Proceedings of The International Workshop on Semantic Big Data

Sven Groppe, L. Gruenwald
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Abstract

The current World-Wide Web enables an easy, instant access to a vast amount of online information. However, the content in the Web is typically for human consumption, and is not tailored for machine processing. The Semantic Web is hence intended to establish a machine-understandable Web, and is currently also used in many other domains and not only in the Web. The World Wide Web Consortium (W3C) has developed a number of standards around this vision. Among them is the Resource Description Framework (RDF), which is used as the data model of the Semantic Web. The W3C has also defined SPARQL as the RDF query language, RIF as the rule language, and the ontology languages RDFS and OWL to describe schemas of RDF. The usage of common ontologies increases interoperability between heterogeneous data sets, and the proprietary ontologies with the additional abstraction layer facilitate the integration of these data sets. Therefore, we can argue that the Semantic Web is ideally designed to work in heterogeneous Big Data environments. We define Semantic Big Data as the intersection of Semantic Web data and Big Data. There are masses of Semantic Web data freely available to the public - thanks to the efforts of the linked data initiative. According to http://stats.lod2.eu/ the current freely available Semantic Web data is approximately 90 billion triples in over 3,300 datasets, many of which are accessible via SPARQL query servers called SPARQL endpoints. Everyone can submit SPARQL queries to SPARQL endpoints via a standardized protocol, where the queries are processed on the datasets of the SPARQL endpoints and the query results are sent back in a standardized format. Hence, not only Semantic Big Data is freely available, but also distributed execution environments for Semantic Big Data are freely accessible. This makes the Semantic Web an ideal playground for Big Data research. The goal of this workshop is to bring together academic researchers and industry practitioners to address the challenges and report and exchange the research findings in Semantic Big Data, including new approaches, techniques and applications, make substantial theoretical and empirical contributions to, and significantly advance the state of the art of Semantic Big Data.
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当前的万维网使人们能够轻松、即时地访问大量的在线信息。然而,Web中的内容通常是供人使用的,而不是为机器处理而定制的。因此,语义网旨在建立一个机器可理解的Web,目前也用于许多其他领域,而不仅仅是在Web中。万维网联盟(W3C)围绕这一愿景开发了许多标准。其中包括资源描述框架(RDF),它被用作语义Web的数据模型。W3C还将SPARQL定义为RDF查询语言,将RIF定义为规则语言,并将本体语言RDFS和OWL定义为描述RDF模式。公共本体的使用增加了异构数据集之间的互操作性,而带有附加抽象层的专有本体促进了这些数据集的集成。因此,我们可以认为语义网是在异构大数据环境中工作的理想设计。我们将语义大数据定义为语义网数据和大数据的交集。由于关联数据倡议的努力,公众可以免费获得大量的语义Web数据。根据http://stats.lod2.eu/,目前可以免费获得的语义Web数据在3300多个数据集中大约有900亿个三元组,其中许多可以通过SPARQL查询服务器(称为SPARQL端点)访问。每个人都可以通过标准化协议向SPARQL端点提交SPARQL查询,在SPARQL端点的数据集上处理查询,并以标准化格式发送查询结果。因此,不仅语义大数据是免费的,而且语义大数据的分布式执行环境也是免费的。这使得语义网成为大数据研究的理想场所。本次研讨会的目标是将学术研究人员和行业从业者聚集在一起,共同应对语义大数据的挑战,报告和交流语义大数据的研究成果,包括新的方法、技术和应用,为语义大数据的发展做出实质性的理论和实证贡献,并显著推进语义大数据的发展。
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