Knowledge Graph Question Answering (KGQA) systems are based on machine learning algorithms, requiring thousands of question-answer pairs as training examples or natural language processing pipelines that need module fine-tuning. In this paper, we present a novel QA approach, dubbed TeBaQA. Our approach learns to answer questions based on graph isomorphisms from basic graph patterns of SPARQL queries. Learning basic graph patterns is efficient due to the small number of possible patterns. This novel paradigm reduces the amount of training data necessary to achieve state-of-the-art performance. TeBaQA also speeds up the domain adaption process by transforming the QA system development task into a much smaller and easier data compilation task. In our evaluation, TeBaQA achieves state-of-the-art performance on QALD-8 and delivers comparable results on QALD-9 and LC-QuAD v1. Additionally, we performed a fine-grained evaluation on complex queries that deal with aggregation and superlative questions as well as an ablation study, highlighting future research challenges.
翻译:知识图解解答(KGQA)系统以机器学习算法为基础,需要数千对问答作为培训范例或自然语言处理管道,需要模块微调。在本文中,我们提出了一个新型的QA方法,称为TeBaQA。我们的方法是用SPARQL查询的基本图形模式来解答基于图形的异形学问题。学习基本图表模式之所以有效,是因为可能的模式不多。这个新颖的模式减少了实现最新性能所需的培训数据数量。TeBaQA还加快了域适应进程,将QA系统开发任务转变为一个更小、更简单的数据汇编任务。在我们的评价中,TeBaQAA在QALD-8上取得了最新业绩,并提供了QALD-9和LC-QUAD v1. 此外,我们对涉及集成和超级性能问题的复杂查询进行了精细评估,并重点介绍了未来的研究挑战。