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Entity relationship extraction based on bi-channel neural network

机译:基于双通道神经网络的实体关系提取

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It is of extremely important research value to identify the hidden relationship between the entities and extracted entities in this paper. Based on the two-channel convolutional neural network, the bi-directional long-short term memory network and multi-head attention mechanism have been added by this paper, and a relational extraction model of the two- channel neural network has been proposed. After the training of word vector, the resulting feature fusion is further classified, and finally the experimental verification is conducted on the SemEval-2010 Task 8 data set. The validation results have shown that this method has a good relationship extraction effect.
机译:在本文中确定实体和提取实体之间的隐藏关系是极为重要的研究价值。基于双通道卷积神经网络,通过本文添加了双向长短短期存储器网络和多主题注意机制,并提出了双通道神经网络的关系提取模型。在训练Word Vector后,得到的特征融合进一步分类,最后在Semeval-2010任务8数据集上进行实验验证。验证结果表明,该方法具有良好的关系提取效果。

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