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Learning to Rank Query Graphs for Complex Question Answering over Knowledge Graphs

机译:学习对查询图进行排序以对知识图进行复杂的问题解答

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In this paper, we conduct an empirical investigation of neural query graph ranking approaches for the task of complex question answering over knowledge graphs. We propose a novel self-attention based slot matching model which exploits the inherent structure of query graphs, our logical form of choice. Our proposed model generally outperforms other ranking models on two QA datasets over the DBpedia knowledge graph, evaluated in different settings. We also show that domain adaption and pre-trained language model based transfer learning yield improvements, effectively offsetting the general lack of training data.
机译:在本文中,我们对神经查询图排序方法进行了实证研究,以解决知识图上复杂问题的回答任务。我们提出了一种新颖的基于自我注意的时隙匹配模型,该模型利用了查询图的固有结构,即我们选择的逻辑形式。我们提出的模型通常在DBpedia知识图上的两个QA数据集上,在不同的设置下进行评估,其性能通常优于其他排名模型。我们还表明,基于领域适应和基于预训练语言模型的转移学习可以提高学习效率,有效地弥补了训练数据普遍不足的问题。

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