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Intelligent Support for Solving Classification Differences in Statistical Information Integration

机译:解决统计信息集成中分类差异的智能支持

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摘要

Integration of heterogeneous statistics is essential for political decision making on all levels. Like in intelligent information integration in general, the problem is to combine information from different autonomous sources, using different ontologies. However, in statistical information integration specific problems arise. This paper is focussed on the problem of differences in classification between sources and goal statistics. Comparison with existing information integration techniques leads to the conclusion that existing techniques can only be used if individual data underlying the statistics is accessible. This requirement is usually not met, due to protection of privacy and commercial interests. In this paper a formal approach and software tools are presented to support statistical information integration, based on a generic ontology for descriptive statistics, and heuristics that work independent of the domain of application. The heuristics were acquired from economic experts working in the field of European Common Fisheries Policy.
机译:异构统计的整合对于各级政治决策至关重要。像通常在智能信息集成中一样,问题在于使用不同的本体来组合来自不同自治源的信息。但是,在统计信息集成中会出现特定的问题。本文关注于源统计和目标统计之间的分类差异问题。与现有信息集成技术的比较得出的结论是,仅当可访问统计数据基础的单个数据时才能使用现有技术。由于保护隐私和商业利益,通常不满足该要求。在本文中,基于描述性统计的通用本体和独立于应用程序领域的启发式方法,提出了一种支持统计信息集成的正式方法和软件工具。启发式方法是从欧洲共同渔业政策领域的经济专家那里获得的。

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