"Pattern Recognition and machine learning" Resources
Bishop's "Pattern Recognition and machine learning" is the classic textbook in this field, this article has collected the relevant tutorials and reading notes for comparative learning, the main search resources include CSDN:HTTP://DOWNLOAD.CSDN.NET/SEARCH?Q=PRML, Memect:http://ml.memect.com/search/?q=prml. The other is Baidu and Google.
1: "Pattern Recognition and machine learning"
Author home page. Prml author Christopher M. Bishop published samples, errata, exercise answers, handouts and other materials,
http://research.microsoft.com/en-us/um/people/cmbishop/prml/
2: Video Course "machine learning and probabilistic mapping model"
Buffalo University Professor Sargur Srihari's "machine learning and probabilistic mapping Model" video course:
http://www.cedar.buffalo.edu/~srihari/CSE574/
Reference books are classic "Pattern Recognition and machine learning" by Chris Bishop (Springer 2006) and "Probabilistic Graphical Models" by Daphne Koller and Nir Friedman (MIT Press 2009)
3:chillyrain ' s Chinese notes
PRML notes Update to section 3.4
Http://chillyrain.is-programmer.com/categories/7613/posts
4:PRML Reading Book
Collection Print Version: Http://pan.baidu.com/s/1o6sxLFk
Web version: http://blog.csdn.net/nietzsche2015
5:jian Xiao's study notes
Notes on Pattern recognition and machine learning (Bishop) Version 1.0 Jian Xiao
PRML notes-notes on the Pattern recognition and machine learning
6:bin's Column
Summary of some chapters in Chinese
Http://www.cnblogs.com/xbinworld/category/337861.html
7: The Lost PRML Chinese translation manuscript
The statement on the PRML Chinese translation of the online circulation
http://weibo.com/p/1001603885799136480788
Statement:
If reproduced this article, please also indicate the source of reprint: http://www.cvrobot.net/pattern_recognition_and_machine_learning_notes_resources/
If you are interested in this machine learning, image vision algorithm technology, you can focus on Sina Weibo: visual robot or join QQ Group:101371386
Welcome to contribute or recommend good content ~ ~
"Pattern Recognition and machine learning" resources