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Classifying Relation via Piecewise Convolutional Neural Networks with Transfer Learning

机译:通过转移学习的分段卷积神经网络分类关系

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Relation classification is an important semantic processing task in natural language processing (NLP). Traditional works on relation classification are primarily based on supervised methods and distant supervision which rely on the large number of labels. However, these existing methods inevitably suffer from wrong labeling problem and may not perform well in resource-poor domains. We thus utilize transfer learning methods on relation classification to enable relation classification system to adapt resource-poor domains along with different relation type. In this paper, we exploit a convolutional neural network to extract lexical and syntactic features and apply transfer learning approaches for transferring the parameters of convolutional layer pre-training on general-domain corpus. The experimental results on real-world datasets demonstrate that our approach is effective and outperforms several competitive baseline methods.
机译:关系分类是自然语言处理中的重要语义处理任务(NLP)。关于关系分类的传统工程主要基于依赖大量标签的监督方法和遥远监督。然而,这些现有方法不可避免地遭受错误的标签问题,并且在资源较差的域名中可能无法表现良好。因此,我们利用对关系分类的传输学习方法,使关系分类系统能够适应资源差的域以及不同的关系类型。在本文中,我们利用卷积神经网络提取词汇和句法特征,并应用用于转移卷积层参数的转移学习方法对一般域语料库的训练。现实世界数据集的实验结果表明,我们的方法是有效和优于几种竞争基线方法的效果。

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