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A characterization of hierarchical computable distance functions for data warehouse systems

机译:数据仓库系统的分层可计算距离函数的表征

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A data warehouse is a huge multidimensional repository used for statistical analysis of historical data. In a data warehouse events are modeled as multidimensional cubes where cells store numerical indicators while dimensions describe the events from different points of view. Dimensions are typically described at different levels of details through hierarchies of concepts. Computing the distance/similarity between two cells has several applications in this domain. In this context distance is typically based on the least common ancestor between attribute values, but the effectiveness of such distance functions varies according to the structure and to the number of the involved hierarchies. In this paper we propose a characterization of hierarchy types based on their structure and expressiveness, we provide a characterization of the different types of distance functions and we verify their effectiveness on different types of hierarchies in terms of their intrinsic discriminant capacity.
机译:数据仓库是一个巨大的多维存储库,用于对历史数据进行统计分析。在数据仓库中,事件被建模为多维多维数据集,其中单元格存储数字指示器,而维度则从不同的角度描述事件。通常,通过概念的层次结构在不同级别的细节上描述维度。计算两个像元之间的距离/相似度在此领域中有多种应用。在这种情况下,距离通常基于属性值之间的最小公共祖先,但是这种距离函数的有效性会根据结构和所涉及层次结构的数量而变化。在本文中,我们提出了基于层次结构类型的结构和表达能力的表征,我们提供了对不同类型距离函数的表征,并根据其固有的判别能力验证了它们对不同类型层次结构的有效性。

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