The Combination of CNN, RNN, and DNN for Relation Extraction

Yunzhou Li
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Abstract

Relation extraction, which is a subtask of NLP (natural language processing) field, its target is to identify the entities in texts and extract the relation between entities. Previous works prove that neural networks are feasible for relation extraction. CNN (convolutional neural networks) and LSTM (long short-term memory) are two majority models used in relation extraction. Further research shows that the combination of CNN and LSTM has a better performance. Inspired by the solution of LVCSR (Large-Vocabulary-Continuous-Speech-Recognition), another task in the NLP field, we propose adding DNN after the combination of CNN and LSTM. This model achieves a better effect on the precision-recall curve than the previous model.
结合CNN、RNN和DNN进行关系提取
关系抽取是自然语言处理(NLP)领域的一个子任务,其目标是识别文本中的实体并提取实体之间的关系。已有的研究证明,神经网络在关系提取方面是可行的。卷积神经网络(CNN)和长短期记忆(LSTM)是关系提取中常用的两种模型。进一步的研究表明,CNN与LSTM的结合具有更好的性能。受NLP领域另一项任务LVCSR (Large-Vocabulary-Continuous-Speech-Recognition)解决方案的启发,我们提出将CNN和LSTM结合后加入DNN。该模型在查准率-查全率曲线上取得了较好的效果。
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