This book provides a comprehensive foundation of machine learning. To answer the questions of what to learn, how to learn, learn to get what, and how to evaluate, as well as what does it mean by learning, the book focuses on the fundamental basics of machine learning, its methodology, theory, algorithms, and evaluations, together with some philosophical thinking on comparison between machine learning and human learning for machinery intelligence.
The book is organized below: introduction (Chapter 1), evaluation (Chapter 2), supervised learning (Chapter 3, 4, and 5), unsupervised learning (Chapter 6), representation learning (Chapter 7), problem decomposition (Chapter 8), ensemble learning (Chapter 9), deep learning (Chapter 10), application (Chapter 11), and challenges (Chapter 12).
The book can be used as a textbook for college, undergraduate, graduate and PhD students majored in computer science, automation, electronic engineering, communication and so on. It can also be used as a reference for readers who are interested in machine learning and hope to make contributions to the field.
机器学习的综合基础(Machine Learning――A Comprehensive Foundation) 电子版图书下载地址:

本书有电子版,如无法下载,请加我们Q群:473290040 联系索取。
温馨提示:
本站所收录作品、社区话题、书库评论及本站所做之广告均属其个人行为,与本站立场无关
本站所有的作品,图书,资料均为网友更新,如果侵犯了您的权利,请与本站联系,本站将立刻删除(E-MAIL:847151540@qq.com)
Copyright © 2005-2016 www.newbook8.com All Rights Reserved.备案号