Using rich social media information for music recommendation via hypergraph model

@article{Tan2011UsingRS,
  title={Using rich social media information for music recommendation via hypergraph model},
  author={Shulong Tan and Jiajun Bu and Chun Chen and Bin Xu and C. Wang and Xiaofei He},
  journal={ACM Trans. Multim. Comput. Commun. Appl.},
  year={2011},
  volume={7},
  pages={22}
}
There are various kinds of social media information, including different types of objects and relations among these objects, in music social communities such as Last.fm and Pandora. This information is valuable for music recommendation. However, there are two main challenges to exploit this rich social media information: (a) There are many different types of objects and relations in music social communities, which makes it difficult to develop a unified framework taking into account all objects… Expand
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