没有合适的资源?快使用搜索试试~ 我知道了~
首页Deep Learning, Vol. 1 From Basics to Practice 无水印原版pdf
Deep Learning, Vol. 1 From Basics to Practice 英文无水印原版pdf pdf所有页面使用FoxitReader、PDF-XChangeViewer、SumatraPDF和Firefox测试都可以打开 本资源转载自网络,如有侵权,请联系上传者或csdn删除 查看此书详细信息请在美国亚马逊官网搜索此书
资源详情
资源评论
资源推荐
Volume 1
DEEP LEARNING:
From Basics
to Practice
Andrew Glassner
Deep Learning:
From Basics to Practice
Volume 1
Copyright (c) 2018 by Andrew Glassner
www.glassner.com / @AndrewGlassner
All rights reserved. No part of this book, except as noted below, may be reproduced,
stored in a retrieval system, or transmitted in any form or by any means, without
the prior written permission of the author, except in the case of brief quotations
embedded in critical articles or reviews.
The above reservation of rights does not apply to the program les associated with
this book (available on GitHub), or to the images and gures (also available on
GitHub), which are released under the MIT license. Any images or gures that are
not original to the author retain their original copyrights and protections, as noted
in the book and on the web pages where the images are provided.
All software in this book, or in its associated repositories, is provided “as is,” with-
out warranty of any kind, express or implied, including but not limited to the
warranties of merchantability, tness for a particular pupose, and noninfringe-
ment. In no event shall the authors or copyright holders be liable for any claim,
damages or other liability, whether in an action of contract, tort, or otherwise, aris-
ing from, out of or in connection with the software or the use or other dealings in
the software.
First published February 20, 2018
Version 1.0.1 March 3, 2018
Version 1.1 March 22, 2018
Published by The Imaginary Institute, Seattle, WA.
http://www.imaginary-institute.com
Contact: andrew@imaginary-institute.com
For Niko,
who’s always there
with a smile
and a wag.
Contents of Both Volumes
Volume 1
Preface ....................................................................i
Chapter 1: An Introduction ................................... 1
1.1 Why This Chapter Is Here ...............................3
1.1.1 Extracting Meaning from Data ............................ 4
1.1.2 Expert Systems ..................................................... 6
1.2 Learning from Labeled Data ..........................9
1.2.1 A Learning Strategy .............................................. 10
1.2.2 A Computerized Learning Strategy ................... 12
1.2.3 Generalization ...................................................... 16
1.2.4 A Closer Look at Learning ................................... 18
1.3 Supervised Learning ........................................21
1.3.1 Classication ......................................................... 21
1.3.2 Regression ............................................................. 22
1.4 Unsupervised Learning ...................................25
1.4.1 Clustering .............................................................. 25
1.4.2 Noise Reduction ................................................... 26
1.4.3 Dimensionality Reduction .................................. 28
1.5 Generators ........................................................32
1.6 Reinforcement Learning .................................34
1.7 Deep Learning ..................................................37
1.8 What’s Coming Next ....................................... 43
References ..............................................................44
Image credits ................................................................. 45
Chapter 2: Randomness and Basic Statistics .....46
2.1 Why This Chapter Is Here ...............................48
2.2 Random Variables ...........................................49
2.2.1 Random Numbers in Practice............................. 57
2.3 Some Common Distributions ........................59
2.3.1 The Uniform Distribution ................................... 60
2.3.2 The Normal Distribution .................................... 61
2.3.3 The Bernoulli Distribution ................................. 67
2.3.4 The Multinoulli Distribution .............................. 69
2.3.5 Expected Value .................................................... 70
2.4 Dependence ....................................................70
2.4.1 i.i.d. Variables ........................................................ 71
2.5 Sampling and Replacement ...........................71
2.5.1 Selection With Replacement .............................. 73
2.5.2 Selection Without Replacement ....................... 74
2.5.3 Making Selections ............................................... 75
2.6 Bootstrapping .................................................76
2.7 High-Dimensional Spaces ..............................82
2.8 Covariance and Correlation ...........................85
2.8.1 Covariance ............................................................ 86
2.8.2 Correlation ........................................................... 88
2.9 Anscombe’s Quartet .......................................93
References ..............................................................95
剩余908页未读,继续阅读
yinkaisheng-nj
- 粉丝: 763
- 资源: 6953
上传资源 快速赚钱
- 我的内容管理 收起
- 我的资源 快来上传第一个资源
- 我的收益 登录查看自己的收益
- 我的积分 登录查看自己的积分
- 我的C币 登录后查看C币余额
- 我的收藏
- 我的下载
- 下载帮助
会员权益专享
最新资源
- RTL8188FU-Linux-v5.7.4.2-36687.20200602.tar(20765).gz
- c++校园超市商品信息管理系统课程设计说明书(含源代码) (2).pdf
- 建筑供配电系统相关课件.pptx
- 企业管理规章制度及管理模式.doc
- vb打开摄像头.doc
- 云计算-可信计算中认证协议改进方案.pdf
- [详细完整版]单片机编程4.ppt
- c语言常用算法.pdf
- c++经典程序代码大全.pdf
- 单片机数字时钟资料.doc
- 11项目管理前沿1.0.pptx
- 基于ssm的“魅力”繁峙宣传网站的设计与实现论文.doc
- 智慧交通综合解决方案.pptx
- 建筑防潮设计-PowerPointPresentati.pptx
- SPC统计过程控制程序.pptx
- SPC统计方法基础知识.pptx
资源上传下载、课程学习等过程中有任何疑问或建议,欢迎提出宝贵意见哦~我们会及时处理!
点击此处反馈
安全验证
文档复制为VIP权益,开通VIP直接复制
信息提交成功
评论0