扩展分层点放置策略

F. Dias, R. Minghim
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引用次数: 2

摘要

数据的复杂性和规模给数据分析带来了挑战。尽管在过去的十年中,点放置策略已经获得了广泛的应用,以产生多维数据集的全局视图,但在多维投影和点放置策略的背景下,很少有人尝试提高视觉可扩展性并提供多层次的探索。这种方法可以通过组织视觉空间和允许对更大的数据集进行有意义的分区来帮助提高分析能力。在本文中,我们扩展了层次点放置策略(HiPP),以提高其分析能力和灵活性,以应对当前视觉数据科学的发展趋势。我们提供了几种聚类方法和投影方法的组合来表示和可视化数据集;增加了将原始处理顺序从集群-投影转换为投影-集群的选项;提出了一种更好的初始化分区的方法,并增加了对图像、音频、文本和一般数据组进行汇总的方法。该工具的代码可以在网上获得。在本文中,我们介绍了这个新工具(名为xHiPP),并通过使用更简单和更复杂的数据集(文本和音频)的案例研究提供了验证,以说明扩展提供的功能已经成功地为分析人员提供了快速获得洞察力和调整处理管道以满足其需求的能力。
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xHiPP: eXtended Hierarchical Point Placement Strategy
The complexity and size of data have created challenges to data analysis. Although point placement strategies have gained popularity in the last decade to yield a global view of multidimensional datasets, few attempts have been made to improve visual scalability and offer multilevel exploration in the context of multidimensional projections and point placement strategies. Such approaches can be helpful in improving the analysis capability both by organizing visual spaces and allowing meaningful partitions of larger datasets. In this paper, we extend the Hierarchy Point Placement (HiPP), a strategy for multi-level point placement, in order to enhance its analytical capabilities and flexibility to handle current trends in visual data science. We have provided several combinations of clustering methods and projection approaches to represent and visualize datasets; added a choice to invert the original processing order from cluster-projection to projection-cluster; proposed a better way to initialize the partitions, and added ways to summarize image, audio, text and general data groups. The tool's code is made available online. In this article, we present the new tool (named xHiPP) and provide validation through case studies with simpler and more complex datasets (text and audio) to illustrate that the capabilities afforded by the extensions have managed to provide analysts with the ability to quickly gain insight and adjust the processing pipeline to their needs.
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