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abellogin recommender [55 articles]

Recent papers added to abellogin library classified by the tag recommender. You can also see everyone's recommender.
  • Unified relevance models for rating prediction in collaborative filtering
    ACM Trans. Inf. Syst., Vol. 26, No. 3. (2008), pp. 1-42.
    by Jun Wang, Arjen P de Vries, Marcel JT Reinders
  • notes Unifying user-based and item-based collaborative filtering approaches by similarity fusion
    (2006), pp. 501-508.
    by Jun Wang, Arjen P de Vries, Marcel JT Reinders
  • notes Hierarchical Language Models for Expert Finding in Enterprise Corpora
    (2006), pp. 599-608.
    by Desislava Petkova, Bruce W Croft
  • notes Confidence Displays and Training in Recommender Systems
    (2003)
    by Sean M Mcnee, Shyong K Lam, Catherine Guetzlaff, Joseph A Konstan, John Riedl
    edited by Matthias Rauterberg, Marino Menozzi, Janet Wesson, Matthias Rauterberg, Marino Menozzi, Janet Wesson
  • notes Hybrid Recommender Systems with Case-Based Components
    Advances in Case-Based Reasoning (2004), pp. 91-105.
    by Robin Burke
  • notes Collaborative Filtering Based on the Entropy Measure
    E-Commerce Technology and the 4th IEEE International Conference on Enterprise Computing, E-Commerce, and E-Services, 2007. CEC/EEE 2007. The 9th IEEE International Conference on (2007), pp. 203-210.
  • notes Research on Entropy-based Collaborative Filtering Algorithm
    (2007), pp. 213-220.
    by Chunhui Piao, Jing Zhao, Jun Feng
  • notes Collaborative filtering with maximum entropy
    Intelligent Systems, IEEE, Vol. 19, No. 6. (2004), pp. 40-47.
    by D Pavlov, E Manavoglu, CL Giles, DM Pennock
  • Group recommender systems: a critiquing based approach
    (2006), pp. 267-269.
    by Kevin Mccarthy, Maria Salam&\#243;, Lorcan Coyle, Lorraine Mcginty, Barry Smyth, Paddy Nixon
  • A Social Network Based Approach to Personalized Recommendation of Participatory Media Content
    (2008)
    by A Seth, J Zhang
  • Facing Uncertainty in Link Recommender Systems
    by Jean-Yves Delort, Bernadette Bouchon-Meunier
    posted to not-found recommender uncertainty by abellogin on 2008-08-27 09:15:39 as ****
  • UTA-Rec: A Recommender System based on Multiple Criteria Analysis
    (2008)
    by Kleanthi Lakiotaki, Nikolaos Matsatsinis
    posted to decision-making not-found recommender by abellogin on 2008-08-27 09:13:44 as *****
  • Dynamically-optimized context in recommender systems
    (2005), pp. 265-272.
    by Ghim-Eng Yap, Ah-Hwee Tan, Hwee-Hwa Pang
    posted to context recommender by abellogin on 2008-08-27 08:36:02 as ***
  • Applying collaborative filtering techniques to movie search for better ranking and browsing
    (2007), pp. 550-559.
    by Seung-Taek Park, David M Pennock
  • Amazon.com Recommendations: Item-to-Item Collaborative Filtering
    IEEE Internet Computing, Vol. 7, No. 1. (January 2003), pp. 76-80.
    by Greg Linden, Brent Smith, Jeremy York
  • Evaluating collaborative filtering recommender systems
    ACM Trans. Inf. Syst., Vol. 22, No. 1. (January 2004), pp. 5-53.
    by Jonathan L Herlocker, Joseph A Konstan, Loren G Terveen, John T Riedl
  • notes Conversational Collaborative Recommendation An Experimental Analysis
    Artificial Intelligence Review, Vol. 24, No. 3-4. (November 2005), pp. 301-318.
    by Rachael Rafter, Barry Smyth
  • News@hand: A Semantic Web Approach to Recommending News
    Adaptive Hypermedia and Adaptive Web-Based Systems (2008), pp. 279-283.
    by Iván Cantador, Alejandro Bellogín, Pablo Castells
  • Hybrid Recommender Systems: Survey and Experiments
    User Modeling and User-Adapted Interaction, Vol. 12, No. 4. (November 2002), pp. 331-370.
    by Robin Burke
  • notes EigenRank: a ranking-oriented approach to collaborative filtering
    (2008), pp. 83-90.
    by Nathan N Liu, Qiang Yang
  • notes Empirical Analysis of Predictive Algorithms for Collaborative Filtering
    (July 1998), pp. 43-52.
    by John S Breese, David Heckerman, Carl Kadie
  • notes Learning and Revising User Profiles: The Identification ofInteresting Web Sites
    Mach. Learn., Vol. 27, No. 3. (June 1997), pp. 313-331.
    by Michael Pazzani, Daniel Billsus
  • notes A maximum entropy web recommendation system: combining collaborative and content features
    (2005), pp. 612-617.
    by Xin Jin, Yanzan Zhou, Bamshad Mobasher
  • notes Modeling user behavior in recommender systems based on maximum entropy
    (2007), pp. 1281-1282.
    by Tomoharu Iwata, Kazumi Saito, Takeshi Yamada
  • notes A Web Recommendation System Based on Maximum Entropy
    (2005), pp. 213-218.
    by Xin Jin, Bamshad Mobasher, Yanzan Zhou
  • A System based on Multiple Criteria Analysis for Scientific Paper Recommendation
  • CROC: A New Evaluation Criterion for Recommender Systems: World Wide Web Electronic Commerce, Security and Privacy (Guest Editors: Mary Ellen Zurko and Amy Greenwald)
    Electronic Commerce Research, Vol. 5, No. 1., 51.
    by Andrew I Schein, Alexandrin Popescul, Lyle H Ungar, David M Pennock
    posted to evaluation recommender by abellogin on 2008-07-09 20:55:51 as ***** along with 1 person macle
  • Recommender systems using linear classifiers
    J. Mach. Learn. Res., Vol. 2 (2002), pp. 313-334.
    by Tong Zhang, Vijay S Iyengar
    posted to machine-learning recommender by abellogin on 2008-06-24 12:16:52 as read
  • Toward the Next Generation of Recommender Systems: A Survey of the State-of-the-Art and Possible Extensions
    IEEE Transactions on Knowledge and Data Engineering, Vol. 17, No. 6. (June 2005), pp. 734-749.
    by Gediminas Adomavicius, Alexander Tuzhilin
  • notes Average and Majority Gates: Combining Information by Means of Bayesian Networks
    Symbolic and Quantitative Approaches to Reasoning with Uncertainty (2007), pp. 572-584.
    by Luis de Campos, Juan Fernández-Luna, Juan Huete, Miguel Rueda-Morales
  • PolyLens: a recommender system for groups of users
    (2001), pp. 199-218.
    by Mark O'Connor, Dan Cosley, Joseph A Konstan, John Riedl
  • Improving Ontology Recommendation and Reuse in WebCORE by Collaborative Assessments
    (May 2007)
    by Iván Cantador, Miriam Fernández, Pablo Castells
    posted to ontology recommender uam by abellogin on 2008-05-12 11:26:38 as ****
  • Enriching Ontological User Profiles with Tagging History for Multi-Domain Recommendations
    (June 2008)
    by Iván Cantador, Martin Szomszor, Harith Alani, Miriam Fernández, Pablo Castells
    posted to ontology recommender tag uam user-model by abellogin on 2008-05-12 11:20:55 as ****
  • Application of dimensionality reduction in recommender systems--a case study
    (2000)
    by B Sarwar, G Karypis, J Konstan, J Riedl
  • notes Folksonomies, the Semantic Web, and Movie Recommendation
    by Martin Szomszor, Ciro Cattuto, Harith Alani, Kieron O’hara, Andrea Baldassarri, Vittorio Loreto, Vito DP Servedio
  • notes Recommendation as Classification: Using Social and Content-Based Information in Recommendation
    (1998), pp. 714-720.
    by Chumki Basu, Haym Hirsh, William W Cohen
  • notes Language Models for Financial News Recommendation
    (2000), pp. 389-396.
    by Victor Lavrenko, Matthew D Schmill, Dawn Lawrie, Paul Ogilvie, David Jensen, James Allan
  • Contextual Recommendation
    From Web to Social Web: Discovering and Deploying User and Content Profiles (2007), pp. 142-160.
    by Sarabjot Anand, Bamshad Mobasher
  • Does a one-size recommendation system fit all? the effectiveness of collaborative filtering based recommendation systems across different domains and search modes
    ACM Trans. Inf. Syst., Vol. 26, No. 1. (November 2007)
    by Il Im, Alexander Hars
  • Multilayered Semantic Social Network Modeling by Ontology-Based User Profiles Clustering: Application to Collaborative Filtering
    Managing Knowledge in a World of Networks (2006), pp. 334-349.
    by Iván Cantador, Pablo Castells
  • Combining Content-Based and Collaborative Filters in an Online Newspaper
    (1999)
  • How to Communicate Recommendations? Evaluation of an Adaptive Annotation Technique
    Vol. 3585 (2005), pp. 1030-1033.
    by Federica Cena, Cristina Gena, Sonia Modeo
    edited by Maria F Costabile, Fabio Paternò, Maria F Costabile, Fabio Paternò
    posted to recommender by abellogin on 2008-01-04 11:03:04 as **
  • Online video recommendation based on multimodal fusion and relevance feedback
    (2007), pp. 73-80.
    by Bo Yang, Tao Mei, Xian-Sheng Hua, Linjun Yang, Shi-Qiang Yang, Mingjing Li
  • notes Explaining collaborative filtering recommendations
    (2000), pp. 241-250.
    by Jonathan L Herlocker, Joseph A Konstan, John Riedl
  • A Graph-based Recommender System for Digital Library
    JCDL '02 (July 13-17 2002), pp. 65-73.
    by Zan Huang, Wingyan Chung, Thian-Huat Ong, Hsinchun Chen
  • Don't look stupid: avoiding pitfalls when recommending research papers
    (2006), pp. 171-180.
    by Sean M Mcnee, Nishikant Kapoor, Joseph A Konstan
  • Recommending papers by mining the web
    (1999)
  • Context-aware, Ontology-based Recommendations
    (2006), pp. 98-104.
    by Christian Rack, Stefan Arbanowski, Stephan Steglich
  • Combining collaborative filtering with personal agents for better recommendations
    (1999), pp. 439-446.
    by Nathaniel Good, Ben J Schafer, Joseph A Konstan, Al Borchers, Badrul Sarwar, Jon Herlocker, John Riedl
  • Collaborative Filtering Recommender Systems
    The Adaptive Web (2007), pp. 291-324.
    by J Schafer, Dan Frankowski, Jon Herlocker, Shilad Sen
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