知识图谱可以用来回答布尔问题吗?这很复杂!

Daria Dzendzik, Carl Vogel, Jennifer Foster
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引用次数: 2

摘要

在本文中,我们探讨了机器阅读理解问题,重点关注是/否问题的BoolQ数据集。我们在该数据集上对基于bert的机器阅读理解模型进行了误差分析,揭示了模型行为不稳定和数据集本身存在一些噪声等问题。然后,我们尝试了两种方法来整合来自知识图的信息:(i)将知识图三元组连接到文本段落;(ii)使用图神经网络对知识进行编码。这两种方法都没有显示出明显的改进,我们假设这可能是由于知识图的不准确性,实体链接的不准确性以及模型无法从知识图中捕获额外信息的组合。
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Q. Can Knowledge Graphs be used to Answer Boolean Questions? A. It’s complicated!
In this paper we explore the problem of machine reading comprehension, focusing on the BoolQ dataset of Yes/No questions. We carry out an error analysis of a BERT-based machine reading comprehension model on this dataset, revealing issues such as unstable model behaviour and some noise within the dataset itself. We then experiment with two approaches for integrating information from knowledge graphs: (i) concatenating knowledge graph triples to text passages and (ii) encoding knowledge with a Graph Neural Network. Neither of these approaches show a clear improvement and we hypothesize that this may be due to a combination of inaccuracies in the knowledge graph, imprecision in entity linking, and the models’ inability to capture additional information from knowledge graphs.
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