A Joint Extraction System Based on Conditional Layer Normalization for Health Monitoring
Shi, Binbin; Fan, Rongli; Zhang, Lijuan; Huang, Jie; Xiong, Neal; Vasilakos, Athanasios; Wan, Jian; Zhang, Lei
Peer reviewed, Journal article
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2023Metadata
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Shi, B., Fan, R., Zhang, L., Huang, J., Xiong, N., Vasilakos, A., Wan, J. & Zhang, L. (2023). A Joint Extraction System Based on Conditional Layer Normalization for Health Monitoring. Sensors, 23 (10), Article 4812. https://doi.org/10.3390/s23104812Abstract
Natural language processing (NLP) technology has played a pivotal role in health monitoring as an important artificial intelligence method. As a key technology in NLP, relation triplet extraction is closely related to the performance of health monitoring. In this paper, a novel model is proposed for joint extraction of entities and relations, combining conditional layer normalization with the talking-head attention mechanism to strengthen the interaction between entity recognition and relation extraction. In addition, the proposed model utilizes position information to enhance the extraction accuracy of overlapping triplets. Experiments on the Baidu2019 and CHIP2020 datasets demonstrate that the proposed model can effectively extract overlapping triplets, which leads to significant performance improvements compared with baselines.