Entity-relationship extraction is a fine-grained task for constructing a knowledge graph of food public opinion in the field of food public opinion, and it is also an important research topic in the field of current information extraction. This paper aims at the multi-entity-to-relationship problem that often occurs in food public opinion, the entity-relationship types are extracted from the BERT (Bidirectional Encoder Representation from Transformers) network model; In the bidirectional long short-term memory network (BLSTM), the entity-relationship types extracted by BERT model are integrated, and the semantic role attention mechanism based on position awareness is introduced to construct a model BERT-BLSTM-based entity-relationship extraction model for food public opinion at the same time. In this paper, comparative experiments were conducted on the food sentiment data set. The experimental results show that the accuracy of the BERT-BLSTM-based food sentiment entity-relationship extraction model proposed in this paper is 8.7 similar to 13.94 higher than several commonly used deep neural network models on the food sentiment data set, which verifies the rationality and effectiveness of the model proposed in this paper.
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机译:实体关系抽取是食品舆情领域构建食品舆情知识图谱的细粒度任务,也是当前信息抽取领域的重要研究课题。针对食品舆论中经常出现的多实体关系问题,从BERT(Bidirectional Encoder Representation from Transformers)网络模型中提取实体关系类型;在双向长短期记忆网络(BLSTM)中,整合了BERT模型提取的实体关系类型,引入基于位置感知的语义角色注意力机制,同时构建了基于BERT-BLSTM的食品舆情实体关系抽取模型。本文对食品情绪数据集进行了对比实验。实验结果表明,本文提出的基于BERT-BLSTM的食物情感实体关系提取模型在食物情感数据集上的准确率比几种常用的深度神经网络模型高出8.7%和13.94%,验证了本文所提模型的合理性和有效性。
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