• KDD 2013推荐系统论文


     LCARS: A Location-Content-Aware Recommender System
    Authors: Hongzhi Yin, Peking University; Yizhou Sun, ; Bin Cui, Peking University; Zhiting Hu, ; Ling Chen
    FISM: Factored Item Similarity Models for Top-N Recommender Systems
    Santosh Kabbur, University of Minnesota; George Karypis, University of Minnesota
    Making Recommendations from Multiple Domains
    Wei Chen, National University of Singapore; Wynne Hsu, National University of Singapore; Mong-Li Lee, National University of Singapore
    Combining Latent Factor Model with Location Features for Event-based Group Recommendation
    Wei Zhang, Department of Computer Science; Jianyong Wang, Tsinghua University
    A New Collaborative Filtering Approach for Increasing the Aggregate Diversity of Recommender Systems
    Katja Niemann, Fraunhofer FIT; Martin Wolpers, Fraunhofer Institute for Applied Information Technology
    Silence is also evidence: Interpreting dwell time for recommendation from Psychological Perspective
    Peifeng Yin, Pennsylvania State University; Ping Luo, HP Lab; Wang-Chien Lee, ; Min Wang, Google Research
     Learning Geographical Preferences for Point-of-Interest Recommendation
    Bin Liu, Rutgers Univ; Yanjie Fu, Rutgers University; ZIjun Yao, Rutgers Univ; Hui Xiong, Rutgers, the State University of New Jersey
    Collaborative Matrix Factorization with Multiple Similarities for Predictin Drug-Target Interactions
    Xiaodong Zheng, Fudan University; Hao Ding, Fudan University; Hiroshi Mamitsuka, Kyoto University; Shanfeng Zhu, Fudan University

    有20多篇是有关社会网分析的

    Unsupervised Link Prediction Using Aggregative Statistics on Heterogeneous Social Networks
    Tsung-Ting Kuo, National Taiwan University; Rui Yan, Peking University; Yu-Yang Huang, National Taiwan University; Perng-Hwa Kung, National Taiwan University; Shou-De Lin, National Taiwan University
     Link Prediction with Social Vector Clocks
    Conrad Lee, University College Dublin; Bobo Nick, Konstanz UniversitŠt; Ulrik Brandes, Konstanz UniversitŠt; P‡draig Cunningham, University College Dublin
  • 相关阅读:
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    Chapter 12. Classes
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    Chapter 10. Associative Containers
    Chapter 9. Sequential Containers
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  • 原文地址:https://www.cnblogs.com/guolei/p/3486550.html
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