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#大数据/数据挖掘/推荐系统/机器学习相关资源

Share my personal resources

#视频

###大数据视频以及讲义 https://pan.baidu.com/share/link?shareid=3860301827&uk=3978262348

###浙大数据挖掘系列 https://v.youku.com/v_show/id_XNTgzNDYzMjg=.html?f=2740765

###用Python做科学计算 https://www.tudou.com/listplay/fLDkg5e1pYM.html

###R语言视频 https://pan.baidu.com/s/1koSpZ

###Hadoop视频 https://pan.baidu.com/s/1b1xYd

###42区 . 技术 . 创业 . 第二讲 https://v.youku.com/v_show/id_XMzAyMDYxODUy.html

###加州理工学院公开课:机器学习与数据挖掘 https://v.163.com/special/opencourse/learningfromdata.html

=======================

##书籍

###各种书各种ppt更新中~ https://pan.baidu.com/s/1EaLnZ

###机器学习经典书籍小结 https://www.cnblogs.com/snake-hand/archive/2013/06/10/3131145.html

=======================

##QQ群

机器学习&模式识别 246159753

数据挖掘机器学习 236347059

推荐系统 274750470

博客

###推荐系统

周涛 https://blog.sciencenet.cn/home.php?mod=space&uid=3075

Greg Linden https://glinden.blogspot.com/

Marcel Caraciolo https://aimotion.blogspot.com/

ResysChina https://weibo.com/p/1005051686952981

推荐系统人人小站 https://zhan.renren.com/recommendersystem

阿稳 https://www.wentrue.net

梁斌 https://weibo.com/pennyliang

刁瑞 https://diaorui.net

guwendong https://www.guwendong.com

xlvector https://xlvector.net

懒惰啊我 https://www.cnblogs.com/flclain/

free mind https://blog.pluskid.org/

lovebingkuai https://lovebingkuai.diandian.com/

LeftNotEasy https://www.cnblogs.com/LeftNotEasy

LSRS 2013 https://graphlab.org/lsrs2013/program/

Google小组 https://groups.google.com/forum/#!forum/resys

###机器学习

Journal of Machine Learning Research https://jmlr.org/

###信息检索

清华大学信息检索组 https://www.thuir.cn

###自然语言处理

我爱自然语言处理 https://www.52nlp.cn/ test ##Github

###推荐系统

推荐系统开源软件列表汇总和评点 https://in.sdo.com/?p=1707

Mrec(Python)

https://github.com/mendeley/mrec

Crab(Python)

https://github.com/muricoca/crab

Python-recsys(Python)

https://github.com/ocelma/python-recsys

CofiRank(C++)

https://github.com/markusweimer/cofirank

GraphLab(C++)

https://github.com/graphlab-code/graphlab

EasyRec(Java)

https://github.com/hernad/easyrec

Lenskit(Java)

https://github.com/grouplens/lenskit

Mahout(Java)

https://github.com/apache/mahout

Recommendable(Ruby)

https://github.com/davidcelis/recommendable

##文章

###机器学习

###推荐系统

  • Netflix 推荐系统:第一部分 https://blog.csdn.net/bornhe/article/details/8222450

  • Netflix 推荐系统:第二部分 https://blog.csdn.net/bornhe/article/details/8222497

  • 探索推荐引擎内部的秘密 https://www.ibm.com/developerworks/cn/web/1103_zhaoct_recommstudy1/index.html

  • 推荐系统resys小组线下活动见闻2009-08-22 https://www.tuicool.com/articles/vUvQVn

  • Recommendation Engines Seminar Paper, Thomas Hess, 2009: 推荐引擎的总结性文章 https://www.slideshare.net/antiraum/recommender-engines-seminar-paper

  • Toward the Next Generation of Recommender Systems: A Survey of the State-of-the-Art and Possible Extensions, Adomavicius, G.; Tuzhilin, A., 2005 https://dl.acm.org/citation.cfm?id=1070751

  • A Taxonomy of RecommenderAgents on the Internet, Montaner, M.; Lopez, B.; de la Rosa, J. L., 2003 https://www.springerlink.com/index/KK844421T5466K35.pdf

  • A Course in Machine Learning https://ciml.info/

  • 基于mahout构建社会化推荐引擎 https://www.doc88.com/p-745821989892.html

  • 个性化推荐技术漫谈 https://blog.csdn.net/java060515/archive/2007/04/19/1570243.aspx

  • Design of Recommender System https://www.slideshare.net/rashmi/design-of-recommender-systems

  • How to build a recommender system https://www.slideshare.net/blueace/how-to-build-a-recommender-system-presentation

  • 推荐系统架构小结 https://blog.csdn.net/idonot/article/details/7996733

  • System Architectures for Personalization and Recommendation https://techblog.netflix.com/2013/03/system-architectures-for.html

  • The Netflix Tech Blog https://techblog.netflix.com/

  • 百分点推荐引擎——从需求到架构https://www.infoq.com/cn/articles/baifendian-recommendation-engine

  • 推荐系统 在InfoQ上的内容 https://www.infoq.com/cn/recommend

  • 推荐系统实时化的实践和思考 https://www.infoq.com/cn/presentations/recommended-system-real-time-practice-thinking

  • 质量保证的推荐实践 https://www.infoq.com/cn/news/2013/10/testing-practice/

  • 推荐系统的工程挑战 https://www.infoq.com/cn/presentations/Recommend-system-engineering

  • 社会化推荐在人人网的应用 https://www.infoq.com/cn/articles/zyy-social-recommendation-in-renren/

  • 利用20%时间开发推荐引擎 https://www.infoq.com/cn/presentations/twenty-percent-time-to-develop-recommendation-engine

  • 使用Hadoop和 Mahout实现推荐引擎 https://www.jdon.com/44747

  • SVD 简介 https://www.cnblogs.com/FengYan/archive/2012/05/06/2480664.html

  • Netflix推荐系统:从评分预测到消费者法则 https://blog.csdn.net/lzt1983/article/details/7696578

  • 《推荐系统实践》的Reference

      	https://en.wikipedia.org/wiki/Information_overload 
         P1 
         
        https://www.readwriteweb.com/archives/recommender_systems.php 
        (A Guide to Recommender System) P4 
         
         
        https://en.wikipedia.org/wiki/Cross-selling 
         (Cross Selling) P6 
         
        https://blog.kiwitobes.com/?p=58 , https://stanford2009.wikispaces.com/ 
        (课程:Data Mining and E-Business: The Social Data Revolution) P7 
         
         https://thesearchstrategy.com/ebooks/an%20introduction%20to%20search%20engines%20and%20web%20navigation.pdf 
        (An Introduction to Search Engines and Web Navigation) p7 
         
        https://www.netflixprize.com/ 
        p8 
         
        https://cdn-0.nflximg.com/us/pdf/Consumer_Press_Kit.pdf 
         p9 
         
         https://stuyresearch.googlecode.com/hg-history/c5aa9d65d48c787fd72dcd0ba3016938312102bd/blake/resources/p293-davidson.pdf 
        (The Youtube video recommendation system) p9 
         
         https://www.slideshare.net/plamere/music-recommendation-and-discovery 
        ( PPT: Music Recommendation and Discovery) p12 
         
        https://www.facebook.com/instantpersonalization/ 
        P13 
         
         https://about.digg.com/blog/digg-recommendation-engine-updates 
         (Digg Recommendation Engine Updates) P16 
         
         https://static.googleusercontent.com/external_content/untrusted_dlcp/research.google.com/en//pubs/archive/36955.pdf 
         (The Learning Behind Gmail Priority Inbox)p17 
         
        https://www.grouplens.org/papers/pdf/mcnee-chi06-acc.pdf 
        (Accurate is not always good: How Accuracy Metrics have hurt Recommender Systems) P20 
         
        https://www-users.cs.umn.edu/~mcnee/mcnee-cscw2006.pdf 
         (Don’t Look Stupid: Avoiding Pitfalls when Recommending Research Papers)P23 
         
        https://www.sigkdd.org/explorations/issues/9-2-2007-12/7-Netflix-2.pdf 
         (Major componets of the gravity recommender system) P25 
         
        https://cacm.acm.org/blogs/blog-cacm/22925-what-is-a-good-recommendation-algorithm/fulltext 
        (What is a Good Recomendation Algorithm?) P26 
         
        https://research.microsoft.com/pubs/115396/evaluationmetrics.tr.pdf 
         (Evaluation Recommendation Systems) P27 
         
        https://mtg.upf.edu/static/media/PhD_ocelma.pdf 
        (Music Recommendation and Discovery in the Long Tail) P29 
         
        https://ir.ii.uam.es/divers2011/ 
        (Internation Workshop on Novelty and Diversity in Recommender Systems) p29 
         
        https://www.cs.ucl.ac.uk/fileadmin/UCL-CS/research/Research_Notes/RN_11_21.pdf 
        (Auralist: Introducing Serendipity into Music Recommendation ) P30 
         
        https://www.springerlink.com/content/978-3-540-78196-7/#section=239197&page=1&locus=21 
        (Metrics for evaluating the serendipity of recommendation lists) P30 
         
        https://dare.uva.nl/document/131544 
        (The effects of transparency on trust in and acceptance of a content-based art recommender) P31 
         
        https://brettb.net/project/papers/2007%20Trust-aware%20recommender%20systems.pdf 
         (Trust-aware recommender systems) P31 
         
        https://recsys.acm.org/2011/pdfs/RobustTutorial.pdf 
        (Tutorial on robutness of recommender system) P32 
         
        https://youtube-global.blogspot.com/2009/09/five-stars-dominate-ratings.html 
         (Five Stars Dominate Ratings) P37 
         
        https://www.informatik.uni-freiburg.de/~cziegler/BX/ 
        (Book-Crossing Dataset) P38 
         
        https://www.dtic.upf.edu/~ocelma/MusicRecommendationDataset/lastfm-1K.html 
        (Lastfm Dataset) P39 
         
        https://mmdays.com/2008/11/22/power_law_1/ 
        (浅谈网络世界的Power Law现象) P39 
         
        https://www.grouplens.org/node/73/ 
        (MovieLens Dataset) P42 
         
        https://research.microsoft.com/pubs/69656/tr-98-12.pdf 
        (Empirical Analysis of Predictive Algorithms for Collaborative Filtering) P49 
         
        https://vimeo.com/1242909 
        (Digg Vedio) P50 
         
        https://glaros.dtc.umn.edu/gkhome/fetch/papers/itemrsCIKM01.pdf 
         (Evaluation of Item-Based Top-N Recommendation Algorithms) P58 
         
        https://www.cs.umd.edu/~samir/498/Amazon-Recommendations.pdf 
        (Amazon.com Recommendations Item-to-Item Collaborative Filtering) P59 
         
        https://glinden.blogspot.com/2006/03/early-amazon-similarities.html 
         (Greg Linden Blog) P63 
         
        https://www.hpl.hp.com/techreports/2008/HPL-2008-48R1.pdf 
        (One-Class Collaborative Filtering) P67 
         
        https://en.wikipedia.org/wiki/Stochastic_gradient_descent 
        (Stochastic Gradient Descent) P68 
         
        https://www.ideal.ece.utexas.edu/seminar/LatentFactorModels.pdf 
         (Latent Factor Models for Web Recommender Systems) P70 
         
        https://en.wikipedia.org/wiki/Bipartite_graph 
        (Bipatite Graph) P73 
         
        https://ieeexplore.ieee.org/xpl/login.jsp?tp=&arnumber=4072747&url=http%3A%2F%2Fieeexplore.ieee.org%2Fxpls%2Fabs_all.jsp%3Farnumber%3D4072747 
        (Random-Walk Computation of Similarities between Nodes of a Graph with Application to Collaborative Recommendation) P74 
         
        https://www-cs-students.stanford.edu/~taherh/papers/topic-sensitive-pagerank.pdf 
        (Topic Sensitive Pagerank) P74 
         
        https://www.stanford.edu/dept/ICME/docs/thesis/Li-2009.pdf 
        (FAST ALGORITHMS FOR SPARSE MATRIX INVERSE COMPUTATIONS) P77 
         
        https://www.aaai.org/ojs/index.php/aimagazine/article/view/1292 
         (LIFESTYLE FINDER: Intelligent User Profiling Using Large-Scale Demographic Data) P80
         
        https://research.yahoo.com/files/wsdm266m-golbandi.pdf 
        ( adaptive bootstrapping of recommender systems using decision trees) P87 
         
        https://en.wikipedia.org/wiki/Vector_space_model 
        (Vector Space Model) P90 
         
        https://tunedit.org/challenge/VLNetChallenge 
        (冷启动问题的比赛) P92 
         
        https://www.cs.princeton.edu/~blei/papers/BleiNgJordan2003.pdf 
         (Latent Dirichlet Allocation) P92 
         
        https://en.wikipedia.org/wiki/Kullback%E2%80%93Leibler_divergence 
         (Kullback–Leibler divergence) P93 
         
        https://www.pandora.com/about/mgp 
        (About The Music Genome Project) P94 
         
        https://en.wikipedia.org/wiki/List_of_Music_Genome_Project_attributes 
        (Pandora Music Genome Project Attributes) P94 
         
        https://www.jinni.com/movie-genome.html 
        (Jinni Movie Genome) P94 
         
        https://www.shilad.com/papers/tagsplanations_iui2009.pdf 
         (Tagsplanations: Explaining Recommendations Using Tags) P96 
         
        https://en.wikipedia.org/wiki/Tag_(metadata) 
        (Tag Wikipedia) P96 
         
        https://www.shilad.com/shilads_thesis.pdf 
        (Nurturing Tagging Communities) P100 
         
        https://www.stanford.edu/~morganya/research/chi2007-tagging.pdf 
         (Why We Tag: Motivations for Annotation in Mobile and Online Media ) P100 
         
        https://www.google.com/url?sa=t&rct=j&q=delicious%20dataset%20dai-larbor&source=web&cd=1&ved=0CFIQFjAA&url=http%3A%2F%2Fwww.dai-labor.de%2Fen%2Fcompetence_centers%2Firml%2Fdatasets%2F&ei=1R4JUKyFOKu0iQfKvazzCQ&;usg=AFQjCNGuVzzKIKi3K2YFybxrCNxbtKqS4A&cad=rjt 
        (Delicious Dataset) P101 
         
        https://research.microsoft.com/pubs/73692/yihgoca-www06.pdf 
         (Finding Advertising Keywords on Web Pages) P118 
         
        https://www.kde.cs.uni-kassel.de/ws/rsdc08/ 
        (基于标签的推荐系统比赛) P119 
         
        https://delab.csd.auth.gr/papers/recsys.pdf 
        (Tag recommendations based on tensor dimensionality reduction)P119 
         
        https://www.l3s.de/web/upload/documents/1/recSys09.pdf 
        (latent dirichlet allocation for tag recommendation) P119 
         
        https://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.94.5271&rep=rep1&type=pdf 
        (Folkrank: A ranking algorithm for folksonomies) P119 
         
        https://www.grouplens.org/system/files/tagommenders_numbered.pdf 
         (Tagommenders: Connecting Users to Items through Tags) P119 
         
        https://www.grouplens.org/system/files/group07-sen.pdf 
        (The Quest for Quality Tags) P120 
         
        https://2011.camrachallenge.com/ 
        (Challenge on Context-aware Movie Recommendation) P123 
         
        https://bits.blogs.nytimes.com/2011/09/07/the-lifespan-of-a-link/ 
        (The Lifespan of a link) P125 
         
        https://www0.cs.ucl.ac.uk/staff/l.capra/publications/lathia_sigir10.pdf 
         (Temporal Diversity in Recommender Systems) P129 
         
        https://staff.science.uva.nl/~kamps/ireval/papers/paper_14.pdf 
         (Evaluating Collaborative Filtering Over Time) P129 
         
        https://www.google.com/places/ 
        (Hotpot) P139 
         
        https://www.readwriteweb.com/archives/google_launches_recommendation_engine_for_places.php 
        (Google Launches Hotpot, A Recommendation Engine for Places) P139 
         
        https://xavier.amatriain.net/pubs/GeolocatedRecommendations.pdf 
         (geolocated recommendations) P140 
         
        https://www.nytimes.com/interactive/2010/01/10/nyregion/20100110-netflix-map.html 
        (A Peek Into Netflix Queues) P141 
         
        https://www.cs.umd.edu/users/meesh/420/neighbor.pdf 
        (Distance Browsing in Spatial Databases1) P142 
         
        https://www.eng.auburn.edu/~weishinn/papers/MDM2010.pdf 
         (Efficient Evaluation of k-Range Nearest Neighbor Queries in Road Networks) P143 
         
         
        https://blog.nielsen.com/nielsenwire/consumer/global-advertising-consumers-trust-real-friends-and-virtual-strangers-the-most/ 
        (Global Advertising: Consumers Trust Real Friends and Virtual Strangers the Most) P144 
         
        https://static.googleusercontent.com/external_content/untrusted_dlcp/research.google.com/en//pubs/archive/36371.pdf 
        (Suggesting Friends Using the Implicit Social Graph) P145 
         
        https://blog.nielsen.com/nielsenwire/online_mobile/friends-frenemies-why-we-add-and-remove-facebook-friends/ 
        (Friends & Frenemies: Why We Add and Remove Facebook Friends) P147 
         
        https://snap.stanford.edu/data/ 
        (Stanford Large Network Dataset Collection) P149 
         
        https://www.dai-labor.de/camra2010/ 
        (Workshop on Context-awareness in Retrieval and Recommendation) P151 
         
        https://www.comp.hkbu.edu.hk/~lichen/download/p245-yuan.pdf 
         (Factorization vs. Regularization: Fusing Heterogeneous 
        Social Relationships in Top-N Recommendation) P153 
         
        https://www.infoq.com/news/2009/06/Twitter-Architecture/ 
        (Twitter, an Evolving Architecture) P154 
         
        https://www.google.com/url?sa=t&rct=j&q=&esrc=s&source=web&cd=2&ved=0CGQQFjAB&url=http%3A%2F%2Fciteseerx.ist.psu.edu%2Fviewdoc%2Fdownload%3Fdoi%3D10.1.1.165.3679%26rep%3Drep1%26type%3Dpdf&ei=dIIJUMzEE8WviQf5tNjcCQ&usg=AFQjCNGw2bHXJ6MdYpksL66bhUE8krS41w&sig2=5EcEDhRe9S5SQNNojWk7_Q 
        (Recommendations in taste related domains) P155 
         
        https://www.ercim.eu/publication/ws-proceedings/DelNoe02/RashmiSinha.pdf 
        (Comparing Recommendations Made by Online Systems and Friends) P155 
         
        https://techcrunch.com/2010/04/22/facebook-edgerank/ 
        (EdgeRank: The Secret Sauce That Makes Facebook's News Feed Tick) P157 
         
        https://www.grouplens.org/system/files/p217-chen.pdf 
        (Speak Little and Well: Recommending Conversations in Online Social Streams) P158 
         
        https://blog.linkedin.com/2008/04/11/learn-more-abou-2/ 
        (Learn more about “People You May Know”) P160 
         
        https://domino.watson.ibm.com/cambridge/research.nsf/58bac2a2a6b05a1285256b30005b3953/8186a48526821924852576b300537839/$FILE/TR%202009.09%20Make%20New%20Frends.pdf 
        (“Make New Friends, but Keep the Old” – Recommending People on Social Networking Sites) P164 
         
        https://www.google.com.hk/url?sa=t&rct=j&q=social+recommendation+using+prob&source=web&cd=2&ved=0CFcQFjAB&url=http%3A%2F%2Fciteseerx.ist.psu.edu%2Fviewdoc%2Fdownload%3Fdoi%3D10.1.1.141.465%26rep%3Drep1%26type%3Dpdf&ei=LY0JUJ7OL9GPiAfe8ZzyCQ&usg=AFQjCNH-xTUWrs9hkxTA8si5fztAdDAEng 
        (SoRec: Social Recommendation Using Probabilistic Matrix) P165 
         
        https://olivier.chapelle.cc/pub/DBN_www2009.pdf 
        (A Dynamic Bayesian Network Click Model for Web Search Ranking) P177 
         
        https://www.google.com.hk/url?sa=t&rct=j&q=online+learning+from+click+data+spnsored+search&source=web&cd=1&ved=0CFkQFjAA&url=http%3A%2F%2Fwww.research.yahoo.net%2Ffiles%2Fp227-ciaramita.pdf&ei=HY8JUJW8CrGuiQfpx-XyCQ&usg=AFQjCNE_CYbEs8DVo84V-0VXs5FeqaJ5GQ&cad=rjt 
        (Online Learning from Click Data for Sponsored Search) P177 
         
        https://www.cs.cmu.edu/~deepay/mywww/papers/www08-interaction.pdf 
        (Contextual Advertising by Combining Relevance with Click Feedback) P177 
        https://tech.hulu.com/blog/2011/09/19/recommendation-system/ 
        (Hulu 推荐系统架构) P178 
         
        https://mymediaproject.codeplex.com/ 
        (MyMedia Project) P178 
         
        https://www.grouplens.org/papers/pdf/www10_sarwar.pdf 
        (item-based collaborative filtering recommendation algorithms) P185 
         
        https://www.stanford.edu/~koutrika/Readings/res/Default/billsus98learning.pdf 
        (Learning Collaborative Information Filters) P186 
         
        https://sifter.org/~simon/journal/20061211.html 
        (Simon Funk Blog:Funk SVD) P187 
         
        https://courses.ischool.berkeley.edu/i290-dm/s11/SECURE/a1-koren.pdf 
        (Factor in the Neighbors: Scalable and Accurate Collaborative Filtering) P190 
         
        https://nlpr-web.ia.ac.cn/2009papers/gjhy/gh26.pdf 
        (Time-dependent Models in Collaborative Filtering based Recommender System) P193 
         
        https://sydney.edu.au/engineering/it/~josiah/lemma/kdd-fp074-koren.pdf 
        (Collaborative filtering with temporal dynamics) P193 
         
        https://en.wikipedia.org/wiki/Least_squares 
        (Least Squares Wikipedia) P195 
         
        https://www.mimuw.edu.pl/~paterek/ap_kdd.pdf 
        (Improving regularized singular value decomposition for collaborative filtering) P195 
         
        https://public.research.att.com/~volinsky/netflix/kdd08koren.pdf 
         (Factorization Meets the Neighborhood: a Multifaceted 
        Collaborative Filtering Model) P195 
    

【ACM RecSys 2009 Workshop】Improving recommendation accuracy by clustering so.pdf

【CIKM 2012 Best Stu Paper】Incorporating Occupancy into Frequent Pattern Mini.pdf

【CIKM 2012 poster】A Latent Pairwise Preference Learning Approach for Recomme.pdf

【CIKM 2012 poster】An Effective Category Classification Method Based on a Lan.pdf

【CIKM 2012 poster】Learning to Rank for Hybrid Recommendation.pdf

【CIKM 2012 poster】Learning to Recommend with Social Relation Ensemble.pdf

【CIKM 2012 poster】Maximizing Revenue from Strategic Recommendations under De.pdf

【CIKM 2012 poster】On Using Category Experts for Improving the Performance an.pdf

【CIKM 2012 poster】Relation Regularized Subspace Recommending for Related Sci.pdf

【CIKM 2012 poster】Top-N Recommendation through Belief Propagation.pdf

【CIKM 2012 poster】Twitter Hyperlink Recommendation with User-Tweet-Hyperlink.pdf

【CIKM 2012 short】Automatic Query Expansion Based on Tag Recommendation.pdf

【CIKM 2012 short】Graph-Based Workflow Recommendation- On Improving Business .pdf

【CIKM 2012 short】Location-Sensitive Resources Recommendation in Social Taggi.pdf

【CIKM 2012 short】More Than Relevance- High Utility Query Recommendation By M.pdf

【CIKM 2012 short】PathRank- A Novel Node Ranking Measure on a Heterogeneous G.pdf

【CIKM 2012 short】PRemiSE- Personalized News Recommendation via Implicit Soci.pdf

【CIKM 2012 short】Query Recommendation for Children.pdf

【CIKM 2012 short】The Early-Adopter Graph and its Application to Web-Page Rec.pdf

【CIKM 2012 short】Time-aware Topic Recommendation Based on Micro-blogs.pdf

【CIKM 2012 short】Using Program Synthesis for Social Recommendations.pdf

【CIKM 2012】A Decentralized Recommender System for Effective Web Credibility .pdf

【CIKM 2012】A Generalized Framework for Reciprocal Recommender Systems.pdf

【CIKM 2012】Dynamic Covering for Recommendation Systems.pdf

【CIKM 2012】Efficient Retrieval of Recommendations in a Matrix Factorization .pdf

【CIKM 2012】Exploring Personal Impact for Group Recommendation.pdf

【CIKM 2012】LogUCB- An Explore-Exploit Algorithm For Comments Recommendation.pdf

【CIKM 2012】Metaphor- A System for Related Search Recommendations.pdf

【CIKM 2012】Social Contextual Recommendation.pdf

【CIKM 2012】Social Recommendation Across Multiple Relational Domains.pdf

【COMMUNICATIONS OF THE ACM】Recommender Systems.pdf

【ICDM 2012 short___】Multiplicative Algorithms for Constrained Non-negative M.pdf

【ICDM 2012 short】Collaborative Filtering with Aspect-based Opinion Mining- A.pdf

【ICDM 2012 short】Learning Heterogeneous Similarity Measures for Hybrid-Recom.pdf

【ICDM 2012 short】Mining Personal Context-Aware Preferences for Mobile Users.pdf

【ICDM 2012】Link Prediction and Recommendation across Heterogenous Social Networks.pdf

【IEEE Computer Society 2009】Matrix factorization techniques for recommender .pdf

【IEEE Consumer Communications and Networking Conference 2006】FilmTrust movie.pdf

【IEEE Trans on Audio, Speech and Laguage Processing 2010】Personalized music .pdf

【IEEE Transactions on Knowledge and Data Engineering 2005】Toward the next ge.pdf

【INFOCOM 2011】Bayesian-inference Based Recommendation in Online Social Network.pdf

【KDD 2009】Learning optimal ranking with tensor factorization for tag recomme.pdf

【SIGIR 2009】Learning to Recommend with Social Trust Ensemble.pdf

【SIGIR 2012】Adaptive Diversification of Recommendation Results via Latent Fa.pdf

【SIGIR 2012】Collaborative Personalized Tweet Recommendation.pdf

【SIGIR 2012】Dual Role Model for Question Recommendation in Community Questio.pdf

【SIGIR 2012】Exploring Social Influence for Recommendation - A Generative Mod.pdf

【SIGIR 2012】Increasing Temporal Diversity with Purchase Intervals.pdf

【SIGIR 2012】Learning to Rank Social Update Streams.pdf

【SIGIR 2012】Personalized Click Shaping through Lagrangian Duality for Online.pdf

【SIGIR 2012】Predicting the Ratings of Multimedia Items for Making Personaliz.pdf

【SIGIR 2012】TFMAP-Optimizing MAP for Top-N Context-aware Recommendation.pdf

【SIGIR 2012】What Reviews are Satisfactory- Novel Features for Automatic Help.pdf

【SIGKDD 2012】 A Semi-Supervised Hybrid Shilling Attack Detector for Trustwor.pdf

【SIGKDD 2012】 RecMax- Exploiting Recommender Systems for Fun and Profit.pdf

【SIGKDD 2012】Circle-based Recommendation in Online Social Networks.pdf

【SIGKDD 2012】Cross-domain Collaboration Recommendation.pdf

【SIGKDD 2012】Finding Trending Local Topics in Search Queries for Personaliza.pdf

【SIGKDD 2012】GetJar Mobile Application Recommendations with Very Sparse Datasets.pdf

【SIGKDD 2012】Incorporating Heterogenous Information for Personalized Tag Rec.pdf

【SIGKDD 2012】Learning Personal+Social Latent Factor Model for Social Recomme.pdf

【VLDB 2012】Challenging the Long Tail Recommendation.pdf

【VLDB 2012】Supercharging Recommender Systems using Taxonomies for Learning U.pdf

【WWW 2012 Best paper】Build Your Own Music Recommender by Modeling Internet R.pdf

【WWW 2013】A Personalized Recommender System Based on User's Informatio.pdf

【WWW 2013】Diversified Recommendation on Graphs-Pitfalls, Measures, and Algorithms.pdf

【WWW 2013】Do Social Explanations Work-Studying and Modeling the Effects of S.pdf

【WWW 2013】Generation of Coalition Structures to Provide Proper Groups'.pdf

【WWW 2013】Learning to Recommend with Multi-Faceted Trust in Social Networks.pdf

【WWW 2013】Multi-Label Learning with Millions of Labels-Recommending Advertis.pdf

【WWW 2013】Personalized Recommendation via Cross-Domain Triadic Factorization.pdf

【WWW 2013】Profile Deversity in Search and Recommendation.pdf

【WWW 2013】Real-Time Recommendation of Deverse Related Articles.pdf

【WWW 2013】Recommendation for Online Social Feeds by Exploiting User Response.pdf

【WWW 2013】Recommending Collaborators Using Keywords.pdf

【WWW 2013】Signal-Based User Recommendation on Twitter.pdf

【WWW 2013】SoCo- A Social Network Aided Context-Aware Recommender System.pdf

【WWW 2013】Tailored News in the Palm of Your HAND-A Multi-Perspective Transpa.pdf

【WWW 2013】TopRec-Domain-Specific Recommendation through Community Topic Mini.pdf

【WWW 2013】User's Satisfaction in Recommendation Systems for Groups-an .pdf

【WWW 2013】Using Link Semantics to Recommend Collaborations in Academic Socia.pdf

【WWW 2013】Whom to Mention-Expand the Diffusion of Tweets by @ Recommendation.pdf

Recommender+Systems+Handbook.pdf

tutorial.pdf

##各个领域的推荐系统

图书

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视频

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文章

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旅游

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社会网络

  • Facebook
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综合

  • Amazon
  • GetGlue
  • Strands
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##欢迎贡献资源~~待续

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