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Biomedical event trigger detection by dependency-based word embedding

机译:通过基于依赖项的单词嵌入进行生物医学事件触发检测

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Biomedical events can reveal crucial processes in biomedical research. As an important step in biomedical event extraction, biomedical event trigger detection has become a research hotspot. Traditional machine learning methods, which aim to manually design powerful features fed to the classifiers, greatly depend on the understanding of the specific task. In this paper, we propose an approach to automatically learn good features from raw input without manual intervention. The approach is based on dependency-based word embedding and first learns dependency-based word embedding from all available PubMed abstracts. The word embedding contains rich functional and semantic information. Then neural network architecture is used to learn better feature representation based on raw dependency-based word embedding. Meanwhile, we dynamically adjust the embedding while training for adapting to the trigger classification task. Finally, softmax classifier labels the examples by specific trigger class using the features learned by the model. The experimental results show that our approach achieves a micro F1 score of 78.27% and a macro F1 score of 76.94% in significant trigger classes, and performs better than baseline methods. In addition, we can achieve the semantic distributed representation of every trigger word.
机译:生物医学事件可以揭示生物医学研究中的关键过程。作为生物医学事件提取的重要步骤,生物医学事件触发检测已成为研究热点。传统的机器学习方法旨在手动设计提供给分类器的强大功能,这在很大程度上取决于对特定任务的理解。在本文中,我们提出了一种无需手动干预即可自动从原始输入中学习良好功能的方法。该方法基于基于依赖项的词嵌入,并且首先从所有可用的PubMed摘要中学习基于依赖项的词嵌入。单词嵌入包含丰富的功能和语义信息。然后使用神经网络体系结构基于基于原始依赖关系的词嵌入来学习更好的特征表示。同时,我们在训练时动态调整嵌入,以适应触发分类任务。最后,softmax分类器使用模型学习的功能按特定的触发器类标记示例。实验结果表明,我们的方法在重要的触发类别中达到了78.27%的微F1得分和76.94%的宏观F1得分,并且比基线方法表现更好。另外,我们可以实现每个触发词的语义分布式表示。

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