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Comparison of Named Entity Recognition models based on Neural Network in Biomedical

机译:基于生物医学神经网络的命名实体识别模型的比较

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The need of automated information extraction increases with the increase in biomedical text. Named entity recognition is one of the core tasks in automatic information extraction. Performing named entity recognition tasks are quite challenging in biomedical field. These challenges include limited availability of annotated datasets and misclassification of entities having multiple meanings. Many Neural Network and deep learning-based models are developed for overcoming these challenges and for increasing the performance of named entity recognition tasks. This paper compares different models based on neural network architecture. The performance of these models is compared on JNLPBA dataset. The results show that Long short-term memory - conditional random field model with Wiki PubMed-PMC embeddings has outperformed other models by achieving highest precision and F1-score. CollaboNet model achieves the highest recall. Further analysis is needed to explore and compare the tools for performing named entity tasks in biomedical field.
机译:随着生物医学文本的增加,自动信息提取的需求增加。命名实体识别是自动信息提取中的核心任务之一。执行命名实体识别任务在生物医学领域是非常具有挑战性的。这些挑战包括有限的注释数据集和具有多种含义的实体的错误分类。为克服这些挑战和提高命名实体识别任务的性能而开发了许多神经网络和基于深度学习的模型。本文比较了基于神经网络架构的不同模型。在JNLPBA数据集中比较了这些模型的性能。结果表明,长短期记忆 - 与维基考研-PMC的嵌入条件随机域模型已经达到最高的精度和F1-得分优于其他车型。 Collabonet模型达到最高的召回。需要进一步分析来探索和比较生物医学领域的命名实体任务的工具。

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