Sciweavers

CICLING
2007
Springer

ANERsys: An Arabic Named Entity Recognition System Based on Maximum Entropy

13 years 9 months ago
ANERsys: An Arabic Named Entity Recognition System Based on Maximum Entropy
Abstract. The task of Named Entity Recognition (NER) allows to identify proper names as well as temporal and numeric expressions, in an open-domain text. NER systems proved to be very important for many tasks in Natural Language Processing (NLP) such as Information Retrieval and Question Answering tasks. Unfortunately, the main efforts to build reliable NER systems for the Arabic language have been made in a commercial frame and the approach used as well as the accuracy of the performance are not known. In this paper, we present ANERsys: a NER system built exclusively for Arabic texts based-on n-grams and maximum entropy. Furthermore, we present both the specific Arabic language dependent heuristic and the gazetteers we used to boost our system. We developed our own training and test corpora (ANERcorp) and gazetteers (ANERgazet) to train, evaluate and boost the implemented technique. A major effort was conducted to make sure all the experiments are carried out in the same framework ...
Yassine Benajiba, Paolo Rosso, José-Miguel
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where CICLING
Authors Yassine Benajiba, Paolo Rosso, José-Miguel Benedí
Comments (0)