Title :
Collaborative Filtering Using Dual Information Sources
Author :
Cho, Jinhyung ; Kwon, Kwiseok ; Park, Yongtae
Author_Institution :
Seoul Nat. Univ.
Abstract :
Conventional collaborative-filtering methods use only one information source to provide recommendations. Using two sources - similar users and expert users - enables more effective, more adaptive recommendations. Conventional CF methods suffer from a few fundamental limitations such as the cold-start problem, data sparsity problem, and recommender reliability problem. Thus, they have trouble dealing with high-involvement, knowledge-intensive domains such as e-learning video on demand. To overcome these problems, researchers have proposed recommendation techniques such as a hybrid approach combining CF with content-based filtering. Because e-commerce Web sites for e-learning often have various product categories, extracting the many attributes of these categories for content-based filtering is extremely burdensome. So, it might be practical to overcome these limitations by improving the CF method itself.
Keywords :
Internet; computer aided instruction; content-based retrieval; electronic commerce; information filtering; video on demand; Web sites; collaborative filtering; content-based filtering; e-commerce; e-learning video on demand; Collaboration; Educational programs; Electronic learning; Information filtering; Information filters; Motion pictures; Nearest neighbor searches; Psychology; Recommender systems; Video on demand; collaborative filtering; e-learning content; group influence; information source; recommender system;
Journal_Title :
Intelligent Systems, IEEE
DOI :
10.1109/MIS.2007.48