| 暂存书架(0) | 登录

MARC状态:审校 文献类型:西文图书 浏览次数:63

题名/责任者:
Mathematics and programming for machine learning with R : from the ground up / William B. Claster.
版本说明:
First edition.
出版发行项:
Boca Raton, FL : CRC Press, Taylor & Francis Group, 2020.
ISBN:
9780367561949 :
ISBN:
0367561948
ISBN:
9780367507855
ISBN:
0367507854
载体形态项:
xxi, 408 pages : illustrations ; 26 cm
个人责任者:
Claster, William B., author.
论题主题:
Machine learning.
论题主题:
R (Computer program language)
论题主题:
Programming (Mathematics)
中图法分类号:
TP181
书目附注:
Includes bibliographical references and index.
内容附注:
Chapter 1. Functions Tutorial. -- Chapter 2. Logic and R. -- Chapter 3. Sets with R: Building the Tools. -- Chapter 4. Probability. -- Chapter 5. Naiì?ve Rule. -- Chapter 6. Complete Bayes. -- Chapter 7. Naiì?ve Bayes Classifier. -- Chapter 8. Stored Model for Naive Bayes Classifier. -- Chapter 9. Review of Mathematics for Neural Networks. -- Chapter 10. Calculus. -- Chapter 11. Neural Networks -- Feed Forward Process and Back Propagation Process. -- Chapter 12. Programming a Neural Network using OOP in R. -- Chapter 13. Adding in a Bias Term. -- Chapter 14. Modular Version of Neural Networks for Deep Learning. -- Chapter 15. Deep Learning with Convolutional Neural Networks. -- Chapter 16. R Packages for Neural Networks, Deep Learning, and Naiì?ve Bayes.
摘要附注:
Based on the author's experience in teaching data science for more than 10 years, Mathematics and Programming for Machine Learning with R: From the Ground Up reveals how machine learning algorithms do their magic and explains how these algorithms can be implemented in code. It is designed to provide readers with an understanding of the reasoning behind machine learning algorithms as well as how to program them. Written for novice programmers, the book progresses step-by-step, providing the coding skills needed to implement machine learning algorithms in R. The book begins with simple implementations and fundamental concepts of logic, sets, and probability before moving to the coverage of powerful deep learning algorithms. The first eight chapters deal with probability-based machine learning algorithms, and the last eight chapters deal with machine learning based on artificial neural networks. The first half of the book does not require mathematical sophistication, although familiarity with probability and statistics would be helpful. The second half assumes the reader is familiar with at least one semester of calculus. The text guides novice R programmers through algorithms and their application and along the way; the reader gains programming confidence in tackling advanced R programming challenges. Highlights of the book include: More than 400 exercises A strong emphasis on improving programming skills and guiding beginners to the implementation of full-fledged algorithms Coverage of fundamental computer and mathematical concepts including logic, sets, and probability In-depth explanations of machine learning algorithms. --
全部MARC细节信息>>
索书号 条码号 年卷期 馆藏地 书刊状态 还书位置
TP181/BC1 40044655   外文书库(外文原版)(11F)     非可借 外文书库(外文原版)(11F)
显示全部馆藏信息
CADAL相关电子图书
借阅趋势

同名作者的其他著作(点击查看)
用户名:
密码:
验证码:
请输入下面显示的内容
  证件号 条码号 Email
 
姓名:
手机号:
送 书 地:
收藏到: 管理书架