Steering-by-example for Progressive Visual Analytics

Marius Hogräfer, M. Angelini, G. Santucci, Hans-Jörg Schulz
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引用次数: 2

Abstract

Progressive visual analytics allows users to interact with early, partial results of long-running computations on large datasets. In this context, computational steering is often brought up as a means to prioritize the progressive computation. This is meant to focus computational resources on data subspaces of interest so as to ensure their computation is completed before all others. Yet, current approaches to select a region of the view space and then to prioritize its corresponding data subspace either require a one-to-one mapping between view and data space, or they need to establish and maintain computationally costly index structures to trace complex mappings between view and data space. We present steering-by-example, a novel interactive steering approach for progressive visual analytics, which allows prioritizing data subspaces for the progression by generating a relaxed query from a set of selected data items. Our approach works independently of the particular visualization technique and without additional index structures. First benchmark results show that steering-by-example considerably improves Precision and Recall for prioritizing unprocessed data for a selected view region, clearly outperforming random uniform sampling.
渐进式视觉分析的实例指导
渐进式可视化分析允许用户与大型数据集上长时间计算的早期部分结果进行交互。在这种情况下,计算转向通常被作为优先考虑渐进计算的一种手段。这意味着将计算资源集中在感兴趣的数据子空间上,以确保它们的计算在所有其他计算之前完成。然而,当前选择视图空间的一个区域,然后对其相应的数据子空间进行优先级排序的方法,要么需要视图和数据空间之间的一对一映射,要么需要建立和维护计算成本很高的索引结构,以跟踪视图和数据空间之间的复杂映射。我们提出了实例转向,这是一种新颖的交互式转向方法,用于渐进式视觉分析,它允许通过从一组选定的数据项中生成一个轻松的查询来为进展确定数据子空间的优先级。我们的方法独立于特定的可视化技术,不需要额外的索引结构。第一个基准测试结果表明,在选定的视图区域对未处理的数据进行优先级排序时,实例导向显著提高了精度和召回率,明显优于随机均匀采样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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