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An Application of Multivariate Statistical Analysis for Query-Driven Visualization

机译:多元统计分析在查询驱动可视化中的应用

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摘要

Driven by the ability to generate ever-larger, increasingly complex data, there is an urgent need in the scientific community for scalable analysis methods that can rapidly identify salient trends in scientific data. Query-Driven Visualization (QDV) strategies are among the small subset of techniques that can address both large and highly complex data sets. This paper extends the utility of QDV strategies with a statistics-based framework that integrates nonparametric distribution estimation techniques with a new segmentation strategy to visually identify statistically significant trends and features within the solution space of a query. In this framework, query distribution estimates help users to interactively explore their query's solution and visually identify the regions where the combined behavior of constrained variables is most important, statistically, to their inquiry. Our new segmentation strategy extends the distribution estimation analysis by visually conveying the individual importance of each variable to these regions of high statistical significance. We demonstrate the analysis benefits these two strategies provide and show how they maybe used to facilitate the refinement of constraints over variables expressed in a user's query. We apply our method to data sets from two different scientific domains to demonstrate its broad applicability.
机译:在生成越来越大,越来越复杂的数据的能力的驱动下,科学界迫切需要可快速分析科学数据的显着趋势的可扩展分析方法。查询驱动的可视化(QDV)策略是可以解决大型和高度复杂数据集的技术的一小部分。本文通过基于统计的框架扩展了QDV策略的实用性,该框架将非参数分布估计技术与新的细分策略相集成,以可视地识别查询的解决方案空间内的统计显着趋势和特征。在此框架中,查询分布估计值可帮助用户以交互方式探索其查询的解决方案,并从视觉上确定受约束变量的组合行为对他们的查询而言最重要的区域。我们的新细分策略通过直观地将每个变量的重要性传达给具有高度统计意义的区域,从而扩展了分布估计分析。我们演示了这两种策略提供的分析好处,并展示了它们如何可以用于促进对用户查询中表达的变量进行约束的细化。我们将我们的方法应用于来自两个不同科学领域的数据集,以证明其广泛的适用性。

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