A Dataset and Multi-task Multi-view Approach for Question-Answering with the Dual Perspectives of Text and Knowledge

MS Adithya, M. Ahmed, Mihir Madhusudan Kestur, A. S. Chaithanya, Bhaskarjyothi Das
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Abstract

Question-answering (QA) systems are important tools for extracting information from large datasets and providing accurate and relevant answers to user queries. Two of the most widely studied and built QA systems are Natural Language Question Answering (NLQA) and Knowledge Graph Question Answering (KGQA). NLQA relies on sequence learning algorithms, which have limitations on the length of input they can handle, while KGQA relies on the Subject-Predicate-Object (SPO) tuple representation of data, which may not always be available in the knowledge graph. In this paper, we present a novel approach for addressing these challenges by utilizing the structural information from the Knowledge Graph (KG) and the semantic information from the Natural Language Context. Due to the lack of a dataset to enable this approach, we propose the creation of a multi-view dataset - MTL-QA, specifically designed for multi-task learning. We also present a multi-task learning approach to jointly train NLQA and KGQA models and demonstrate the effectiveness on the proposed MTL-QA dataset.
基于文本和知识双视角的数据集多任务多视图问答方法
问答(QA)系统是从大型数据集中提取信息并为用户查询提供准确和相关的答案的重要工具。两个最广泛研究和构建的QA系统是自然语言问答(NLQA)和知识图谱问答(KGQA)。NLQA依赖于序列学习算法,这对它们可以处理的输入长度有限制,而KGQA依赖于数据的主语-谓词-对象(SPO)元组表示,这在知识图中可能并不总是可用的。在本文中,我们提出了一种利用知识图(KG)的结构信息和自然语言上下文的语义信息来解决这些挑战的新方法。由于缺乏支持这种方法的数据集,我们建议创建一个多视图数据集- MTL-QA,专门为多任务学习设计。我们还提出了一种多任务学习方法来联合训练NLQA和KGQA模型,并证明了所提出的MTL-QA数据集的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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