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Learning Relational Representations by Analogy using Hierarchical Siamese Networks

机译:使用分层连体网络通过类比学习关系表示

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摘要

We address relation extraction as an analogy problem by proposing a novel approach to learn representations of relations expressed by their textual mentions. In our assumption, if two pairs of entities belong to the same relation, then those two pairs are analogous. Following this idea, we collect a large set of analogous pairs by matching triples in knowledge bases with web-scale corpora through distant supervision. We leverage this dataset to train a hierarchical Siamese network in order to learn entity-entity embeddings which encode relational information through the different linguistic paraphrasing expressing the same relation. We evaluate our model in a one-shot learning task by showing a promising generalization capability in order to classify unseen relation types, which makes this approach suitable to perform automatic knowledge base population with minimal supervision. Moreover, the model can be used to generate pre-trained embeddings which provide a valuable signal when integrated into an existing neural-based model by outperforming the state-of-the-art methods on a downstream relation extraction task.
机译:我们通过提出一种新颖的方法来学习关系提取作为类比问题,以学习它们的文本提及所表示的关系的表示形式。在我们的假设中,如果两对实体属于同一关系,那么这两对实体是相似的。遵循这个想法,我们通过远程监控将知识库中的三元组与Web规模的语料库进行匹配,从而收集了大量的相似对。我们利用此数据集来训练一个分层的暹罗网络,以学习实体-实体嵌入,该嵌入通过表示相同关系的不同语言释义对关系信息进行编码。我们通过展示有希望的泛化能力来分类未见的关系类型,从而在一次学习任务中评估我们的模型,这使该方法适合于在最少的监督下执行自动知识库填充。此外,该模型可用于生成预训练的嵌入,当通过在下游关系提取任务上优于最新方法时,该嵌入可在集成到现有的基于神经的模型中时提供有价值的信号。

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