• 工业人工智能概论
图书条目标准图
21年品牌 40万+商家 超1.5亿件商品

工业人工智能概论

35.28 6.3折 56 全新

库存2件

山东泰安
认证卖家担保交易快速发货售后保障

作者韩英华

出版社电子工业出版社

出版时间2020-01

版次1

装帧其他

货号607 6-29

上书时间2024-06-28

邹鲁文化书店

十年老店
已实名 已认证 进店 收藏店铺

   商品详情   

品相描述:全新
图书标准信息
  • 作者 韩英华
  • 出版社 电子工业出版社
  • 出版时间 2020-01
  • 版次 1
  • ISBN 9787121381621
  • 定价 56.00元
  • 装帧 其他
  • 开本 16开
  • 纸张 胶版纸
  • 页数 164页
  • 字数 197千字
【内容简介】
本书以人工智能技术在工业中的应用为出发点,系统、深入地阐述了工业人工智能的关键技术,并给出了大量的应用案例。全书共 5 章,包括绪论、数据分析与数据挖掘工具、机器学习、深度学习和工业人工智能面临的挑战。本书可作为相关专业的本科生及研究生学习工业人工智能的入门教材,也可作为专业技术人员了解工业人工智能的培训教材和参考书,还可作为对工业人工智能感兴趣的各界人士的普及性读物。
【作者简介】
2008.03-2010.12:东北大学秦皇岛分校讲师;2011.01-2016.12:东北大学秦皇岛分校副教授;2017.01-至今:东北大学秦皇岛分校教授;2012年荣获秦皇岛市十大青年风尚人物称号;2013年度河北省"三三三人才工程”第三层次人选;2014年荣获秦皇岛市优秀科技工作者称号
【目录】
第 1 章 绪论·····················································································1 

1.1 人工智能的内涵及发展····································································1 

1.2 工业人工智能的内涵及发展······························································4 

1.2.1 工业人工智能的发展背景 ·····························································4 

1.2.2 工业人工智能的发展历程 ·····························································6 

1.2.3 工业人工智能与传统人工智能的区别················································7 

1.3 工业人工智能的算法功能和典型应用··················································8 

1.4 工业人工智能的知识体系································································11 

1.5 工业人工智能的关键技术································································12 

第 2 章 数据分析与数据挖掘工具··························································14 

2.1 工业大数据的特点··········································································15 

2.2 工业大数据挖掘的定义及过程···························································17 

2.3 工业数据的特征分析·······································································18 

2.3.1 工业数据的统计描述 ···································································18 

2.3.2 工业数据的相关性分析 ································································20 

2.4 工业数据的预处理··········································································23 

2.4.1 异常值处理 ···············································································23 

工业数据异常值的处理案例 ·····························································25 

2.4.2 缺失值处理 ···············································································26 

工业数据缺失值的处理案例 ·····························································27 

2.4.3 数据归一化处理 ·········································································28 

2.4.4 不等时距数据处理 ······································································28 

工业数据不等时距处理案例·····························································.29 

2.4.5 离群点检测···············································································.32 

2.4.6 不平衡数据集检测······································································.34 

2.4.7 数据降维处理············································································.36 

2.5 假设检验····················································································.41 

2.5.1 假设检验的基本原理···································································.41 

2.5.2 假设检验的一般步骤···································································.42 

2.5.3 假设检验的种类·········································································.42 

2.6 多变量分析模型 ··········································································.44 

2.6.1 线性模型··················································································.44 

2.6.2 广义线性模型············································································.45 

2.6.3 线性混合效应模型······································································.47 

2.7 最大似然估计··············································································.48 

2.8 关联分析····················································································.49 

2.8.1 关联规则挖掘···········································································.·51 

2.8.2 关联规则算法···········································································.·52 

2.8.3 时序关联规则算法······································································.54 

2.8.4 一维时序关联规则······································································.56 

2.8.5 多维时序关联规则······················································.··············.59 

2.9 数据分析系统的体系架构 ··············································.··············.64 

第 3 章 机器学习 ····························································.···············.65 

3.1 人类的思考过程与机器学习的过程 ···················································.65 

3.2 机器学习的知识体系 ···················································.················.67 

3.3 Python 语言的优势·········································································.68 

3.4 工业人工智能的有监督学习算法 ·······················································.68 

3.4.1 决策树算法···············
点击展开 点击收起

   相关推荐   

—  没有更多了  —

以下为对购买帮助不大的评价

此功能需要访问孔网APP才能使用
暂时不用
打开孔网APP