提高关联数据表达性的方法和算法(概述)

O. Nevzorova
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引用次数: 0

摘要

本文讨论了为网络发布而准备的提高关联数据表达性的方法和算法。考虑了丰富本体的主要方法,描述了它们所基于的方法和实现相应方法的工具。关联开放数据云中相关数据生命周期的一般方案的主要阶段是构建一组相关RDF三元组的阶段。为了提高数据的分类和质量分析,使用了各种方法来增加相关数据的表达能力。这些方法的主要思想是通过增加或改进术语公理来丰富现有的本体(扩展基本的知识体系)。浓缩方法基于各个领域使用的方法,如知识表示、机器学习、统计学、自然语言处理、形式概念分析和博弈论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods and Algorithms for Increasing Linked Data Expressiveness (Overview)
This review discusses methods and algorithms for increasing linked data expressiveness which are prepared for Web publication. The main approaches to the enrichment of ontologies are considered, the methods on which they are based and the tools for implementing the corresponding methods are described.The main stage in the general scheme of the related data life cycle in a cloud of Linked Open Data is the stage of building a set of related RDF- triples. To improve the classification of data and the analysis of their quality, various methods are used to increase the expressiveness of related data. The main ideas of these methods are concerned with the enrichment of existing ontologies (an expansion of the basic scheme of knowledge) by adding or improving terminological axioms. Enrichment methods are based on methods used in various fields, such as knowledge representation, machine learning, statistics, natural language processing, analysis of formal concepts, and game theory.
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