학술논문

Multi-Task Learning for Chemical Named Entity Recognition with Chemical Compound Paraphrasing / 化学分野の固有表現抽出のための化合物名を含む文の言い換え学習を用いたマルチタスク学習手法
Document Type
Journal Article
Source
自然言語処理 / Journal of Natural Language Processing. 2022, 29(2):294
Subject
Multi-task Learning
Named Entity Recognition
Paraphrasing
マルチタスク学習
固有表現抽出
言い換え
Language
Japanese
ISSN
1340-7619
2185-8314
Abstract
We propose a method to improve named entity recognition (NER) for chemical compounds using multi-task learning by jointly training a chemical NER model and a chemical compound name paraphrase model. Our method enables the NER model to capture chemical compound paraphrases by sharing the parameters of NER and the character embeddings based on long short-term memories (LSTM) with the paraphrase model. Experimental results on BioCreative IV CHEMDNER show that our method learning paraphrase contributes to improved accuracy.