Toward Generic Title Generation for Clustered Documents

@inproceedings{Tseng2006TowardGT,
  title={Toward Generic Title Generation for Clustered Documents},
  author={Yuen-Hsien Tseng and Chi-Jen Lin and Hsiu-Han Chen and Yu-I Lin},
  booktitle={AIRS},
  year={2006}
}
A cluster labeling algorithm for creating generic titles based on external resources such as WordNet is proposed. Our method first extracts category-specific terms as cluster descriptors. These descriptors are then mapped to generic terms based on a hypernym search algorithm. The proposed method has been evaluated on a patent document collection and a subset of the Reuters-21578 collection. Experimental results revealed that our method performs as anticipated. Real-case applications of these… CONTINUE READING
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