您好,欢迎光临本网站![请登录][注册会员]  
文件名称: Information Theory, Inference, and Learning Algorithms
  所属分类: C
  开发工具:
  文件大小: 12mb
  下载次数: 0
  上传时间: 2010-03-15
  提 供 者: gladi******
 详细说明: David J. C. MacKay's book. The textbook used for the information theory course in Cambridge University. Also an excellent book for machine learning. The special feature of this book is it reveals the relationship between information theory and machine learning. According to the author "information and learning are the two sides of the same coin". This book is strongly recommended for those studying machine learning and/or information theory. It really brainstorms you. Contents Preface 1 Introduction to Information Theory 2 Probability, Entropy, and Inference 3 More about Inference I Data Compression 4 The Source Coding Theorem 5 Symbol Codes 6 Stream Codes 7 Codes for Integers II Noisy-Channel Coding 8 Dependent Random Variables 9 Communication over a Noisy Channel 10 The Noisy-Channel Coding Theorem 11 Error-Correcting Codes and Real Channels III Further Topics in Information Theory 12 Hash Codes: Codes for Ecient Information Retrieval 13 Binary Codes 14 Very Good Linear Codes Exist 15 Further Exercises on Information Theory 16 Message Passing 17 Communication over Constrained Noiseless Channels 18 Crosswords and Codebreaking 19 Why have Sex? Information Acquisition and Evolution IV Probabilities and Inference 20 An Example Inference Task: Clustering 21 Exact Inference by Complete Enumeration 22 Maximum Likelihood and Clustering 23 Useful Probability Distributions 24 Exact Marginalization 25 Exact Marginalization in Trellises 26 Exact Marginalization in Graphs 27 Laplace's Method 28 Model Comparison and Occam's Razor 29 Monte Carlo Methods 30 Ecient Monte Carlo Methods 31 Ising Models 32 Exact Monte Carlo Sampling 33 Variational Methods 34 Independent Component Analysis and Latent Variable Modelling 35 Random Inference Topics 36 Decision Theory 37 Bayesian Inference and Sampling Theory V Neural networks 38 Introduction to Neural Networks 39 The Single Neuron as a Classi er 40 Capacity of a Single Neuron 41 Learning as Inference 42 Hop eld Networks 43 Boltzmann Machines 44 Supervised Learning in Multilayer Networks 45 Gaussian Processes 46 Deconvolution VI Sparse Graph Codes 47 Low-Density Parity-Check Codes 48 Convolutional Codes and Turbo Codes 49 Repeat{Accumulate Codes 50 Digital Fountain Codes VII Appendices A Notation B Some Physics C Some Mathematics Bibliography Index ...展开收缩
(系统自动生成,下载前可以参看下载内容)

下载文件列表

相关说明

  • 本站资源为会员上传分享交流与学习,如有侵犯您的权益,请联系我们删除.
  • 本站是交换下载平台,提供交流渠道,下载内容来自于网络,除下载问题外,其它问题请自行百度
  • 本站已设置防盗链,请勿用迅雷、QQ旋风等多线程下载软件下载资源,下载后用WinRAR最新版进行解压.
  • 如果您发现内容无法下载,请稍后再次尝试;或者到消费记录里找到下载记录反馈给我们.
  • 下载后发现下载的内容跟说明不相乎,请到消费记录里找到下载记录反馈给我们,经确认后退回积分.
  • 如下载前有疑问,可以通过点击"提供者"的名字,查看对方的联系方式,联系对方咨询.
 输入关键字,在本站1000多万海量源码库中尽情搜索: