Chapter 2. Classifications as Linked Open Data. Challenges and Opportunities

R. Szostak, Richard P. Smiraglia, A. Scharnhorst, A. Slavic, D. Martínez-Ávila, Tobias Renwick
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引用次数: 3

Abstract

Linked Data (LD) as a web-based technology enables in principle the seamless, machine-supported integration, interplay and augmentation of all kinds of knowledge, into what has been labeled a huge knowledge graph. De-spite decades of web technology and, more recently, the LD approach, the task to fully exploit these new technologies in the public domain is only commencing. One specific challenge is to transfer techniques developed pre-web to order our knowledge into the realm of Linked Open Data (LOD). This paper illustrates two different models in which a general analytico-synthetic classification can be published and made available as LD. In both cases, an LD solution deals with the intricacies of a pre-coordinated indexing language. The Universal Decimal Classification (UDC) approach illustrates a more complex solution driven by the practical requirements that the LD model is expected to fulfill in the bibliographic domain, and within the constraints of copyright protection. The Basic Concepts Classification (BCC) is a new classification with a novel approach to classification structure and syntax for which LD is an important vehicle for increasing the scheme’s visibility and usability. The report on these two cases illustrate some of the challenges of the representation of knowledge organization systems as LD and the possibilities that analytico-synthetic and interdisciplinary or phenomenon-based systems present for the representation of knowledge using LD.
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第二章。分类链接开放数据。挑战与机遇
关联数据(LD)作为一种基于网络的技术,原则上实现了各种知识的无缝、机器支持的集成、相互作用和增强,形成了一个巨大的知识图谱。尽管有了几十年的网络技术和最近的LD方法,在公共领域充分利用这些新技术的任务才刚刚开始。一个具体的挑战是将网络之前开发的技术转移到链接开放数据(LOD)领域,以使我们的知识有序。本文说明了两种不同的模型,其中可以发布一般的分析综合分类并将其作为LD提供。在这两种情况下,LD解决方案都处理预协调索引语言的复杂性。通用十进分类法(Universal Decimal Classification, UDC)方法演示了一种更复杂的解决方案,这种解决方案是由LD模型在书目领域中期望实现的实际需求驱动的,并且受版权保护的约束。基本概念分类(BCC)是一种新的分类方法,具有新的分类结构和语法,其中LD是提高方案可见性和可用性的重要工具。关于这两个案例的报告说明了将知识组织系统表示为LD的一些挑战,以及分析综合和跨学科或基于现象的系统为使用LD表示知识提供的可能性。
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Chapter 2. Classifications as Linked Open Data. Challenges and Opportunities Chapter 11. Knowledge Spaces. Visualizing and Interacting with Dimensionality Chapter 8. Graphing Out Communities and Cultures in the Archives. Methods and Tools Chapter 6. Modeling and Visualizing Storylines of Historical Interactions. Kubler’s Shape of Time and Rembrandt’s Night Watch Chapter 10. Organizing Scholarly Knowledge leveraging Crowdsourcing, Expert Curation and Automated Techniques
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