Agreeing about agreements: modelling social contracts , people and data
收藏Mendeley Data2024-01-31 更新2024-06-27 收录
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http://pid.geoscience.gov.au/id/dataset/ga/101544
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资源简介:
One of the well-established methods used to ease data sharing between organisations and even teams within organisations is to use standards for data structure, metadata and interfaces. Standards are a form of agreement, as are MoUs, charters, deeds, licences, rules of the road and even the definitions for words. Man y of these other sorts of agreements are also important for data sharing communities too. In this paper we look to improve the efficiency of dealing with different forms of agreement within a data sharing scenario by presenting a prototype agreements ontology which models agreements themselves as things and the relationships between them and between them and data and them and agents. Having an agreements ontology allows us to start automating tasks that require knowledge of them. This may take the form of data repositories that can make intelligent choices about how to deliver or with old data without human intervention. We position this ontology as a 'middle' ontology, that is one which specializes well-known, abstract, upper ontologies and is able to be used fairly widely but is expected to be used in particular contexts in conjunction with detailed, domain-specific, lower ontologies. We have relied on existing agent, data manipulation, and metadata ontologies where possible and as such we specialise the ORG and FOAF ontologies, the PROV ontology and DCAT and ODRS ontologies for those areas respectively. This paper and ontology supports work that we report elsewhere at SciDataCon2016, namely The Role of Social Architecture in Information Infrastructure (Box & Lemon) and Describing and Automating Requirements within Licenses and their Resolutions (Car & Stenson).
创建时间:
2024-01-31
搜集汇总
数据集介绍

背景与挑战
背景概述
该数据集基于一篇研究论文,提出一个原型协议本体,用于建模数据共享场景中的社会契约、协议及其与数据和代理的关系,旨在提高协议处理效率并支持自动化任务。它作为‘中间’本体,专门化现有上层本体(如ORG、FOAF、PROV等),适用于广泛但特定的上下文,与领域特定本体结合使用。
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