A BIDIRECTIONAL ENCODER-DECODER MODEL WITH ATTENTIONMECHANISM FOR NESTED NAMED ENTITY RECOGNITION
Journal: International Journal of Advanced Research (Vol.12, No. 03)Publication Date: 2024-03-20
Authors : Samassi Adama Brou Konan Marcellin Kouame Appoh; Toure Kidjegbo Augustin;
Page : 382-394
Keywords : Attention Mechanism Fine-Tuning Named Entity Recognition Sequence Labeling;
Abstract
Named entity recognition is a fundamental task for several natural language processing applications. It consists in identifying mentions of named entities in a text, then classifying them according to predefined entity types. Most labeling methods for this task use a label to recognize flat named entities because they belong to a single entity type. Therefore, they cannot recognize named entities that belong to multiple entity types.In this work, we concatenated all the labels of a word of a named entity into a joint in order to recognize flat or nested named entities. Then, we proposed a bidirectional encoder-decoder model with attention mechanism that uses this joint label to fine-tune a pre-trained language model for named entity recognition.We experimented our method on GENIA (a nested named entity dataset) and on two flat named entity datasets: CoNLL-2003 and i2b2 2010. Using the BioBERT model, our method achieved an F1 score of 78.85% on the GENIA dataset, 93.22% and 87.51% on CoNLL-2003 and i2b2 2010 respectively. These results show that our method can effectively recognize flat named entities as well as nested named entities.
Other Latest Articles
- IMPACT OF SOCIOECONOMIC STATUS ON ANTHROPOMETRIC MEASUREMENTS OF PATIENTS WITH CEREBRAL PALSY
- PROTEIN ANALYSIS FROM DIFFERENT BODY TISSUES OF THREE IMPORTANT COMMERCIAL RACES OF MULBERRY SILKWORM BOMBYXMORI(L)BY USING BRADFORD METHOD
- LIVER FIBROSIS AND STEATOSIS IN PATIENTS WITH TYPE 2 DIABETES MELLITUS: A TRANSIENT ELASTOGRAPHY STUDY
- A CASE REPORT OF MYELOMENIGOCELE WITH ARNOLD CHIARI MALFORMATIN II-HIGHLIGHTING THE IMPORTANCE OF ANEMIA MUKTH BHARATH PROGRAMME
- ASSESSMENT OFAWARENESS, KNOWLEDGE AND IMPACT OF THEEVOLVING ARTIFICIAL INTELLIGENCE TECHNOLOGY AMONGST THE PHASE ISTUDENTS OF MEDICAL COLLEGE
Last modified: 2024-04-04 11:54:14