Question Answering (QA) models over Knowledge Bases (KBs) are capable of providing more precise answers by utilizing relation information among entities. Although effective, most of these models solely rely on fixed relation representations to obtain answers for different question-related KB subgraphs. Hence, the rich structured information of these subgraphs may be overlooked by the relation representation vectors. Meanwhile, the direction information of reasoning, which has been proven effective for the answer prediction on graphs, has not been fully explored in existing work. To address these challenges, we propose a novel neural model, Relation-updated Direction-guided Answer Selector (RDAS), which converts relations in each subgraph to additional nodes to learn structure information. Additionally, we utilize direction information to enhance the reasoning ability. Experimental results show that our model yields substantial improvements on two widely used datasets.
翻译:知识库(KB)的问答模型能够利用各实体之间的关系信息提供更准确的答案。虽然这些模型大多数有效,但仅依靠固定关系表示来获得与问题有关的不同KB子谱的答案。因此,这些子集的丰富结构化信息可能被关系表达矢量忽视。与此同时,现有工作中没有充分探索对图表回答预测行之有效的推理方向信息。为了应对这些挑战,我们提议了一个新的神经模型,即“更新关系指示-指导-回答选择器(RDAS)”,将每个子集的关系转换为学习结构信息的额外节点。此外,我们利用方向信息来提高推理能力。实验结果表明,我们的模型在两个广泛使用的数据集上取得了重大改进。