Multi-granularity Feature Fusion for Biomedical Named Entity Recognition and Normalization
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    Abstract:

    To extract rich entity information and normalized expressions from biomedical literature, this study proposes a multi-granularity feature fusion approach for biomedical named entity recognition and normalization (MGFFA). By integrating character-level, word-level, and concept-level textual information, the model significantly enhances its learning capability. It also incorporates a memory bank for storing and synthesizing information from different levels to achieve a deeper understanding of the complex relationships between entities and their normalized labels. With the integration of pre-trained models, MGFFA captures not only coarse-grained semantic representations of text but also conducts detailed analysis at the morphological level, thereby comprehensively improving the recognition accuracy of long-span entities. Experimental results on the NCBI and NC5CDR datasets demonstrate that the model outperforms other baseline models overall.

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刘彤,石昌岭,倪维健.面向生物医学命名实体识别和规范化的多粒度特征融合.计算机系统应用,2024,33(11):237-246

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History
  • Received:April 01,2024
  • Revised:April 29,2024
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  • Online: September 27,2024
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