基于词分布的深度残差网络提取方法

Chilong Wang, Zhixing Li, Shiya Ren, Huaming Wang, Feng Hu, Weibin Deng
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引用次数: 0

摘要

关系抽取是信息抽取的核心任务和重要组成部分,它识别实体对之间的语义关系。它在句子的语义理解和知识图的构建中起着重要的作用。现有的关系提取方法大多依赖于语义信息。此外,许多词嵌入模型没有考虑位置信息。本文结合词嵌入的词向量表示和词的位置,提出了一种词分布模型。将其作为残差神经网络的输入来训练分类器进行关系提取,并采用对抗训练方法来减少训练阶段噪声标签的影响。实验结果证明了该模型在多个数据集上的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction Method with Word Distribution Enriched Deep Residual Network
As a core task and important part of information extraction, relation extraction identifies the semantic relation between entity pairs. It plays an important role in semantic understanding of sentences and the construction of knowledge graphs. Most of the existing methods for relation extraction rely on semantic information. Furthermore, many word embedding models do not take position information into considerations. In this paper, combining with word vector representation of word embedding and words' positions, a word distribution model is proposed. It is used as the input of Residual Neural Network to train the classifier for relation extraction and Adversarial Training method is employed to reduce the impact of noise labels in training phase. The experimental results demonstrate the effectiveness of the proposed model on several datasets.
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