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Learning Representation Mapping for Relation Detection in Knowledge Base Question Answering

机译:学习表示映射用于知识库问答中的关系检测

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Relation detection is a core step in many natural language process applications including knowledge base question answering. Previous efforts show that single-fact questions could be answered with high accuracy. However, one critical problem is that current approaches only get high accuracy for questions whose relations have been seen in the training data. But for unseen relations, the performance will drop rapidly. The main reason for this problem is that the representations for unseen relations are missing. In this paper, we propose a simple mapping method, named representation adapter, to learn the representation mapping for both seen and unseen relations based on previously learned relation embedding. We employ the adversarial objective and the reconstruction objective to improve the mapping performance. We re-organize the popular Sim-pleQuestion dataset to reveal and evaluate the problem of detecting unseen relations. Experiments show that our method can greatly improve the performance of unseen relations while the performance for those seen part is kept comparable to the state-of-the-art.
机译:关系检测是许多自然语言处理应用程序(包括知识库问题解答)中的核心步骤。先前的努力表明,单事实问题可以得到高精度的回答。但是,一个关键问题是,当前方法仅对于在训练数据中已发现其关系的问题才能获得较高的准确性。但是对于看不见的关系,业绩将迅速下降。此问题的主要原因是,看不见的关系的表示形式丢失了​​。在本文中,我们提出了一种简单的映射方法,称为表示适配器,以基于先前学习的关系嵌入来学习可见和不可见关系的表示映射。我们采用对抗目标和重建目标来提高制图性能。我们重新组织了流行的Sim-pleQuestion数据集,以揭示和评估发现看不见的关系的问题。实验表明,我们的方法可以极大地改善看不见的关系的性能,同时使那些可见部分的性能保持与最新技术相当。

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