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LM-Based Word Embeddings Improve Biomedical Named Entity Recognition: A Detailed Analysis

机译:基于LM的词嵌入可改善生物医学命名实体的识别:详细分析

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Recent studies have shown that contextualized word embeddings outperform other types of embeddings on a variety of tasks. However, there is little research done to evaluate their effectiveness in the biomedical domain under multi-task settings. We derive the contextualized word embeddings from the Flair framework and apply them to the task of biomedical NER on 5 benchmark datasets, yielding major improvements over the baseline and achieving competitive results over the current best systems. We analyze the sources of these improvements, reporting model performances over different combinations of word embeddings, and fine-tuning and casing modes.
机译:最近的研究表明,在各种任务上,上下文化单词嵌入优于其他类型的嵌入。但是,很少有研究评估其在多任务设置下在生物医学领域的有效性。我们从Flair框架衍生出上下文化的词嵌入,并将其应用于5个基准数据集上的生物医学NER的任务,在基线之上进行了重大改进,并在当前最佳系统上取得了竞争性结果。我们分析了这些改进的来源,报告了词嵌入不同组合的模型性能,以及微调和大小写模式。

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