Abstract
We present an approach'to text summanzahon that s entirely rooted In the foima'l descr, phon of a classdlcatlon-based model of terrmnologcai knowledge representation and teasorang Text summarlzatlon m considered an operator-hazed transformation process by which knowledge representation structures, as generated by the text understander, are mapped to conceptually condensod representat,on structures fornung a text summary at the representation level The framework we propose offers a variety of subtle parameters on which scalable text summarmatwn can be based I
Keywords
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Publication Info
- Year
- 1997
- Type
- article
- Citations
- 10
- Access
- Closed