Collaborative filtering

Results: 592



#Item
11On Sampling Strategies for Neural Network-based Collaborative Filtering Ting Chen Yizhou Sun

On Sampling Strategies for Neural Network-based Collaborative Filtering Ting Chen Yizhou Sun

Add to Reading List

Source URL: www.hongliangjie.com

- Date: 2017-06-11 18:22:40
    12Binary Principal Component Analysis in the Netflix Collaborative Filtering Task

    Binary Principal Component Analysis in the Netflix Collaborative Filtering Task

    Add to Reading List

    Source URL: www.lkozma.net

    - Date: 2015-12-10 15:51:12
      13The Sample Complexity of Online One-Class Collaborative Filtering  Reinhard Heckel 1 Kannan Ramchandran 1 Abstract We consider the online one-class collaborative

      The Sample Complexity of Online One-Class Collaborative Filtering Reinhard Heckel 1 Kannan Ramchandran 1 Abstract We consider the online one-class collaborative

      Add to Reading List

      Source URL: www.reinhardheckel.com

      - Date: 2018-02-26 02:19:13
        14Using knowledge components for collaborative filtering in adaptive tutoring systems Peter Halkier Nicolajsen Barbara Plank

        Using knowledge components for collaborative filtering in adaptive tutoring systems Peter Halkier Nicolajsen Barbara Plank

        Add to Reading List

        Source URL: www.educationaldatamining.org

        - Date: 2015-05-23 23:20:44
          15“You Might Also Like:” Privacy Risks of Collaborative Filtering Joseph A. Calandrino1 , Ann Kilzer2 , Arvind Narayanan3 , Edward W. Felten1 , and Vitaly Shmatikov2 1  2

          “You Might Also Like:” Privacy Risks of Collaborative Filtering Joseph A. Calandrino1 , Ann Kilzer2 , Arvind Narayanan3 , Edward W. Felten1 , and Vitaly Shmatikov2 1 2

          Add to Reading List

          Source URL: www.cs.utexas.edu

          - Date: 2011-03-09 17:26:37
            16Journal of Machine Learning Research656  Submitted 3/08; Revised 11/08; Published 3/09 Scalable Collaborative Filtering Approaches for Large Recommender Systems

            Journal of Machine Learning Research656 Submitted 3/08; Revised 11/08; Published 3/09 Scalable Collaborative Filtering Approaches for Large Recommender Systems

            Add to Reading List

            Source URL: www.jmlr.org

            - Date: 2009-03-04 11:46:08
              17Item-Based Collaborative Filtering Recommendation Algorithms Badrul Sarwar, George Konstan, 	 
Karypis,

              Item-Based Collaborative Filtering Recommendation Algorithms Badrul Sarwar, George Konstan,    Karypis,

              Add to Reading List

              Source URL: files.grouplens.org

              - Date: 2002-09-26 13:21:25
                18University of Li`ege Department of Electrical Engineering and Computer Science Collaborative filtering Scalable approaches using restricted Boltzmann machines

                University of Li`ege Department of Electrical Engineering and Computer Science Collaborative filtering Scalable approaches using restricted Boltzmann machines

                Add to Reading List

                Source URL: www.montefiore.ulg.ac.be

                - Date: 2014-07-22 03:55:23
                  19Sherlock: Sparse Hierarchical Embeddings for Visually-aware One-class Collaborative Filtering Ruining He, Chunbin Lin, Jianguo Wang, Julian McAuley University of California, San Diego {r4he, chunbinlin, csjgwang, jmcaule

                  Sherlock: Sparse Hierarchical Embeddings for Visually-aware One-class Collaborative Filtering Ruining He, Chunbin Lin, Jianguo Wang, Julian McAuley University of California, San Diego {r4he, chunbinlin, csjgwang, jmcaule

                  Add to Reading List

                  Source URL: cseweb.ucsd.edu

                  - Date: 2016-04-20 12:31:19
                    20Mixed Collaborative and Content-Based Filtering with User-Contributed Semantic Features. Matthew Garden and Gregory Dudek McGill University Centre for Intelligent Machines 3480 University St, Montr´eal, Qu´ebec, Canada

                    Mixed Collaborative and Content-Based Filtering with User-Contributed Semantic Features. Matthew Garden and Gregory Dudek McGill University Centre for Intelligent Machines 3480 University St, Montr´eal, Qu´ebec, Canada

                    Add to Reading List

                    Source URL: www.cim.mcgill.ca

                    - Date: 2006-04-25 12:36:42