基于自注意的生物医学实体识别与规范化标签联合模型

Dandan Zhou, Tong Liu
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引用次数: 1

摘要

为解决生物医学命名实体识别与归一化联合建模中的误差传播问题,设计联合标签,将实体标签与概念标签结合,对句子中的每个术语进行联合标注,将联合学习任务转化为多类分类问题。设计了基于自注意的生物医学实体识别和规范化标签联合模型,利用预训练模型BioBERT对医学文本进行编码。利用自关注机制提取联合标签信息后,与输入序列信息融合。最后,通过softmax得到最终的联合标签表示。实验结果表明,实体识别和归一化任务在NCBI数据集上的F1值分别达到83.3%和84.5%,在BC5CDR数据集上的F1值分别达到84.2%和86.6%,均优于现有方法。
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Joint model of biomedical entity recognition and normalization labels based on self-attention
To address the error propagation problem of joint modeling of biomedical named entity recognition and normalization, joint label is designed to combine entity labels with concept labels to jointly label each term in the sentence, the joint learning task is transformed into a multiclass classification problem. A joint model of biomedical entity recognition and normalization labels based on self-attention is designed, the pre-training model BioBERT is used to encode the medical text. After extracting the joint label information using the self-attention mechanism, it is fused with the input sequence information. Finally, the final joint label representation is obtained by softmax. The experimental results show that the F1 values of the entity recognition and normalization tasks on the NCBI dataset reach 83.3% and 84.5%, and the F1 values on the BC5CDR dataset reach 84.2% and 86.6%, which are better compared with existing methods.
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20 weeks
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