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Dr. Hamada Ali Mohamed Ali Nayel :: Publications:

Title:
Integrating Dictionary Feature into A Deep Learning Model for Disease Named Entity Recognition
Authors: Hamada A. Nayel; H. L. Shashirekha
Year: 2019
Keywords: Disease NER; Deep Learning; LSTM-CRF model
Journal: Forum of Information Retrieval Evaluation (FIRE2019)
Volume: Not Available
Issue: Not Available
Pages: Not Available
Publisher: Not Available
Local/International: International
Paper Link:
Full paper Hamada Ali Mohamed Ali Nayel_dictionary.pdf
Supplementary materials Not Available
Abstract:

In recent years, Deep Learning (DL) models are becoming important due to their demon- strated success at overcoming complex learning problems. DL models have been applied ef- fectively for different Natural Language Processing (NLP) tasks such as part-of-Speech (PoS) tagging and Machine Translation (MT). Disease Named Entity Recognition (Disease-NER) is a crucial task which aims at extracting disease Named Entities (NEs) from text. In this paper, a DL model for Disease-NER using dictionary information is proposed and evaluated on Na- tional Center for Biotechnology Information (NCBI) disease corpus and BC5CDR dataset. Word embeddings trained over general domain texts as well as biomedical texts have been used to represent input to the proposed model. This study also compares two different Segment Rep- resentation (SR) schemes, namely IOB2 and IOBES for Disease-NER. The results illustrate that using dictionary information, pre-trained word embeddings, character embeddings and CRF with global score improves the performance of Disease-NER system.

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