Litcius/Paper detail

Hierarchical shared transfer learning for biomedical named entity recognition

Zhaoying Chai, Jin Han, Shenghui Shi, Siyan Zhan, Lin Zhuo, Yu Yang

2022BMC Bioinformatics40 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Biomedical named entity recognition (BioNER) is a basic and important medical information extraction task to extract medical entities with special meaning from medical texts. In recent years, deep learning has become the main research direction of BioNER due to its excellent data-driven context coding ability. However, in BioNER task, deep learning has the problem of poor generalization and instability. RESULTS: we propose the hierarchical shared transfer learning, which combines multi-task learning and fine-tuning, and realizes the multi-level information fusion between the underlying entity features and the upper data features. We select 14 datasets containing 4 types of entities for training and evaluate the model. The experimental results showed that the F1-scores of the five gold standard datasets BC5CDR-chemical, BC5CDR-disease, BC2GM, BC4CHEMD, NCBI-disease and LINNAEUS were increased by 0.57, 0.90, 0.42, 0.77, 0.98 and - 2.16 compared to the single-task XLNet-CRF model. BC5CDR-chemical, BC5CDR-disease and BC4CHEMD achieved state-of-the-art results.The reasons why LINNAEUS's multi-task results are lower than single-task results are discussed at the dataset level. CONCLUSION: Compared with using multi-task learning and fine-tuning alone, the model has more accurate recognition ability of medical entities, and has higher generalization and stability.

Topics & Concepts

Computer scienceTransfer of learningArtificial intelligenceContext (archaeology)GeneralizationTask (project management)Machine learningCoding (social sciences)Multi-task learningDeep learningArtificial neural networkNatural language processingBiologyManagementPaleontologyMathematicsMathematical analysisEconomicsStatisticsTopic ModelingBiomedical Text Mining and OntologiesMachine Learning in Healthcare