...
首页> 外文期刊>PeerJ Computer Science >Semantic micro-contributions with decentralized nanopublication services
【24h】

Semantic micro-contributions with decentralized nanopublication services

机译:具有分散的纳米百货公司的语义微贡献

获取原文
           

摘要

While the publication of Linked Data has become increasingly common, the process tends to be a relatively complicated and heavy-weight one. Linked Data is typically published by centralized entities in the form of larger dataset releases, which has the downside that there is a central bottleneck in the form of the organization or individual responsible for the releases. Moreover, certain kinds of data entries, in particular those with subjective or original content, currently do not fit into any existing dataset and are therefore more difficult to publish. To address these problems, we present here an approach to use nanopublications and a decentralized network of services to allow users to directly publish small Linked Data statements through a simple and user-friendly interface, called Nanobench, powered by semantic templates that are themselves published as nanopublications. The published nanopublications are cryptographically verifiable and can be queried through a redundant and decentralized network of services, based on the grlc API generator and a new quad extension of Triple Pattern Fragments. We show here that these two kinds of services are complementary and together allow us to query nanopublications in a reliable and efficient manner. We also show that Nanobench makes it indeed very easy for users to publish Linked Data statements, even for those who have no prior experience in Linked Data publishing.
机译:虽然链接数据的出版变得越来越普遍,但该过程往往是一个相对复杂和重的重量。链接数据通常由较大数据集释放形式的集中实体发布,这些实体具有缺点,其中包括组织或个人负责释放的个人形式的中央瓶颈。此外,某些类型的数据条目,特别是具有主观或原始内容的数据条目,目前不适合任何现有数据集,因此更难发布。为了解决这些问题,我们在这里展示了一种使用纳米泛和分散的服务网络的方法来允许用户通过简单而用户友好的界面直接发布小型链接数据陈述,称为纳米蜂窝,由自己发布的语义模板供电。纳米百倍。该发布的纳米普鲁克经过加密可验证的,并且可以通过GRLC API发生器和三重模式片段的新的四边形扩展来通过冗余和分散的服务网络来查询。我们在这里展示这两种服务是互补的,并允许我们以可靠且有效的方式查询纳米普利。我们还表明,纳米蜂块使用户能够发布链接的数据陈述,即使对于那些在链接数据出版中没有经验的人,用户也确实很容易。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号