Understanding Machine Learning

Understanding Machine Learning pdf epub mobi txt 電子書 下載2025

出版者:Cambridge University Press
作者:Shai Shalev-Shwartz
出品人:
頁數:424
译者:
出版時間:2014
價格:USD 48.51
裝幀:Hardcover
isbn號碼:9781107057135
叢書系列:
圖書標籤:
  • 機器學習
  • MachineLearning
  • 人工智能
  • 算法
  • 理論
  • 計算機科學
  • ML
  • 計算機
  • Machine Learning
  • Algorithms
  • Theory
  • Deep Learning
  • Classification
  • Regression
  • Data Science
  • Pattern Recognition
  • Supervised Learning
  • Unsupervised Learning
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具體描述

Machine learning is one of the fastest growing areas of computer science, with far-reaching applications. The aim of this textbook is to introduce machine learning, and the algorithmic paradigms it offers, in a principled way. The book provides an extensive theoretical account of the fundamental ideas underlying machine learning and the mathematical derivations that transform these principles into practical algorithms. Following a presentation of the basics of the field, the book covers a wide array of central topics that have not been addressed by previous textbooks. These include a discussion of the computational complexity of learning and the concepts of convexity and stability; important algorithmic paradigms including stochastic gradient descent, neural networks, and structured output learning; and emerging theoretical concepts such as the PAC-Bayes approach and compression-based bounds. Designed for an advanced undergraduate or beginning graduate course, the text makes the fundamentals and algorithms of machine learning accessible to students and non-expert readers in statistics, computer science, mathematics, and engineering.

著者簡介

圖書目錄

Introduction
Part I: Foundations
A gentle start
A formal learning model
Learning via uniform convergence
The bias-complexity trade-off
The VC-dimension
Non-uniform learnability
The runtime of learning
Part II: From Theory to Algorithms
Linear predictors
Boosting
Model selection and validation
Convex learning problems
Regularization and stability
Stochastic gradient descent
Support vector machines
Kernel methods
Multiclass, ranking, and complex prediction problems
Decision trees
Nearest neighbor
Neural networks
Part III: Additional Learning Models
Online learning
Clustering
Dimensionality reduction
Generative models
Feature selection and generation
Part IV: Advanced Theory
Rademacher complexities
Covering numbers
Proof of the fundamental theorem of learning theory
Multiclass learnability
Compression bounds
PAC-Bayes
Appendices
Technical lemmas
Measure concentration
Linear algebra
· · · · · · (收起)

讀後感

評分

市面上关于machine learning (ML)的书很多,但是个人认为用一本书将ML的方方面面全部讲清楚是不可能的。粗略的来讲,ML的书籍可以分为算法(algorithm)和理论(theorem)两大类。前一类中,个人认为最近十年比较经典的教材包括Bishop的Pattern Recognition and Machine Learning,...  

評分

市面上关于machine learning (ML)的书很多,但是个人认为用一本书将ML的方方面面全部讲清楚是不可能的。粗略的来讲,ML的书籍可以分为算法(algorithm)和理论(theorem)两大类。前一类中,个人认为最近十年比较经典的教材包括Bishop的Pattern Recognition and Machine Learning,...  

評分

市面上关于machine learning (ML)的书很多,但是个人认为用一本书将ML的方方面面全部讲清楚是不可能的。粗略的来讲,ML的书籍可以分为算法(algorithm)和理论(theorem)两大类。前一类中,个人认为最近十年比较经典的教材包括Bishop的Pattern Recognition and Machine Learning,...  

評分

市面上关于machine learning (ML)的书很多,但是个人认为用一本书将ML的方方面面全部讲清楚是不可能的。粗略的来讲,ML的书籍可以分为算法(algorithm)和理论(theorem)两大类。前一类中,个人认为最近十年比较经典的教材包括Bishop的Pattern Recognition and Machine Learning,...  

評分

这本书第一部分详细地介绍了 PAC学习理论(计算学习理论和统计学习理论)。与Foundations of Machine Learning 不同之处在于,其在第四章 抽出了 Uniform Convergence(依概率一致收敛) 这一特性,这使得对 Agnostic PAC learning 下的泛化界的导出更加清晰。Uniform Converge...

用戶評價

评分

非常好的機器學習理論的書,但是為什麼就是感覺看不懂呢?

评分

learning theory classic textbook

评分

(部分)讀懂以後纔發現這本書真是寫得太好瞭

评分

上個 Learning Theory 然後發現第一節課講的定理是 ch21的 .......

评分

上個 Learning Theory 然後發現第一節課講的定理是 ch21的 .......

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