 误差反向传播·····································································.69

3.3.1 梯度下降法·······························································.69

3.3.2 链式法则··································································.70

3.3.3 反向传播··································································.72

本章小结··················································································.75

第4 章 深度模型的优化···································································.76

4.1 神经网络的优化问题····························································.76

4.1.1 局部最优和振荡陷阱···················································.76

4.1.2 梯度爆炸和梯度消失·····································
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