Introduction to Information Retrieval
This is the companion website for the following book.
Christopher D. Manning, Prabhakar Raghavan and Hinrich Schütze, Introduction to Information Retrieval, Cambridge University Press. 2008.
You can order this book at CUP, at your local bookstore or on the internet. The best search term to use is the ISBN: 0521865719.
The book aims to provide a modern approach to information retrieval from a computer science perspective. It is based on a course we have been teaching in various forms at Stanford University and at the University of Stuttgart.
We'd be pleased to get feedback about how this book works out as a textbook, what is missing, or covered in too much detail, or what is simply wrong. Please send any feedback or comments to: informationretrieval (at) yahoogroups (dot) com
Online resources
Apart from small differences (mainly concerning copy editing and figures), the online editions should have the same content as the print edition.
The following materials are available online. The date of last update is given in parentheses.
* HTML edition (2009.04.07)
* PDF of the book for online viewing (with nice hyperlink features, 2009.04.01)
* PDF of the book for printing (2009.04.01)
* PDFs of individual chapters (2009.04.01)
* slides (2009.03.20)
* discussion forums (2009.03.31)
* a moodle with interactive exercises (2009.03.31, a couple of bugs fixed)
* exercises (2009.03.27)
* errata (2009.03.31)
Information retrieval resources
A list of information retrieval resources is also available.
Introduction to Information Retrieval: Table of Contents
chapter resources
Front matter (incl. table of notations) pdf
01 Boolean retrieval pdf html
02 The term vocabulary & postings lists pdf html
03 Dictionaries and tolerant retrieval pdf html
04 Index construction pdf html
05 Index compression pdf html
06 Scoring, term weighting & the vector space model pdf html
07 Computing scores in a complete search system pdf html
08 Evaluation in information retrieval pdf html
09 Relevance feedback & query expansion pdf html
10 XML retrieval pdf html
11 Probabilistic information retrieval pdf html
12 Language models for information retrieval pdf html
13 Text classification & Naive Bayes pdf html
14 Vector space classification pdf html
15 Support vector machines & machine learning on documents pdf html
16 Flat clustering pdf html html
17 Hierarchical clustering pdf html
18 Matrix decompositions & latent semantic indexing pdf html
19 Web search basics pdf html
20 Web crawling and indexes pdf html
21 Link analysis pdf html
Bibliography & Index pdf
bibtex file bib
分享到:
相关推荐
斯坦福大学-深度学习基础教程.rar 斯坦福大学-深度学习基础教程.rar 斯坦福大学-深度学习基础教程.rar
斯坦福大学-深度学习基础教程.pdf 斯坦福大学-深度学习基础教程.pdf 斯坦福大学-深度学习基础教程.pdf
KPCB-斯坦福大学-互联网趋势报告-2012
斯坦福大学--编程方法学第一课 示例代码供广大童鞋学习研究
深度学习基础教程 斯坦福大学教案
cs276课程的课件与作业,课本是《信息检索导论》,课程网站上已经限制下载。
高清版,斯坦福大学-深度学习基础教程,BAT算法工程师深入详细地讲解斯坦福大学-深度学习基础教程,带你轻松入门深度学习!
生成式AI展望-斯坦福人类-AI中心.pdf
斯坦福大学-深度学习-cs230-DeepLearning-官方知识点总结PDF,以图表形式呈现,全面简单易懂
斯坦福大学-机器学习课程全部的复习资料,以及讲义。
2019-[斯坦福]-Pre-training Graph Neural Networks-利用遮挡分子局部,强制学领域知识-rrrr1
斯坦福大学-吴恩达机器学习课程
斯坦福大学ACM-ICPC 这是斯坦福 ACM-ICPC 团队的存储库。它目前托管 (a) 团队笔记本和 (b) CS 97SI的完整讲座幻灯片。 该团队笔记本是根据斯坦福大学前团队成员和教练编写的代码编写的。
斯坦福课件-2011秋 1,3,4,5部分 包括MVC obj-c views 协议和gestures
非常不错的资料,值得收藏
IOS开发初学 ,斯坦福大学, 网易公开课,白胡子老爷爷,卡牌游戏源码,MAchismo
斯坦福大学-深度学习基础教程 本教程将阐述无监督特征学习和深入学习的主要观点。通过学习,你也将实现多个功能学习/深度学习算法,能看到它们为你工作,并学习如何应用/适应这些想法到新问题上.