Knowledge Graphs are repositories of information that gather data from a multitude of domains and sources in the form of semantic triples, serving as a source of structured data for various crucial applications in the modern web landscape, from Wikipedia infoboxes to search engines. Such graphs mainly serve as secondary sources of information and depend on well-documented and verifiable provenance to ensure their trustworthiness and usability. However, their ability to systematically assess and assure the quality of this provenance, most crucially whether it properly supports the graph's information, relies mainly on manual processes that do not scale with size. ProVe aims at remedying this, consisting of a pipelined approach that automatically verifies whether a Knowledge Graph triple is supported by text extracted from its documented provenance. ProVe is intended to assist information curators and consists of four main steps involving rule-based methods and machine learning models: text extraction, triple verbalisation, sentence selection, and claim verification. ProVe is evaluated on a Wikidata dataset, achieving promising results overall and excellent performance on the binary classification task of detecting support from provenance, with 87.5% accuracy and 82.9% F1-macro on text-rich sources. The evaluation data and scripts used in this paper are available on GitHub and Figshare.
翻译:知识图是信息储存库,收集来自多种领域和来源的数据,其形式为语义三重,作为现代网络景观中各种关键应用的结构性数据的来源,从维基百科信息箱到搜索引擎,这些图主要作为次要信息来源,并依赖有详细记录和可核查的出处,以确保其可信赖性和可用性;然而,它们系统评估和保证这一出处质量的能力,最重要的是,它是否适当地支持图的信息,主要依靠不以大小为尺度的人工程序。ProVe旨在纠正这一点,包括一个编审方法,自动核实知识图三重是否得到其有文件根据的出处所提取的文字的支持。ProVe旨在协助信息整理者,包括四个主要步骤,包括基于规则的方法和机器学习模式:文字提取、三重言辞、句选取和索赔核实。ProVe在维基数据集上进行了评价,在从有据可查的支持的二元分类工作中取得了有希望的总体结果和出色的业绩。