Relation Extraction via Position-Enhanced Convolutional Neural Network

Weiwei Shi, Sheng Gao
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引用次数: 5

Abstract

Recently, deep neural network based methods have been widely used in relation extraction, which is an important task for knowledge base population, question answering and other natural language applications, to learn proper features from entities pairs and other sentence parts to extract relations from text. As a kind of important information, the value of position is always been underestimated, which causes a low weight of position information in various models and finally hurts the performance of relation extraction task. To alleviate this issue, we propose a position-enhanced embedding model based on convolutional neural network. In this model, we split the sentence representation into three parts based on the entity pairs in the sentence, and use three independent convolutional networks to learn features. Furthermore, we concatenate the output from different branches and employ a softmax layer to compute the probability for each relation. Experimental results on wildly used datasets achieve considerable improvements on relation extraction as compared with baselines, which shows that our proposed model can make full use of position information.
基于位置增强卷积神经网络的关系提取
近年来,基于深度神经网络的方法广泛应用于关系提取,从实体对和其他句子部分中学习合适的特征,从文本中提取关系,是知识库总体、问答等自然语言应用的重要任务。位置信息作为一种重要的信息,其价值往往被低估,导致位置信息在各种模型中的权重偏低,最终影响了关系提取任务的性能。为了解决这个问题,我们提出了一种基于卷积神经网络的位置增强嵌入模型。在该模型中,我们根据句子中的实体对将句子表示分成三部分,并使用三个独立的卷积网络来学习特征。此外,我们将不同分支的输出连接起来,并使用softmax层来计算每个关系的概率。在广泛使用的数据集上的实验结果表明,与基线相比,我们的模型在关系提取方面有了很大的提高,这表明我们的模型可以充分利用位置信息。
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