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Modeling semantics and structure of discussion threads
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International World Wide Web Conference archive
Proceedings of the 18th international conference on World wide web table of contents
Madrid, Spain
POSTER SESSION: Wednesday, April 22, 2009 table of contents
Pages 1103-1104  
Year of Publication: 2009
ISBN:978-1-60558-487-4
Authors
Chen Lin  Fudan University, Beijing, China
Jiang-Ming Yang  Microsoft Research, Asia, Beijing, China
Rui Cai  Microsoft Research, Asia, Beijing, China
Xin-Jing Wang  Microsoft Research, Asia, Beijing, China
Wei Wang  Fudan University, Beijing, China
Lei Zhang  Microsoft Research, Asia, Beijing, China
Sponsor
ACM: Association for Computing Machinery
Publisher
ACM  New York, NY, USA
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ABSTRACT

The abundant knowledge in web communities has motivated the research interests in discussion threads. The dynamic nature of discussion threads poses interesting and challenging problems for computer scientists. Although techniques such as semantic models or structural models have been shown to be useful in a number of areas, they are inefficient in understanding discussion threads due to the temporal dependence among posts in a discussion thread. Such dependence causes that semantics and structure coupled with each other in discussion threads. In this paper, we propose a sparse coding-based model named SMSS to Simultaneously Model Semantic and Structure of discussion threads.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
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C. Chemudugunta, P. Smyth, and M. Steyvers. Modeling general and specific aspects of documents with a probabilistic topic model. Advances in newral information processing systems, 41(6):391--407, 1990.

Collaborative Colleagues:
Chen Lin: colleagues
Jiang-Ming Yang: colleagues
Rui Cai: colleagues
Xin-Jing Wang: colleagues
Wei Wang: colleagues
Lei Zhang: colleagues