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An OLAM Operator for Multi-Dimensional Shrink

机译:多维收缩的OLAM运算符

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Shrink is an OLAM (On-Line Analytical Mining) operator based on hierarchical clustering, and it has been previously proposed in mono-dimensional form to balance precision with size in the visualization of cubes via pivot tables during OLAP analyses. It can be applied to the cube resulting from a query to decrease its size while controlling the approximation introduced; the idea is to fuse similar facts together and replace them with a single representative fact, respecting the bounds posed by dimension hierarchies. In this paper the authors propose a multi-dimensional generalization of the shrink operator, where facts are fused along multiple dimensions. Multi-dimensional shrink comes in two flavors: lazy and eager, where the bounds posed by hierarchies are respectively weaker and stricter. Greedy algorithms based on agglomerative clustering are presented for both lazy and eager shrink, and experimentally evaluated in terms of efficiency and effectiveness.
机译:Shrink是基于分层聚类的OLAM(在线分析挖掘)运算符,以前曾以一维形式提出以在OLAP分析过程中通过枢轴表在多维数据集可视化中平衡精度和大小。可以将其应用于查询所得的多维数据集以减小其大小,同时控制引入的近似值;这个想法是将相似的事实融合在一起,并用一个代表性的事实代替它们,同时尊重维度层次结构所构成的界限。在本文中,作者提出了收缩算子的多维概括,其中事实沿多个维融合。多维收缩有两种形式:懒惰和渴望,层次结构所构成的界限分别更弱和更严格。提出了基于聚集聚类的贪婪算法,用于懒惰和渴望收缩,并根据效率和有效性进行了实验评估。

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