电子工业出版社精品店店铺主页二维码
电子工业出版社精品店
微信扫描二维码,访问我们的微信店铺

机器学习实战营 从理论到实战的探索之旅 人工智能深度学习教程 数据处理 数据预处理 神经网络智能识别教材书 谢雪葵

39.00
运费: 免运费
机器学习实战营 从理论到实战的探索之旅 人工智能深度学习教程 数据处理 数据预处理 神经网络智能识别教材书 谢雪葵 商品图0
机器学习实战营 从理论到实战的探索之旅 人工智能深度学习教程 数据处理 数据预处理 神经网络智能识别教材书 谢雪葵 商品图1
机器学习实战营 从理论到实战的探索之旅 人工智能深度学习教程 数据处理 数据预处理 神经网络智能识别教材书 谢雪葵 商品缩略图0 机器学习实战营 从理论到实战的探索之旅 人工智能深度学习教程 数据处理 数据预处理 神经网络智能识别教材书 谢雪葵 商品缩略图1

商品详情

书名:机器学习实战营:从理论到实战的探索之旅
定价:68.0
ISBN:9787121478154
作者:无
版次:*1版
出版时间:2024-05

内容提要:
本书是一本机器学习实用指南,提供从基础知识到进阶技能的全面学习路径。本书以浅显 易懂的方式介绍了机器学习的基本概念和主要类型,并详细介绍使用 Python 及常见的库进行数 据处理和机器学习的实操。此外,介绍了数据预处理的详细过程,*后通过若干典型案例加深 读者对机器学习的理解。本书适合对机器学习感兴趣的初学者,也可作为软件开发人员、数据分析师、学术研究人员的参考书籍。



作者简介:
谢雪葵,毕业于北邮软件学院计算机科学系软件工程专业。在校期间,多次获得专业一、二等奖学金,并成功带领团队进行了校园APP的研发工作。阿诚网络的创始人,该公司专注于为企业提供大数据相关服务。主要业务包括为企业提供大数据技术支持和降低成本、提高效率的解决方案,同时也提供基于机器学习的预测模型和智能决策支持。在过去的多年里,积累了丰富的企业级大数据项目实战经验,并负责大型银行和互联网公司的大数据项目开发和性能优化工作,其中包括使用机器学习技术进行风险评估、用户行为分析和产品推荐等。

媒体评论:
本书是一本机器学习实用指南,提供从基础知识到进阶技能的全面学习路径。本书以浅显 易懂的方式介绍了机器学习的基本概念和主要类型,并详细介绍使用 Python 及常见的库进行数 据处理和机器学习的实操。此外,介绍了数据预处理的详细过程,*后通过若干典型案例加深 读者对机器学习的理解。

目录:

目录
机器学习入门············································································1
机器学习简介 ···········································································1
1.1.1 什么是机器学习································································1
1.1.2 机器学习的前景································································2
机器学习的主要类型 ··································································3
1.2.1 监督学习·········································································4
1.2.2 无监督学习······································································5
1.2.3 半监督学习······································································7
1.2.4 强化学习·········································································8
1.2.5 监督学习案例································································.10
选择正确的算法·····································································.12
机器学习工具和环境·································································14
Python 介绍···········································································.14
2.1.1 Python 的安装 ·······························································.14
2.1.2 Python 基础语法 ····························································.19
2.1.3 Python 其他特性 ····························································.24
2.1.4 Python 简单实战案例(猜字游戏) ····································.31
2.1.5 Python *级实战案例(网络爬虫) ····································.35
数据科学库···········································································.38
2.2.1 NumPy ········································································.38
2.2.2 Pandas ·········································································.45
2.2.3 数据科学库案例(电商网站) ··········································.54
机器学习库···········································································.55
2.3.1 Scikit-Learn···································································.55
2.3.2 TensorFlow ···································································.60
2.3.3 Keras···········································································.64
2.3.4 机器学习库案例(预测糖尿病) ·······································.67
数据预处理·············································································70
数据导入 ··············································································.70
数据清洗 ··············································································.71
特征工程 ··············································································.73
3.3.1 特征选择······································································.73
3.3.2 特征转换······································································.75
3.3.3 特征缩放······································································.77
数据分割 ··············································································.78
3.4.1 训练集·········································································.78
3.4.2 测试集·········································································.79
3.4.3 验证集·········································································.80
案例分析:银行客户shu据·························································.80
机器学习模型的构建与评估························································84
监督学习实战········································································.84
4.1.1 线性回归······································································.84
4.1.2 逻辑回归······································································.86
4.1.3 决策树·········································································.88
4.1.4 随机森林······································································.90
无监督学习实战·····································································.91
4.2.1 K-means ·······································································.92
4.2.2 主成分分析···································································.93
深度学习实战········································································.95
4.3.1 神经网络······································································.95
4.3.2 卷积神经网络································································.98
4.3.3 循环神经网络································································102
模型评估与选择 ·····································································105
案例分析:客户流失预测 ·························································107
第5章 5.1
机器学习项目实战···································································111
项目一:房价预测 ·································································.111
5.1.1 数据获取与理解·····························································112
5.1.2 数据预处理···································································116
5.1.3 特征工程······································································120
5.1.4 模型构建与训练·····························································123
5.1.5 模型评估与优化·····························································125
5.1.6 结果解释······································································128
项目二:图像识别 ··································································130
5.2.1 数据获取与理解·····························································131
5.2.2 数据预处理···································································134
5.2.3 特征工程······································································136
5.2.4 模型构建与训练·····························································138
5.2.5 模型评估与优化·····························································140
5.2.6 结果解释······································································143
项目三:自然语言处理 ····························································144
5.3.1 数据获取与理解·····························································144
5.3.2 数据预处理···································································147
5.3.3 特征工程······································································148
5.3.4 模型构建与训练·····························································149
5.3.5 模型评估与优化·····························································151
5.3.6 结果解释······································································157
项目四:新闻主题分类 ····························································157
5.4.1 数据获取与理解·····························································158
5.4.2 数据预处理···································································161
5.4.3 特征工程······································································164
5.4.4 模型构建与训练·····························································166
5.4.5 模型评估与优化·····························································168
5.4.6 结果解释······································································171
项目五:信用卡欺诈检测 ·························································172
5.5.1 数据获取与理解·····························································173
5.5.2 数据预处理···································································176
第5章 5.1
机器学习项目实战···································································111
项目一:房价预测 ·································································.111
5.1.1 数据获取与理解·····························································112
5.1.2 数据预处理···································································116
5.1.3 特征工程······································································120
5.1.4 模型构建与训练·····························································123
5.1.5 模型评估与优化·····························································125
5.1.6 结果解释······································································128
项目二:图像识别 ··································································130
5.2.1 数据获取与理解·····························································131
5.2.2 数据预处理···································································134
5.2.3 特征工程······································································136
5.2.4 模型构建与训练·····························································138
5.2.5 模型评估与优化·····························································140
5.2.6 结果解释······································································143
项目三:自然语言处理 ····························································144
5.3.1 数据获取与理解·····························································144
5.3.2 数据预处理···································································147
5.3.3 特征工程······································································148
5.3.4 模型构建与训练·····························································149
5.3.5 模型评估与优化·····························································151
5.3.6 结果解释······································································157
项目四:新闻主题分类 ····························································157
5.4.1 数据获取与理解·····························································158
5.4.2 数据预处理···································································161
5.4.3 特征工程······································································164
5.4.4 模型构建与训练·····························································166
5.4.5 模型评估与优化·····························································168
5.4.6 结果解释······································································171
项目五:信用卡欺诈检测 ·························································172
5.5.1 数据获取与理解·····························································173
5.5.2 数据预处理···································································176


电子工业出版社精品店店铺主页二维码
电子工业出版社精品店
扫描二维码,访问我们的微信店铺

机器学习实战营 从理论到实战的探索之旅 人工智能深度学习教程 数据处理 数据预处理 神经网络智能识别教材书 谢雪葵

手机启动微信
扫一扫购买

收藏到微信 or 发给朋友

1. 打开微信,扫一扫左侧二维码

2. 点击右上角图标

点击右上角分享图标

3. 发送给朋友、分享到朋友圈、收藏

发送给朋友、分享到朋友圈、收藏

微信支付

支付宝

扫一扫购买

收藏到微信 or 发给朋友

1. 打开微信,扫一扫左侧二维码

2. 点击右上角图标

点击右上角分享图标

3. 发送给朋友、分享到朋友圈、收藏

发送给朋友、分享到朋友圈、收藏