Semantic-enhanced reasoning question answering over temporal knowledge graphs

IF 2.3 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Intelligent Information Systems Pub Date : 2024-02-02 DOI:10.1007/s10844-024-00840-5
Chenyang Du, Xiaoge Li, Zhongyang Li
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Abstract

Question Answering Over Temporal Knowledge Graphs (TKGQA) is an important topic in question answering. TKGQA focuses on accurately understanding questions involving temporal constraints and retrieving accurate answers from knowledge graphs. In previous research, the hierarchical structure of question contexts and the constraints imposed by temporal information on different sentence components have been overlooked. In this paper, we propose a framework called “Semantic-Enhanced Reasoning Question Answering” (SERQA) to tackle this problem. First, we adopt a pretrained language model (LM) to obtain the question relation representation vector. Then, we leverage syntactic information from the constituent tree and dependency tree, in combination with Masked Self-Attention (MSA), to enhance temporal constraint features. Finally, we integrate the temporal constraint features into the question relation representation using an information fusion function for answer prediction. Experimental results demonstrate that SERQA achieves better performance on the CRONQUESTIONS and ImConstrainedQuestions datasets. In comparison with existing temporal KGQA methods, our model exhibits outstanding performance in comprehending temporal constraint questions. The ablation experiments verified the effectiveness of combining the constituent tree and the dependency tree with MSA in question answering.

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时态知识图谱上的语义增强推理问题解答
时态知识图谱问题解答(TKGQA)是问题解答领域的一个重要课题。TKGQA 的重点是准确理解涉及时间限制的问题,并从知识图谱中检索出准确的答案。在以往的研究中,问题上下文的层次结构和时间信息对不同句子成分的约束一直被忽视。本文提出了一个名为 "语义增强推理问题解答"(SERQA)的框架来解决这一问题。首先,我们采用预训练语言模型(LM)来获取问题关系表示向量。然后,我们利用来自成分树和依赖树的句法信息,结合掩码自注意(MSA)来增强时间约束特征。最后,我们利用信息融合函数将时间限制特征整合到问题关系表示中,从而进行答案预测。实验结果表明,SERQA 在 CRONQUESTIONS 和 ImConstrainedQuestions 数据集上取得了更好的性能。与现有的时态 KGQA 方法相比,我们的模型在理解时态约束问题方面表现突出。消融实验验证了将成分树和依赖树与 MSA 结合起来进行问题解答的有效性。
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来源期刊
Journal of Intelligent Information Systems
Journal of Intelligent Information Systems 工程技术-计算机:人工智能
CiteScore
7.20
自引率
11.80%
发文量
72
审稿时长
6-12 weeks
期刊介绍: The mission of the Journal of Intelligent Information Systems: Integrating Artifical Intelligence and Database Technologies is to foster and present research and development results focused on the integration of artificial intelligence and database technologies to create next generation information systems - Intelligent Information Systems. These new information systems embody knowledge that allows them to exhibit intelligent behavior, cooperate with users and other systems in problem solving, discovery, access, retrieval and manipulation of a wide variety of multimedia data and knowledge, and reason under uncertainty. Increasingly, knowledge-directed inference processes are being used to: discover knowledge from large data collections, provide cooperative support to users in complex query formulation and refinement, access, retrieve, store and manage large collections of multimedia data and knowledge, integrate information from multiple heterogeneous data and knowledge sources, and reason about information under uncertain conditions. Multimedia and hypermedia information systems now operate on a global scale over the Internet, and new tools and techniques are needed to manage these dynamic and evolving information spaces. The Journal of Intelligent Information Systems provides a forum wherein academics, researchers and practitioners may publish high-quality, original and state-of-the-art papers describing theoretical aspects, systems architectures, analysis and design tools and techniques, and implementation experiences in intelligent information systems. The categories of papers published by JIIS include: research papers, invited papters, meetings, workshop and conference annoucements and reports, survey and tutorial articles, and book reviews. Short articles describing open problems or their solutions are also welcome.
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