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Learning Multi-granular Features for Harvesting Knowledge from Free Text

机译:学习用于从自由文本收获知识的多颗粒特征

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Extracting entities and their relations expressed in free text is essential to correct and populate knowledge graphs. Traditional meth-ods assume that only the information of entities benefits the extraction of relations. They view this task as a two-step task, named entity recog-nition (NER) and relation classification (RC). However, the inadequate use of information and the error propagation problem constrain meth-ods following this pipeline fashion. Joint extraction methods are pro-posed to incorporate useful interaction information between the two tasks for improvement, which solve NER and RC simultaneously. Although they have been proved to be superior to pipeline models, their performance is still far from satisfaction. In this paper, we try to combine the idea of data-driven granular cognitive computing and deep learning in joint extraction task. Accordingly, a neural-based joint extraction model named Joint extraction with Multi-granularity Context (JMC) is pro-posed. It explores the multi-granularity context of natural language sen-tences and uses neural networks to learn representations of these context automatically. Experiments results on NYT, a large data set produced by the distant supervision technique, show that JMC achieves comparative results to state-of-the-art methods.
机译:提取实体及其在自由文本中表达的关系对于纠正和填充知识图表是必不可少的。传统的Meth-ods假设实体的信息只有利于关系的提取。它们将此任务视为两步任务,命名实体Recog-nition(ner)和关系分类(RC)。然而,信息使用不足,错误传播问题在此管道时尚之后限制了Meth-OD。接合提取方法被提出,以在两个任务之间结合有用的相互作用信息,以同时解决ner和Rc。虽然他们被证明优于管道模型,但它们的表现仍然远非满意。在本文中,我们尝试将数据驱动的粒度认知计算和联合提取任务中的深度学习结合起来。因此,通过多粒度上下文(JMC)命名为关节提取的神经基关节提取模型被提出。它探讨了自然语言森林的多粒度背景,并使用神经网络自动学习这些上下文的表示。 NYT的实验结果是遥远监督技术产生的大型数据集,表明JMC实现了最先进的方法的比较结果。

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