链接开放数据:最新的机制和概念框架

Kingsley Okoye
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引用次数: 2

摘要

如今,显示出其对数据集成和分析重要性的最先进技术之一是链接开放数据(LOD)系统或应用程序。LOD由机器可读的资源或机制组成,这些资源或机制对描述数据属性很有用。然而,现有系统或数据模型的问题之一是,不仅需要以人类易于理解的格式表示派生信息(数据),而且还需要创建能够处理它们包含或支持的信息的系统。从技术上讲,开发数据或信息处理系统的主要机制是聚合或计算各种流程元素的元数据描述。这是因为,为了创建能够为不同的数据类型和数据源提供可理解格式的系统,对数据(或信息)的更一般化和标准定义的需求比以往任何时候都要增加。为此,本章提出了一个基于语义的链接开放数据框架(SBLODF),它将信息系统或模型中的不同元素(实体)与语义(元数据描述)集成在一起,根据用户的搜索或查询生成显式和隐式信息。从本质上讲,这项工作引入了一个机器可读和机器可理解的系统,该系统被证明对于编码关于不同过程域的知识很有用,并且在更概念化的层面上提供发现的信息(知识)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linked Open Data: State-of-the-Art Mechanisms and Conceptual Framework
Today, one of the state-of-the-art technologies that have shown its importance towards data integration and analysis is the linked open data (LOD) systems or applications. LOD constitute of machine-readable resources or mechanisms that are useful in describing data properties. However, one of the issues with the existing systems or data models is the need for not just representing the derived information (data) in formats that can be easily understood by humans, but also creating systems that are able to process the information that they contain or support. Technically, the main mechanisms for developing the data or information processing systems are the aspects of aggregating or computing the metadata descriptions for the various process elements. This is due to the fact that there has been more than ever an increasing need for a more generalized and standard definition of data (or information) to create systems capable of providing understandable formats for the different data types and sources. To this effect, this chapter proposes a semantic-based linked open data framework (SBLODF) that integrates the different elements (entities) within information systems or models with semantics (metadata descriptions) to produce explicit and implicit information based on users’ search or queries. In essence, this work introduces a machine-readable and machine-understandable system that proves to be useful for encoding knowledge about different process domains, as well as provides the discovered information (knowledge) at a more conceptual level.
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