BOOK READING_1_Pattern Recognition And Machine Learning
来源:互联网 发布:golang web框架 编辑:程序博客网 时间:2024/05/22 14:48
来源:http://hi.baidu.com/susongzhi/item/843592de72fc0410d78ed0e3
BOOK READING_1_Pattern Recognition And Machine Learning
【书本】Christopher M. Bishop,《Pattern Recognition and Machine Learning》, 2006年出版.
【时间】每周五早上10:30.
【地点】科研2#400
【相关的网络资源】
1. Christopher M. Bishop维护的BOOK WEB PAGE;与这边书相关的两个报告视频:
(1) Introduction To Bayesian Inference;
(2) Graphical Models and Variational Methods.
2. INRIA针对这本书的建立的Reading Group.
3. Song-Chun Zhu, UCLA,Stat Model and Learning. ANDPattern Recognition and Machine Learning.
4.Sargur N. Srihari,Machine Learning and Probabilistic Graphical Models Course. 内容与《PRML》相近,且配有video lectures。
Sargur N. Srihari,Introduction to Pattern Recognition.内容编排主要按照R. O. Duda的《Pattern Classification 2nd. Edition》。
5. Yuan (Alan) Qi, Purdue University, 2009-2012,Statistical Machine Learning.
6. Glossary of Data Modeling, Training, Tutorial. 包含统计学中各种"鲜活"的例子和demo.
7. Andrew Ng. Stanford, CS229 Machine Learning. 课程体系完整,有视频(163公开课)、lecture notes、补充材料、Student Projects, 资料非常齐全.
8. Fei Sha, (1) Selected topics in machine learning, 包括:structured predictions, latent variable modeling, distance metric learning, transfer learning, deep architecture, compressed sensing. (2) A tutorialabout parameter estimation, model selection, probability graph models.
9. 统计之都. 国内较好的一个统计学相关的网站,包括各种相关的学术新闻、统计模型、经典理论、典故、人物事迹等。
10. David MacKay,Information Theory, Pattern Recognition and Neural Networks. lecture video. Information Theory (MLSS2009).
11. Mehryar Mohri. Foundations of Machine Learning. 不错的资料,新书《Foundations of Machine Learning》, MIT Press, 2012,即将面世。
12. Yishay Mansour, Tel Aviv University. Machine Learning: Foundations(Fall 2010/2011). Lecture Notes写的比较好。
13. Shai Shalev-Shwartz (HUJI),Introduction to Machine Learning.lecture notes相当完整,简直就是一本书.
14. Maria Florina Balcan (1)Machine Learning Theory. Boosting, PAC Model, Bounds, Semi-supervised Learning, Kernels, Fourier-based Learning, Unlabeled data in the Learning Process, Active Learning, The weighted majority algorithm, et al. (2)Connections between Learning, Game theory, and Optimization, Fall, 2010.
15.Avrim Blum, CMU, 15-859(B), Spring, 2009. Machine Learning Theory. PAC, Mistake-bound model, Winnow Algorithm, VC-Dimension, Margin, Cryptographic hardness results, Fourier-based algorithms, Membership query algorithms, Learning finite-state environments, offline->online optimization, Bandit problems, MDPs and Reinforcement learning.
16.Peter Barlett, UCBerkeley, Stat 241B, 2008,Statistical learning theory. Minimax Risk, Soft-margin SVMs, Convex loss versus 0-1 loss, Adaboost, Concentration inequalities, Glivenko-Cantelli classes and Rademacher averges, VC-Dimension, Online bandit problems, Universal portfolios.
17. Max Welling, Machine Learning Class notes, 非常不错。
18. 张兆翔. 北航,http://irip.buaa.edu.cn/~zxzhang/Teaching.html
Chapter 1 Introduction
报告人:苏松志
时 间1:2012-04-06
时 间2:2012-04-13
Chapter 2 Probability Distribution
报告人:蔡国榕
时 间:2012-04-20
Chapter 3 Linear Models for Regression
苏松志
Demo: Bias and Variance Trade-off
[ 注1]page.159的Figure 3.10和Figure 3.11貌似是错误的!(害我折腾到深夜,网络资源中各位大牛的ppt竟然都照搬书本).
Chapter 4 Linear Models for Classification
张洪博
Chapter 6 Kernel Methods
吕艳萍
http://mi.eng.cam.ac.uk/~at315/MVRVM.htm
OpenKernel Libraryhttp://www.openkernel.org/
CVPR 2012 Tutorial, All you want to know about Gaussian Processes. by Raquel Urtasun, and Neil Lawrence
Chapter 7 Sparse Kernel Machines
吕艳萍
ch8:张苗辉
ch9:杨柳
ch11:陈思
ch14:曹海
- BOOK READING_1_Pattern Recognition And Machine Learning
- 《Pattern recognition and machine learning》第一章 笔记
- 【Pattern Recognition and Machine Learning】p7 preface
- Pattern Recognition And Machine Learning读书会前言
- 《Pattern Recognition and Machine Learning》学习笔记 第一章(一)
- 《Pattern Recognition and Machine Learning》学习笔记 第一章(二)
- 《Pattern Recognition and Machine Learning》学习笔记 第一章(三)
- PRML(Pattern Recognition And Machine Learning)学习【1】
- PRML(Pattern Recognition And Machine Learning)学习【2】
- 【Pattern Recognition and Machine Learning】p8-9 preface
- 【Pattern Recognition and Machine Learning】p10-11 Mathematical notations
- pattern recognition and machine learning这本书怎么看?
- Chapter 10.1 Variational Inference <Pattern Recognition and Machine Learning>
- Pattern Recognition and Machine Learning 第一章学习小记
- Pattern Recognition and Machine Learning 第二章 概率分布
- Pattern Recognition and Machine Learning 第三章 线性回归模型
- Pattern Recognition and Machine Learning 第四章 线性分类模型
- Pattern Recognition and Machine Learning 第八章 贝叶斯网络
- 12.黑马程序员-字符串
- Android之判断时间是否为今天
- 我的霸面人生
- python类型转换
- 聚美优品
- BOOK READING_1_Pattern Recognition And Machine Learning
- 最新ffmpeg编译和用eclipse进行源码调试
- 全网积分宝签到汇总
- Windows安装memcached图文教程
- 关于指针在结构体中的调用
- 解决ubuntu12.04默认开机最大亮度问题
- VIM技巧
- BOOK_READING_2_Computer Vision: Algorithms and Applications
- 跟我一起玩Win32开发(1):关于C++的几个要点