Using Ontologies to Create Machine-Actionable Datasets: Two Case Studies

J. Hippolyte, M. Romanchikova, Maurizio Bevilacqua, Paul Duncan, Samuel E. Hunt, Federico Grasso Toro, Anne-Sophie Piette, Julia Neumann
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引用次数: 2

Abstract

Achieving the highest levels of compliance with the FAIR (findable, accessible, interoperable, reusable) principles for scientific data management and stewardship requires machine-actionable semantic representations of data and metadata. Human and machine interpretation and reuse of measurement datasets rely on metrological information that is often specified inconsistently or cannot be inferred automatically, while several ontologies to capture the metrological information are available, practical implementation examples are few. This work aims to close this gap by discussing how standardised measurement data and metadata could be presented using semantic web technologies. The examples provided in this paper are machine-actionable descriptions of Earth observation and bathymetry measurement datasets, based on two ontologies of quantities and units of measurement selected for their prominence in the semantic web. The selected ontologies demonstrated a good coverage of the concepts related to quantities, dimensions, and individual units as well as systems of units, but showed variations and gaps in the coverage, completeness and traceability of other metrology concept representations such as standard uncertainty, expanded uncertainty, combined uncertainty, coverage factor, probability distribution, etc. These results highlight the need for both (I) user-friendly tools for semantic representations of measurement datasets and (II) the establishment of good practices within each scientific community. Further work will consequently investigate how to support ontology modelling for measurement uncertainty and associated concepts.
使用本体创建机器可操作的数据集:两个案例研究
要实现科学数据管理和管理的FAIR(可查找、可访问、可互操作、可重用)原则的最高遵从性,需要机器可操作的数据和元数据语义表示。人类和机器对测量数据集的解释和重用依赖于计量信息,这些信息通常是不一致的或不能自动推断的,虽然有几个本体可以捕获计量信息,但实际实施的例子很少。这项工作旨在通过讨论如何使用语义网技术来呈现标准化的测量数据和元数据来缩小这一差距。本文中提供的示例是地球观测和测深测量数据集的机器可操作描述,基于在语义网中突出选择的两个量和测量单位本体。所选择的本体展示了与数量、维度、单个单位以及单位系统相关的概念的良好覆盖,但显示了其他计量概念表示(如标准不确定度、扩展不确定度、组合不确定度、覆盖因子、概率分布等)的覆盖、完整性和可追溯性方面的变化和差距。这些结果强调了对(I)测量数据集语义表示的用户友好工具和(II)在每个科学社区内建立良好实践的需求。因此,进一步的工作将研究如何支持测量不确定性和相关概念的本体建模。
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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