eprintid: 1611 rev_number: 11 eprint_status: archive userid: 21 dir: disk0/00/00/16/11 datestamp: 2016-06-02 01:46:40 lastmod: 2016-06-02 01:46:40 status_changed: 2016-06-02 01:46:40 type: conference_item metadata_visibility: show creators_name: Vu, Ngoc Trinh creators_name: Tran, Van Hien creators_name: Le, Hoang Quynh creators_name: Tran, Mai Vu creators_id: vutm@vnu.edu.vn title: A Method for Building a Labeled Named Entity Recognition Corpus Using Ontologies ispublished: pub subjects: IT divisions: fac_fit abstract: Building a labeled corpus which contains sufficient data and good coverage along with solving the problems of cost, effort and time is a popular research topic in natural language processing. The problem of constructing automatic or semi-automatic training data has become a matter of the research community. For this reason, we consider the problem of building a corpus in phenotype entity recognition problem, class-specific feature detectors from unlabeled data based on over 10260 unique terms (more than 15000 synonyms) describing human phenotypic features in the Human Phenotype Ontology (HPO) and about 9000 unique terms (about 24000 synonyms) of mouse abnormal phenotype descriptions in the Mammalian Phenotype Ontology. This corpus evaluated on three corpora: Khordad corpus, Phenominer 2012 and Phenominer 2013 corpora with Maximum Entropy and Beam Search method. The performance is good for three corpora, with F-scores of 31.71% and 35.77% for Phenominer 2012 corpus and Phenominer 2013 corpus; 78.36% for Khordad corpus. date: 2015 date_type: published full_text_status: none pres_type: paper pagerange: 141-149 event_title: KSE: the 2015 International Conference on Knowledge and Systems Engineering event_location: Ho Chi Minh city, Vietnam event_dates: 8-10 October 2015 event_type: conference refereed: TRUE citation: Vu, Ngoc Trinh and Tran, Van Hien and Le, Hoang Quynh and Tran, Mai Vu (2015) A Method for Building a Labeled Named Entity Recognition Corpus Using Ontologies. In: KSE: the 2015 International Conference on Knowledge and Systems Engineering, 8-10 October 2015, Ho Chi Minh city, Vietnam.