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Biomedical Event Extraction Using Convolutional Neural Networks and Dependency Parsing

机译:使用卷积神经网络和依存分析的生物医学事件提取

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Event and relation extraction are central tasks in biomedical text mining. Where relation extraction concerns the detection of semantic connections between pairs of entities, event extraction expands this concept with the addition of trigger words, multiple arguments and nested events, in order to more accurately model the diversity of natural language. In this work we develop a convolutional neural network that can be used for both event and relation extraction. We use a linear representation of the input text, where information is encoded with various vector space embeddings. Most notably, we encode the parse graph into this linear space using dependency path embeddings. We integrate our neural network into the open source Turku Event Extraction System (TEES) framework. Using this system, our machine learning model can be easily applied to a large set of corpora from e.g. the BioNLP, DDI Extraction and BioCreative shared tasks. We evaluate our system on 12 different event, relation and NER corpora, showing good general-izability to many tasks and achieving improved performance on several corpora.
机译:事件和关系提取是生物医学文本挖掘中的核心任务。在关系提取涉及实体对之间语义连接的检测的地方,事件提取通过添加触发词,多个参数和嵌套事件来扩展此概念,以便更准确地建模自然语言的多样性。在这项工作中,我们开发了可用于事件和关系提取的卷积神经网络。我们使用输入文本的线性表示,其中信息使用各种向量空间嵌入进行编码。最值得注意的是,我们使用依赖路径嵌入将解析图编码到此线性空间中。我们将神经网络集成到开源的Turku事件提取系统(TEES)框架中。使用此系统,我们的机器学习模型可以轻松地应用于来自例如BioNLP,DDI提取和BioCreative共享任务。我们在12个不同的事件,关系和NER语料库上评估了我们的系统,显示了对许多任务的良好通用性,并在多个语料库上实现了改进的性能。

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