中世纪手稿及其迁移:使用SPARQL调查聚合知识图的研究潜力

H. Wijsman, Toby Burrows, L. Cleaver, Doug Emery, E. Hyvönen, M. Koho, Lynn Ransom, E. Thomson
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引用次数: 4

摘要

尽管RDF查询语言SPARQL以不透明和传统人文主义者难以学习而闻名,但它具有巨大的潜力,可以向愿意接受挑战的研究人员开放大量的关联开放数据。这在前现代手稿研究领域尤其如此,因为越来越多与手稿文化研究相关的数据集可以在网上获得。本文探讨了在绘图手稿迁移(Mapping Manuscript Migrations, MMM)项目的计算机科学家和人文研究人员之间为期两年的协作学习和知识转移过程的结果,以学习并将SPARQL应用于MMM数据集。这个过程发展成为使用SPARQL分析数据、提炼研究问题和评估MMM聚合数据集及其知识图谱的研究潜力的更广泛的调查。通过对一系列六个SPARQL查询案例研究的检查,本文将演示学习和应用SPARQL查询MMM数据集的过程如何返回三个重要且意想不到的结果:1)更好地理解关联开放数据环境中复杂和不完善的数据集;2)更好地理解如何呈现手稿描述和相关数据,包括涉及前现代手稿生产、接收和交易的人员和机构,以更好地促进计算研究;3)意识到需要进一步发展研究人员的数据素养技能,以便充分利用语义网中可供他们使用的大量未开发数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medieval manuscripts and their migrations: Using SPARQL to investigate the research potential of an aggregated Knowledge Graph
Although the RDF query language SPARQL has a reputation for being opaque and difficult for traditional humanists to learn, it holds great potential for opening up vast amounts of Linked Open Data to researchers willing to take on its challenges. This is especially true in the field of premodern manuscripts studies as more and more datasets relating to the study of manuscript culture are made available online. This paper explores the results of a two-year long process of collaborative learning and knowledge transfer between the computer scientists and humanities researchers from the Mapping Manuscript Migrations (MMM) project to learn and apply SPARQL to the MMM dataset. The process developed into a wider investigation of the use of SPARQL to analyse the data, refine research questions, and assess the research potential of the MMM aggregated dataset and its Knowledge Graph. Through an examination of a series of six SPARQL query case studies, this paper will demonstrate how the process of learning and applying SPARQL to query the MMM dataset returned three important and unexpected results: 1) a better understanding of a complex and imperfect dataset in a Linked Open Data environment, 2) a better understanding of how manuscript description and associated data involving the people and institutions involved in the production, reception, and trade of premodern manuscripts needs to be presented to better facilitate computational research, and 3) an awareness of need to further develop data literacy skills among researchers in order to take full advantage of the wealth of unexplored data now available to them in the Semantic Web.
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