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Observation-Level and Parametric Interaction for High-Dimensional Data Analysis

机译:高维数据分析的观察级和参数交互

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摘要

Exploring high-dimensional data is challenging. Dimension reduction algorithms, such as weighted multidimensional scaling, support data exploration by projecting datasets to two dimensions for visualization. These projections can be explored through parametric interaction, tweaking underlying parameterizations, and observation-level interaction, directly interacting with the points within the projection. In this article, we present the results of a controlled usability study determining the differences, advantages, and drawbacks among parametric interaction, observation-level interaction, and their combination. The study assesses both interaction technique effects on domain-specific high-dimensional data analyses performed by non-experts of statistical algorithms. This study is performed using Andromeda, a tool that enables both parametric and observation-level interaction to provide in-depth data exploration. The results indicate that the two forms of interaction serve different, but complementary, purposes in gaining insight through steerable dimension reduction algorithms.
机译:探索高维数据具有挑战性。降维算法(例如加权多维缩放)通过将数据集投影到二维以进行可视化来支持数据探索。可以通过参数交互,调整基础参数设置和观察级交互(与投影中的点直接交互)来探索这些投影。在本文中,我们介绍了受控可用性研究的结果,该研究确定了参数交互,观察级交互及其组合之间的差异,优缺点。该研究评估了两种交互技术对统计算法的非专家执行的特定领域高维数据分析的影响。这项研究使用Andromeda进行,Andromeda是一种使参数和观察级交互都可以提供深入数据探究的工具。结果表明,两种交互形式通过可操纵的降维算法获得不同见解,但互为补充。

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