Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
865442 | Tsinghua Science & Technology | 2010 | 8 Pages |
Abstract
Event extraction is an important research point in information extraction, which includes two important sub-tasks of event type recognition and event argument recognition. This paper describes a method based on automatic expansion of the event triggers for event type recognition. The event triggers are first extended through a thesaurus to enable the extraction of the candidate events and their candidate types. Then, a binary classification method is used to recognize the candidate event types. This method effectively improves the unbalanced data problem in training models and the data sparseness problem with a small corpus. Evaluations on the ACE2005 dataset give a final F-score of 61.24%, which outperforms traditional methods based on pure machine learning.
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Authors
Bing (秦 å
µ), Yanyan (èµµå¦å¦), Xiao (ä¸ æ), Ting (å æº), Guofu (ç¿å½å¯),