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The Modernisation of Statistical Classifications in Knowledge and Information Management Systems

机译:知识和信息管理系统中统计分类的现代化

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As technology transforms knowledge and information management systems, statistical data is becoming more accessible, available in bigger and more complex datasets and is able to be analysed and interpreted in so many different ways. Traditional approaches to the development, maintenance and revision of statistical classifications no longer support or enable description of data in ways that are as useful to users as they could be. The ability to search and discover information in ways that were previously not possible means that new methodologies for managing and describing the data, and its associated metadata, are required. The development of structured lists of categories, often hierarchic in nature, based on a single concept, limited by the constraints of the printed page, statistical survey processing system needs, sequential code structures or narrow user defined scopes results in statistical classifications neither dynamically reflecting the real world of official statistics nor maintaining relevance in a fast changing information society. Opportunities exist for modernising the developmental processes for statistical classifications by using, for example, semantic web technology, Simple Knowledge Organisation Systems (SKOS), and Resource Description Frameworks (RDF), and for better describing metadata and information within and across multiple, interconnected information and knowledge management systems. These opportunities highlight the difficulties that come with using traditional approaches to statistical classification development and management, and encourage new thinking for different and more flexible options for developers and users. This paper explores the need to dispense with traditional practices for developing statistical classifications as cornerstones of metadata, knowledge and information management, and comments on the need to change the underlying methodology within statistical classification theory, best practice principles and how they can be used in associated information management systems.??.
机译:随着技术转变为知识和信息管理系统,统计数据变得越来越容易获得,可以在更大和更复杂的数据集中获得,并且可以通过许多不同的方式进行分析和解释。开发,维护和修订统计分类的传统方法不再支持或以对用户有用的方式描述数据。以以前不可能的方式搜索和发现信息的能力意味着需要用于管理和描述数据及其相关元数据的新方法。基于单个概念,受打印页面约束,统计调查处理系统需求,顺序代码结构或用户定义的范围狭窄的限制,本质上通常是分层的结构化类别列表的开发导致统计分类无法动态反映官方统计数据的真实世界,或者在快速变化的信息社会中保持相关性。存在通过使用例如语义Web技术,简单知识组织系统(SKOS)和资源描述框架(RDF)来使统计分类的开发过程现代化的机会,并且可以更好地描述多个相互关联的信息之内和之间的元数据和信息。和知识管理系统。这些机会凸显了使用传统方法进行统计分类开发和管理所带来的困难,并鼓励人们为开发人员和用户提供更多不同灵活选择的新思路。本文探讨了放弃传统做法以发展统计分类作为元数据,知识和信息管理的基石的必要性,并评论了在统计分类理论,最佳实践原则以及如何将其用于关联方法中改变底层方法的必要性的评论信息管理系统。

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