一种可学习时态编码方法的动态关系提取

Yinghan Shen, Xuhui Jiang, Yuanzhuo Wang, Xiaolong Jin, Xueqi Cheng
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引用次数: 3

摘要

在许多与自然语言理解和知识图谱相关的任务中,需要在特定时间判断两个实体之间的关系,而传统的不考虑特定时间的关系提取(RE)任务是不可行的。因此,从包含两个实体的句子中提取动态关系是一个重要的任务。然而,现有的研究多侧重于静态关系的提取,忽略了句子中的时间信息,或将时间信息编码为序列来推断关系。考虑到现有研究的这些局限性,我们提出了一个可学习的时间编码(LTE)模型,该模型对句子中的显式时间信息进行编码。具体来说,我们在LTE中引入键值存储网络来识别特定时间实体对之间的关系。通过在一般时间关系提取数据集上的实验,我们表明所提出的模型优于其他最先进的基线,这证明了LTE在动态关系提取方面的有效性。我们还进行了可视化分析,证明我们的模型可以完全表示嵌入空间中任何时间点的时间信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Relation Extraction with A Learnable Temporal Encoding Method
The need to judge the relations between two entities at a specific time arises in many natural language understanding and knowledge graph related tasks, where the traditional relation extraction (RE) task without considering specific time is not feasible. Therefore, it is an important task to extract the dynamic relation from sentences containing the two entities. However, existing studies focus on extracting the static relation while ignoring temporal information in sentences or encode temporal information as a sequence to infer the relation. Considering these limitations of existing studies, we propose a Learnable Temporal Encoding (LTE) model, which encodes explicit temporal information in sentences. Specifically, we introduce a key-value memory network in LTE to identify the relation between an entity pair at a specific time. Through experiments on a general temporal relation extraction dataset, we show that the proposed model outperforms other state-of-the-art baselines, which demonstrate the effectiveness of LTE for dynamic relation extraction. We also conduct visual analysis to demonstrate that our model can fully represent the temporal information in the embedding space for any time spots.
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