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LSVS: Link Specification Verbalization and Summarization

机译:LSVS:链接规范说明和摘要

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摘要

An increasing number and size of datasets abiding by the Linked Data paradigm are published everyday. Discovering links between these datasets is thus central to achieve the vision behind the Data Web. Declarative Link Discovery (LD) frameworks rely on complex Link Specification (LS) to express the conditions under which two resources should be linked. Understanding such LS is not a trivial task for non-expert users, particularly when such users are interested in generating LS to match their needs. Even if the user applies a machine learning algorithm for the automatic generation of the required LS, the challenge of explaining the resultant LS persists. Hence, providing explainable LS is the key challenge to enable users who are unfamiliar with underlying LS technologies to use them effectively and efficiently. In this paper, we address this problem by proposing a generic approach that allows a LS to be verbalized, i.e., converted into understandable natural language. We propose a summarization approach to the verbalized LS based on the selectivity of the underlying LS. Our adequacy and fluency evaluations show that our approach can generate complete and easily understandable natural language descriptions even by lay users.
机译:每天都会发布越来越多且遵循链接数据范式的数据集。因此,发现这些数据集之间的链接对于实现数据网络的愿景至关重要。声明性链接发现(LD)框架依赖复杂的链接规范(LS)来表达应链接两个资源的条件。对于非专家用户而言,了解这样的LS并非易事,特别是当此类用户有兴趣生成LS以满足他们的需求时。即使用户将机器学习算法应用于所需LS的自动生成,解释结果LS的挑战仍然存在。因此,提供可解释的LS是使不熟悉基础LS技术的用户能够有效地使用它们的关键挑战。在本文中,我们通过提出一种通用方法来解决此问题,该方法允许将LS进行语言化,即将其转换为可理解的自然语言。我们基于底层LS的选择性提出了一种概括化的LS方法。我们的充分性和流利性评估表明,即使是外行用户,我们的方法也可以生成完整且易于理解的自然语言描述。

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