基于主动领域自适应策略的关系提取

Lingfeng Zhong, Yi Zhu
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引用次数: 0

摘要

在自动知识图谱构建、问答、情感分析等自然语言处理应用中,关系提取是一项重要的信息提取任务。然而,在语料库背景知识不足的情况下,关系抽取存在实体间不恰当关联的问题。尽管经过预处理的外部词向量库可以缓解这一问题,但如何找到包含所有所需知识特征的单个词向量库作为领域知识是一个巨大的挑战,与背景知识的关系提取仍有待进一步优化。针对这一问题,本文提出了一种基于主动领域自适应策略的关系提取方法(REPDAS),从不同的知识库中引入更多的知识特征。具体而言,首先,引入带有参数共享层的卷积网络进行关系提取,在训练过程中通过注意机制主动挑选对关系特征挖掘有重要意义的词种子;其次,利用主动选择的词种子和之前的参数共享层建立不同域之间的映射;该方法将卷积神经网络与主动域自适应策略相结合,选择性地利用背景知识和上下文特征进行关系提取。实验表明,与其他基线相比,该方法有效地提高了关系提取的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relation Extraction with Proactive Domain Adaptation Strategy
Relation extraction is an important information extraction task in many Natural Language Processing (NLP) applications, such as automatic knowledge graph construction, question answering, sentiment analysis, etc. However, relation extraction suffers from inappropriate associations between entities when the background knowledge of corpus is insufficiency. Despite the preprocessed external word vector bases can ease this problem, how to find a single word vector base as domain knowledge that contains all the required knowledge features is a huge challenge, and relation extraction with background knowledge is still open to further optimization. To address this problem, in this paper, we propose Relation Extraction method with Proactive Domain Adaptation Strategy (REPDAS for short) to introduce more knowledge features from different knowledge bases. More specifically, firstly, a convolutional network with a parameter-sharing layer is introduced for relation extraction, and word seeds that are important to relational feature exploitation are proactively picked by an attention mechanism during training. Secondly, the proactively-chosen word seeds and the previous parameter-sharing layer are utilized to establish a map between different domains. Our proposed method selectively avails both background knowledge and contextual features for relation extraction by incorporating the convolutional neural network with the proactively domain adaptation strategy. Experiments show that our method effectively enhances the performance of relation extraction compared with other baselines.
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