资讯专栏INFORMATION COLUMN

Deep learning的一些教程

SimpleTriangle / 2367人阅读

摘要:还有一些以后补充。十分推荐更多的教程斯坦福的公开课教学语言是。加盟百度前,余凯博士在美国研究院担任部门主管,领导团队在机器学习图像识别多媒体检索视频监控,以及数据挖掘和人机交互等方面的产品技术研发。

转载自http://baojie.org/blog/2013/01/27/deep-learning-tutorials/

 

Stanford Deep Learning wiki: http://deeplearning.stanford.edu/wiki/index.php/Main_Page

 

几个不错的深度学习教程,基本都有视频和演讲稿。附两篇综述文章和一副漫画。还有一些以后补充。

Jeff Dean 2013 @ Stanford

jeffdean

http://i.stanford.edu/infoseminar/dean.pdf

一个对DL能干什么的入门级介绍,主要涉及Google在语音识别、图像处理和自然语言处理三个方向上的一些应用。参《Spanner and Deep Learning》(2013-01-19)

Hinton 2009

hinton2009

A tutorial on Deep Learning

Slides http://videolectures.net/site/normal_dl/tag=52790/jul09_hinton_deeplearn.pdf

Video http://videolectures.net/jul09_hinton_deeplearn/  (3 hours)

从神经网络的背景来分析DL,为什么要有DL说得很清楚。对DL的基本模型结构也说得很清楚。十分推荐

更多Hinton的教程 http://www.cs.toronto.edu/~hinton/nntut.html

斯坦福的Deep Learning公开课(2012)

Samy Bengio, Tom Dean and Andrew Ng

http://openclassroom.stanford.edu/MainFolder/CoursePage.php?course=DeepLearning

教学语言是Matlab。

参2011年的课程CS294A/CS294W  Deep Learning and Unsupervised Feature Learning

更多的斯坦福工作: Deep Learning in Natural Language Processing

deeplearning

NIPS 2009 tutorial

nips09_collobert_weston_dlnl_Page_002.480

Deep Learning for Natural Language Processing, 2009 tutorial by Ronan Collobert (senna author) 

  • http://ronan.collobert.com/pub/matos/2009_tutorial_nips.pdf

  • video http://videolectures.net/nips09_collobert_weston_dlnl/

这个介绍了DL在三个方向上的应用:tagging (parsing), semantic search, concept labeling

Ronan Collobert的Senna是一个c的深度学习实现,只有2000多行代码

ACL 2012 tutorial

acl2012

Deep Learning for NLP (without Magic) 

http://www.socher.org/index.php/DeepLearningTutorial/DeepLearningTutorial 

by Richard Socher, Yoshua Bengio and Chris Manning 

PDF: http://nlp.stanford.edu/~socherr/SocherBengioManning-DeepLearning-ACL2012-20120707-NoMargin.pdf 

Video: http://www.youtube.com/watch?v=IF5tGEgRCTQ&list=PL4617D0E28A5781B0

Kai Yu’s Tutorial

http://vipl.ict.ac.cn/News/academic-report-tutorial-deep-learning-dr-kai-yu 

On November 26, 2012

Title: “A Tutorial on Deep Learning” 

Abstract: 

In the past 30 years, tremendous progress has been made in building effective classification models. Despite the success, we have to realize that, in major AI challenges, the key bottleneck is not the quality of classifiers but that of features. Since 2006, learning high-level features using deep architectures has become a big wave of new learning paradigms. In recent two years, performance breakthrough was reported in both image and speech recognition tasks, indicating deep learning are not something ignorable. In this talk, I will walk through the recent works and key building blocks, e.g., sparse coding, RBMs, auto-encoders, etc. and list the major research topics, including modeling and computational issues. In the end, I will discuss what might be interesting topics for future research. 

Bio of Dr. Kai Yu: 

余 凯任百度技术副总监,多媒体部负责人,主要负责公司在语音,图像,音频等领域面向互联网和移动应用的技术研发。加盟百度前,余凯博士在美国NEC研究院担 任Media Analytics部门主管(Department Head),领导团队在机器学习、图像识别、多媒体检索、视频监控,以及数据挖掘和人机交互等方面的产品技术研发。此前他曾在西门子公司任Senior Research Scientist。2011年曾在斯坦福大学计算机系客座主讲课程“CS121: 人工智能概论”。他在NIPS, ICML, CVPR, ICCV, ECCV,SIGIR, SIGKDD,TPAMI,TKDE等会议和杂志上发表了70多篇论文,H-index=28,曾担任机器学习国际会议ICML10, ICML11, NIPS11, NIPS12的Area Chair. 2012年他被评为中关村高端领军人才和北京市海聚计划高层次海外人才。 

Slides link: http://pan.baidu.com/share/link?shareid=136269&uk=2267174042[1] 

Video link: KaiYu_report.mp4 (519.2 MB) 

Theano Deep Learning Tutorial

这个是实战, 如何用Python实现深度学习

http://deeplearning.net/tutorial/

Code https://github.com/lisa-lab/DeepLearningTutorials 

Survey Papers

很多,不过初学看这两篇应该就够了

Yoshua Bengio, Aaron Courville, Pascal Vincent. (2012) Representation Learning: A Review and New Perspectives

Yoshua Bengio (2009). Learning Deep Architectures for AI.

更多

  • Itamar Arel, Derek C. Rose, and Thomas P. Karnowski. (2010) Deep Machine Learning – A New Frontier in Artificial Intelligence Research  这篇没什么公式,也不长,就是笼统的介绍一下
  • 截至2009的一些重要文章 http://www.iro.umontreal.ca/~lisa/twiki/bin/view.cgi/Public/ReadingOnDeepNetworks
最后来个漫画

Deep Learning虽好,也要牢记它的局限

c479cc50-46a0-4580-bbb7-bdf0cf07ce5d (1)

文章版权归作者所有,未经允许请勿转载,若此文章存在违规行为,您可以联系管理员删除。

转载请注明本文地址:https://www.ucloud.cn/yun/4285.html

相关文章

  • 超过 150 个最佳机器学习,NLP 和 Python教程

    摘要:作者微信号微信公众号简书地址我把这篇文章分为四个部分机器学习,,和数学。在这篇文章中,我把每个主题的教程数量都是控制在五到六个,这些精选出来的教程都是非常重要的。每一个链接都会链接到别的链接,从而导致很多新的教程。 作者:chen_h微信号 & QQ:862251340微信公众号:coderpai简书地址:http://www.jianshu.com/p/2be3... showIm...

    JayChen 评论0 收藏0

发表评论

0条评论

SimpleTriangle

|高级讲师

TA的文章

阅读更多
最新活动
阅读需要支付1元查看
<