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A Research on Overlapping Relationship Extraction Based on Multi-objective Dependency

机译:基于多目标相依性的重叠关系提取研究

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The joint extraction of entity and relation is an important task in information extraction. Previously, most models in entity relationship extraction assumed that the relationship was discrete. Unfortunately, this assumption is often violated. In order to solve the problem of overlapping in the entity relationship, considering the relationship between extraction under the premise of have the features of multiple targets, this paper puts forward a multi-objective depend on the relationship between extraction model, which transforms the relationship extraction task into a sequence-tagged task. The model uses Iterated Dilated Convolutional Neural Network (IDCNN) and BiLSTM to encode the words in order to more fully extract the semantics in the text. First, determine the target entity subject (s), and then predict all corresponding object (o) and relationship (r) according to s. Experiments show that our model is significantly better than the baseline methods.
机译:实体和关系的联合提取是信息提取中的重要任务。以前,大多数实体关系提取模型都假定关系是离散的。不幸的是,这一假设经常被违反。为了解决实体关系重叠的问题,在考虑具有多个目标特征的前提下提取之间的关系,提出了一种基于提取关系的多目标模型,对提取关系进行了转换。任务转换为带有序列标签的任务。该模型使用迭代膨胀卷积神经网络(IDCNN)和BiLSTM对单词进行编码,以便更全面地提取文本中的语义。首先,确定目标实体主题,然后根据s预测所有对应的对象(o)和关系(r)。实验表明,我们的模型明显优于基线方法。

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