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LSTMVoter: chemical named entity recognition using a conglomerate of sequence labeling tools

机译:LSTMVoter:使用序列标记工具组合的化学命名实体识别

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摘要

BackgroundChemical and biomedical named entity recognition (NER) is an essential preprocessing task in natural language processing. The identification and extraction of named entities from scientific articles is also attracting increasing interest in many scientific disciplines. Locating chemical named entities in the literature is an essential step in chemical text mining pipelines for identifying chemical mentions, their properties, and relations as discussed in the literature. In this work, we describe an approach to the BioCreative V.5 challenge regarding the recognition and classification of chemical named entities. For this purpose, we transform the task of NER into a sequence labeling problem. We present a series of sequence labeling systems that we used, adapted and optimized in our experiments for solving this task. To this end, we experiment with hyperparameter optimization. Finally, we present LSTMVoter, a two-stage application of recurrent neural networks that integrates the optimized sequence labelers from our study into a single ensemble classifier.
机译:背景化学和生物医学命名实体识别(NER)是自然语言处理中必不可少的预处理任务。从科学文章中识别和提取命名实体也吸引了许多科学学科的兴趣。在文献中查找化学命名实体是化学文本挖掘管道中必不可少的步骤,用于识别文献中讨论的化学提及,其性质和关系。在这项工作中,我们描述了有关生物命名实体的识别和分类的BioCreative V.5挑战的方法。为此,我们将NER的任务转换为序列标记问题。我们提出了一系列序列标记系统,我们在实验中使用,调整和优化了这些序列标记系统以解决该任务。为此,我们尝试了超参数优化。最后,我们介绍了LSTMVoter,这是递归神经网络的两阶段应用程序,它将我们研究中的优化序列标记器集成到单个集合分类器中。

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