Improving mention detection robustness to noisy input
Radu Florian, John F. Pitrelli, et al.
EMNLP 2010
This paper presents a fully statistical approach to Arabic mention detection and chaining system, built around the maximum entropy principle. The presented system takes a cascade approach to processing an input document, by first detecting mentions in the document and then chaining the identified mentions into entities. Both system components use a common maximum entropy framework, which allows the integration of a large array of feature types, including lexical, morphological, syntactic, and semantic features. Arabic offers additional challenges for this task (when compared with English, for example), as segmentation is a needed processing step, so one can correctly identify and resolve enclitic pronouns. The system presented has obtained very competitive performance in the automatic content extraction (ACE) evaluation program. © 2009 IEEE
Radu Florian, John F. Pitrelli, et al.
EMNLP 2010
Tahira Naseem, Austin Blodgett, et al.
NAACL 2022
Xiaoqiang Luo
NAACL 2007
Imed Zitouni, Ruhi Sarikaya
Computer Speech and Language