PASCAL - Pattern Analysis, Statistical Modelling and Computational Learning

Learning the scope of negation in biomedical texts
Roser Morante, Anthony Liekens and Walter Daelemans
In: EMNLP 2008, Honolulu(2008).


n this paper we present a machine learning system that finds the scope of negation in biomedical texts. The system consists of two memory-based engines, one that decides if the tokens in a sentence are negation signals, and another that finds the full scope of these negation signals. Our approach to negation detection differs in two main aspects from existing research on negation. First, we focus on finding the scope of negation signals, instead of determining whether a term is negated or not. Second, we apply supervised machine learning techniques, whereas most existing systems apply rule-based algorithms. As far as we know, this way of approaching the negation scope finding task is novel.

EPrint Type:Conference or Workshop Item (Paper)
Project Keyword:Project Keyword UNSPECIFIED
Subjects:Natural Language Processing
ID Code:4393
Deposited By:Roser Morante
Deposited On:13 March 2009