条件平行坐标

D. Weidele
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引用次数: 14

摘要

平行坐标[11],[12]是一种流行的多变量数据可视化技术。PC最早可追溯到1880年[8],其历史几乎与John Snow于1855年绘制的著名霍乱爆发地图[18]一样悠久,后者经常被视为现代数据可视化的历史性里程碑。已经提出了许多扩展来解决完整性、可伸缩性和可读性问题。我们提出了在条件数据上使用PC的新情况,其中只有在观察中满足某些标准时才展开附加维度。与运行在平面维集上的标准PC相比,我们对条件平行坐标的输入本体具有层次性。因此,我们简要回顾了使用聚合或嵌套技术围绕分层PC的相关工作。我们的贡献是一个可视化,在保留直观的交互模式的情况下,无缝地使PC适应条件数据,以选择或突出显示折线。我们总结了如何在两个数据集上操作CPC: AutoML超参数搜索日志和来自会话代理的会话结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conditional Parallel Coordinates
Parallel Coordinates [11],[12] are a popular data visualization technique for multivariate data. Dating back to as early as 1880 [8] PC are nearly as old as John Snow’s famous cholera outbreak map [18] of 1855, which is frequently regarded as a historic landmark for modern data visualization. Numerous extensions have been proposed to address integrity, scalability and readability. We make a new case to employ PC on conditional data, where additional dimensions are only unfolded if certain criteria are met in an observation. Compared to standard PC which operate on a flat set of dimensions the ontology of our input to Conditional Parallel Coordinates is of hierarchical nature. We therefore briefly review related work around hierarchical PC using aggregation or nesting techniques. Our contribution is a visualization to seamlessly adapt PC for conditional data under preservation of intuitive interaction patterns to select or highlight polylines. We conclude with intuitions on how to operate CPC on two data sets: an AutoML hyperparameter search log, and session results from a conversational agent.
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