元数据作为一种方法论共享:从能力描述到认知建模

IF 1.3 3区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Intelligence Pub Date : 2023-02-07 DOI:10.1162/dint_a_00189
Wei Liu, Yaming Fu, Qianqian Liu
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引用次数: 2

摘要

元数据是关于数据的数据,主要是为了组织和描述资源而产生的,便于查找、识别、选择和获取信息①。随着技术的进步,元数据的获取逐渐成为数据建模和功能操作的关键步骤,并导致其方法论公域的形成。为了实现结构化描述、语义编码和机器可理解的信息,开发了一系列通用操作,包括实体定义、关系描述、对象分析、属性提取、本体建模、数据清理、消歧、对齐、映射、关联、丰富、导入、导出、服务实现、注册和发现、监控等。这些操作不仅是语义技术(包括关联数据)和知识图谱技术的必要元素,而且已经发展成为构建独立的、基于知识的信息系统的通用操作和主要策略。在本文中,一系列与元数据相关的方法被统称为“元数据方法公共”,在语义Web的各种标准规范中反映了许多最佳实践。在未来基于Web 3.0的多模态元世界的构建中,它将发挥重要的作用,例如通过采用知识模型构建数字孪生,或者支持整个虚拟世界的建模等。基于手工的描述和编码显然不适应元宇宙时代基于UGC (User Generated Contents)和AIGC (AI Generated Contents)的内容生产。语义形式化的自动处理是适应未来人工智能时代需要的元数据方法共性的必然选择。
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Metadata as a Methodological Commons: From Aboutness Description to Cognitive Modeling
ABSTRACT Metadata is data about data, which is generated mainly for resources organization and description, facilitating finding, identifying, selecting and obtaining information①. With the advancement of technologies, the acquisition of metadata has gradually become a critical step in data modeling and function operation, which leads to the formation of its methodological commons. A series of general operations has been developed to achieve structured description, semantic encoding and machine-understandable information, including entity definition, relation description, object analysis, attribute extraction, ontology modeling, data cleaning, disambiguation, alignment, mapping, relating, enriching, importing, exporting, service implementation, registry and discovery, monitoring etc. Those operations are not only necessary elements in semantic technologies (including linked data) and knowledge graph technology, but has also developed into the common operation and primary strategy in building independent and knowledge-based information systems. In this paper, a series of metadata-related methods are collectively referred to as ‘metadata methodological commons’, which has a lot of best practices reflected in the various standard specifications of the Semantic Web. In the future construction of a multi-modal metaverse based on Web 3.0, it shall play an important role, for example, in building digital twins through adopting knowledge models, or supporting the modeling of the entire virtual world, etc. Manual-based description and coding obviously cannot adapted to the UGC (User Generated Contents) and AIGC (AI Generated Contents)-based content production in the metaverse era. The automatic processing of semantic formalization must be considered as a sure way to adapt metadata methodological commons to meet the future needs of AI era.
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来源期刊
Data Intelligence
Data Intelligence COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
6.50
自引率
15.40%
发文量
40
审稿时长
8 weeks
期刊最新文献
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