An Empirical Analysis of Knowledge Overlapping from Big Vocabulary in Biodiversity Domain

Y. Kartika, Zaenal Akbar, D. R. Saleh, W. Fatriasari
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引用次数: 1

Abstract

In advancing scientific discovery, the FAIR (Findable, Accessible, Interoperable, and Reusable) data principles have been widely adopted for managing digital assets such as data, algorithms, tools, or workflows. In addition, the principles stimulate the adoption of domain-related community standards for data sharing. Unfortunately, the stimulation also gives rise to Big Vocabulary, where multiple standardized vocabularies (i.e., ontologies) have been developed across domains. For example, more than a thousand ontologies are available for biological and biomedical sciences. Moreover, since the ontology developments were performed distributively, there is a high possibility for overlapped knowledge among those ontologies. This work analyzed the overlapped knowledge represented by multiple ontologies related to the biodiversity domain. The analysis was conducted by aligning fields from a biodiversity database to the available terms across multiple ontologies such that the scores for mapped, overlap, and coverage can be computed. Based on the findings, the score of overlapping knowledge is up to 27%, where a single ontology can represent at most 53% of fields. As an implication, when sharing data of a specific case, it is required to integrate multiple ontologies and extend it.
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生物多样性领域大词汇知识重叠的实证分析
在推进科学发现的过程中,FAIR(可查找、可访问、可互操作和可重用)数据原则已被广泛用于管理数字资产,如数据、算法、工具或工作流。此外,这些原则还鼓励采用与领域相关的数据共享社区标准。不幸的是,这种刺激也产生了大词汇,其中跨领域开发了多个标准化词汇表(即本体)。例如,生物和生物医学科学有一千多种本体。此外,由于本体的开发是分布式的,因此这些本体之间存在知识重叠的可能性很大。本文分析了生物多样性领域中多个本体所代表的知识重叠问题。该分析是通过将生物多样性数据库中的字段与多个本体中的可用术语进行比对来进行的,这样就可以计算映射、重叠和覆盖的分数。根据研究结果,知识重叠的分数高达27%,其中单个本体最多可以代表53%的领域。由此可见,在共享特定案例的数据时,需要集成多个本体并对其进行扩展。
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