登入帳戶  | 訂單查詢  | 購物車/收銀台(0) | 在線留言板  | 付款方式  | 運費計算  | 聯絡我們  | 幫助中心 |  加入書簽
會員登入   新用戶登記
HOME新書上架暢銷書架好書推介特價區會員書架精選月讀2024年度TOP分類瀏覽雜誌 臺灣用戶
品種:超過100萬種各類書籍/音像和精品,正品正價,放心網購,悭钱省心 服務:香港台灣澳門海外 送貨:速遞郵局服務站

新書上架簡體書 繁體書
暢銷書架簡體書 繁體書
好書推介簡體書 繁體書

五月出版:大陸書 台灣書
四月出版:大陸書 台灣書
三月出版:大陸書 台灣書
二月出版:大陸書 台灣書
一月出版:大陸書 台灣書
12月出版:大陸書 台灣書
11月出版:大陸書 台灣書
十月出版:大陸書 台灣書
九月出版:大陸書 台灣書
八月出版:大陸書 台灣書
七月出版:大陸書 台灣書
六月出版:大陸書 台灣書
五月出版:大陸書 台灣書
四月出版:大陸書 台灣書
三月出版:大陸書 台灣書

『簡體書』机器学习理论与应用

書城自編碼: 4111438
分類:簡體書→大陸圖書→教材研究生/本科/专科教材
作者: 王开军
國際書號(ISBN): 9787121500190
出版社: 电子工业出版社
出版日期: 2025-04-01

頁數/字數: /
釘裝: 平塑

售價:HK$ 53.9

我要買

share:

** 我創建的書架 **
未登入.



新書推薦:
跟着大厨学炒青菜:素菜不素,一口惊艳!叶菜翠绿、瓜果爽脆、根茎香糯,素菜也能吃出“荤菜感”。
《 跟着大厨学炒青菜:素菜不素,一口惊艳!叶菜翠绿、瓜果爽脆、根茎香糯,素菜也能吃出“荤菜感”。 》

售價:HK$ 43.8
并购手册:整合组织,执行战略和推动新增长的实用指南 乔治·布拉特,杰弗里·普里切特
《 并购手册:整合组织,执行战略和推动新增长的实用指南 乔治·布拉特,杰弗里·普里切特 》

售價:HK$ 141.9
大学问·伦理与生活:清代的婚姻与社会
《 大学问·伦理与生活:清代的婚姻与社会 》

售價:HK$ 107.8
制度与轮回:从商周至明清的历史运行
《 制度与轮回:从商周至明清的历史运行 》

售價:HK$ 64.9
做中国哲学:一些方法论的思考〔增订本〕
《 做中国哲学:一些方法论的思考〔增订本〕 》

售價:HK$ 85.8
奥斯曼帝国衰亡史:1683—1923
《 奥斯曼帝国衰亡史:1683—1923 》

售價:HK$ 151.8
构建和平:缔造欧洲解决方案,1945—1963
《 构建和平:缔造欧洲解决方案,1945—1963 》

售價:HK$ 151.8
妙探寻凶
《 妙探寻凶 》

售價:HK$ 63.8

內容簡介:
本书是机器学习的入门书,深入浅出地讲解机器学习的基础理论与应用,不仅注重给理论添加浅显易懂的解释和详述,而且探讨何种创新思维或科学思维可以产生或引导出某个理论,让学习者在学习理论过程中自然地培养创新思维与科学思维。本书知识点包括回归分析、k-近邻算法、决策树、贝叶斯分类器、支持向量机、模型性能评估、集成学习、降维方法、聚类、EM 算法与高斯混合模型、神经网络与深度学习等。本书每章都设计手工计算的应用例题,以演示理论解题和计算过程,帮助学习者理解和掌握理论。每章配有编程实践的实例,不仅示范解题的Python 代码,还示范解题思路、步骤和结果分析,培养学习者解决实际问题的能力。每章自然地融入科技强国、弘扬中华智慧与文化等内容。此外,每章的习题可巩固知识,对应的在线课程(中国大学MOOC,课程名:机器学习)可引领学习。 本书的配套教学资源有教学大纲、教学课件、源代码和案例素材等,读者可登录华信教育资源网免费下载;编程实例所用数据集在书中标注了下载途径。 本书可作为人工智能、计算机相关专业的教材,或供机器学习理论与应用的学习者使用参考。
關於作者:
王开军,副教授,硕士生导师,现为福建师范大学计算机与网络空间安全学院教师,计算智能教研室主任,福建省人工智能学会理事。2008年在西安电子科技大学计算机应用专业获得博士学位。2020年在英国阿尔斯特大学计算机系作访问学者。
目錄
第1章 绪论···································································································1
1.1 机器学习简介·······················································································2
1.2 机器学习方法的分类··············································································5
1.3 机器学习框架·······················································································7
1.4 Python 的机器学习开发环境····································································9
1.5 习题································································································.10
第2章 回归分析··························································································.11
2.1 一元线性回归····················································································.11
2.2 多元线性回归····················································································.14
2.3 多项式回归·······················································································.16
2.4 回归分析的效果评价···········································································.17
2.5 逻辑回归··························································································.19
2.6 实例与编程求解·················································································.22
2.7 习题································································································.26
第3章 k-近邻算法························································································.28
3.1 k-近邻分类算法·················································································.28
3.2 k 值的选取························································································.30
3.3 距离度量··························································································.31
3.4 k-近邻回归算法·················································································.31
3.5 k-近邻算法的性能和特点·····································································.33
3.6 实例与编程求解·················································································.34
3.7 习题································································································.36
第4章 决策树·····························································································.38
4.1 决策树的原理····················································································.38
4.2 决策树的构造算法··············································································.39
4.3 信息熵·····························································································.43
4.4 ID3 算法··························································································.43
4.5 C4.5 算法·························································································.44
4.6 CART 算法·······················································································.45
4.7 决策树的剪枝····················································································.47
4.8 决策树的特点····················································································.48
4.9 实例与编程求解·················································································.48
4.10 习题······························································································.52
第5章 贝叶斯分类器····················································································.54
5.1 概率相关知识····················································································.54
5.2 贝叶斯分类原理·················································································.55
5.3 朴素贝叶斯分类器··············································································.56
5.4 实例与编程求解·················································································.59
5.5 习题································································································.62
第6章 支持向量机·······················································································.63
6.1 二分类问题·······················································································.63
6.2 支持向量机分类原理··

 

 

書城介紹  | 合作申請 | 索要書目  | 新手入門 | 聯絡方式  | 幫助中心 | 找書說明  | 送貨方式 | 付款方式 香港用户  | 台灣用户 | 海外用户
megBook.com.hk
Copyright © 2013 - 2025 (香港)大書城有限公司  All Rights Reserved.