Position paper: Named Graphs in Linked Data
نویسنده
چکیده
Named graphs are likely to be at the forefront of any future revisions of the RDF data model. The ability to assert metadata about a graph is essential to provenance tracking, access control, and overall data management in the Semantic Web domain. If named graphs were to be incorporated into RDF, it follows that Linked Data would support named graphs at a basic level. This paper investigates potential publishing schemes for Linked Data which anticipate a higher degree of integration of named graphs with RDF, minimally extending Linked Data best practices in a backward compatible manner.
منابع مشابه
Position paper: Uncertainty reasoning for linked data
Linked open data offers a set of design patterns and conventions for sharing data across the semantic web. In this position paper we enumerate some key uncertainty representation issues which apply to linked data and suggest approaches to tackling them. We suggest the need for vocabularies to enable representation of link certainty, to handle ambiguous or imprecise values and to express sets of...
متن کاملGenerating structured Profiles of Linked Data Graphs
While there exists an increasingly large number of Linked Data, metadata about the content covered by individual datasets is sparse. In this paper, we introduce a processing pipeline to automatically assess, annotate and index available linked datasets. Given a minimal description of a dataset from the DataHub, the process produces a structured RDF-based description that includes information ab...
متن کاملProvenance and Linked Data in Biological Data Webs
To created a linked data web of heterogeneous biological data resources, we need not only to define and create the alignment between related data resources but also to express the knowledge about why data items from different sources are linked with each other and how each data link has evolved, so that scientists can trust the data links provided by the data web. This paper highlights the impo...
متن کاملLDIF - Linked Data Integration Framework
The LDIF Linked Data Integration Framework can be used within Linked Data applications to translate heterogeneous data from the Web of Linked Data into a clean local target representation while keeping track of data provenance. LDIF provides an expressive mapping language for translating data from the various vocabularies that are used on the Web into a consistent, local target vocabulary. LDIF...
متن کاملUncertainty Reasoning for Linked Data
Linked open data offers a set of design patterns and conventions for sharing data across the semantic web. In this position paper we enumerate some key uncertainty representation issues which apply to linked data and suggest approaches to tackling them. We suggest the need for vocabularies to enable representation of link certainty, to handle ambiguous or imprecise values and to express sets of...
متن کامل