VISOR:有序数据的可视化摘要

Giovanni Mahlknecht, Michael H. Böhlen, Anton Dignös, J. Gamper
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引用次数: 6

摘要

在本文中,我们介绍了VISOR工具,它通过可视化数据摘要大小k与诱导误差之间的关系来帮助用户探索数据及其摘要结构。给定一个有序的数据集,VISOR允许改变数据摘要的大小k,并通过分别在ϵ-graph和Δ-graph中可视化错误及其对k的依赖关系,立即看到对诱导错误的影响。用户可以很容易地探索不同的k值,并确定汇总大小的最佳值。VISOR还允许比较不同的汇总方法,如分段常数近似,分段聚合近似或v -最优直方图。我们展示了几个演示场景,包括如何确定摘要大小的适当值,以及比较不同的摘要技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VISOR: Visualizing Summaries of Ordered Data
In this paper, we present the VISOR tool, which helps the user to explore data and their summary structures by visualizing the relationships between the size k of a data summary and the induced error. Given an ordered dataset, VISOR allows to vary the size k of a data summary and to immediately see the effect on the induced error, by visualizing the error and its dependency on k in an ϵ-graph and Δ-graph, respectively. The user can easily explore different values of k and determine the best value for the summary size. VISOR allows also to compare different summarization methods, such as piecewise constant approximation, piecewise aggregation approximation or V-optimal histograms. We show several demonstration scenarios, including how to determine an appropriate value for the summary size and comparing different summarization techniques.
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