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Multi-Level Attention Based BLSTM Neural Network for Biomedical Event Extraction

机译:基于多层注意力的BLSTM神经网络用于生物医学事件提取

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Biomedical event extraction is an important and challenging task in Information Extraction, which plays a key role for medicine research and disease prevention. Most of the existing event detection methods are based on shallow machine learning methods which mainly rely on domain knowledge and elaborately designed features. Another challenge is that some crucial information as well as the interactions among words or arguments may be ignored since most works treat words and sentences equally. Therefore, we employ a Bidirectional Long Short Term Memory (BLSTM) neural network for event extraction, which can skip handcrafted complex feature extraction. Furthermore, we propose a multi-level attention mechanism, including word level attention which determines the importance of words in a sentence, and the sentence level attention which determines the importance of relevant arguments. Finally, we train dependency word embeddings and add sentence vectors to enrich semantic information. The experimental results show that our model achieves an F-score of 59.61% on the commonly used dataset (MLEE) of biomedical event extraction, which outperforms other state-of-the-art methods.
机译:生物医学事件提取是信息提取中一项重要且具有挑战性的任务,在医学研究和疾病预防中起着关键作用。现有的大多数事件检测方法都是基于浅层机器学习方法,这些方法主要依靠领域知识和精心设计的功能。另一个挑战是,由于大多数作品都会平等地对待单词和句子,因此一些关键信息以及单词或自变量之间的交互作用可能会被忽略。因此,我们采用双向长期短时记忆(BLSTM)神经网络进行事件提取,可以跳过手工进行的复杂特征提取。此外,我们提出了一种多层次的注意力机制,包括决定句子中单词重要性的单词层次注意力和决定相关论点重要性的句子层次注意力。最后,我们训练依赖词嵌入,并添加句子向量以丰富语义信息。实验结果表明,在生物医学事件提取的常用数据集(MLEE)上,我们的模型的F分数达到59.61%,优于其他最新方法。

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