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The Generalized Sensitivity Scatterplot

机译:广义灵敏度散点图

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Scatterplots remain a powerful tool to visualize multidimensional data. However, accurately understanding the shape of multidimensional points from 2D projections remains challenging due to overlap. Consequently, there are a lot of variations on the scatterplot as a visual metaphor for this limitation. An important aspect often overlooked in scatterplots is the issue of sensitivity or local trend, which may help in identifying the type of relationship between two variables. However, it is not well known how or what factors influence the perception of trends from 2D scatterplots. To shed light on this aspect, we conducted an experiment where we asked people to directly draw the perceived trends on a 2D scatterplot. We found that augmenting scatterplots with local sensitivity helps to fill the gaps in visual perception while retaining the simplicity and readability of a 2D scatterplot. We call this augmentation the generalized sensitivity scatterplot (GSS). In a GSS, sensitivity coefficients are visually depicted as flow lines, which give a sense of continuity and orientation of the data that provide cues about the way data points are scattered in a higher dimensional space. We introduce a series of glyphs and operations that facilitate the analysis of multidimensional data sets using GSS, and validate with a number of well-known data sets for both regression and classification tasks.
机译:散点图仍然是可视化多维数据的强大工具。然而,由于重叠,从2D投影准确地理解多维点的形状仍然具有挑战性。因此,散点图上有很多变化,作为此限制的视觉隐喻。散点图中经常被忽略的一个重要方面是敏感度或局部趋势问题,这可能有助于确定两个变量之间的关系类型。但是,尚不清楚如何或哪些因素影响2D散点图对趋势的感知。为了阐明这一方面,我们进行了一项实验,要求人们直接在2D散点图上绘制感知到的趋势。我们发现,以局部敏感度增强散点图有助于填补视觉感知的空白,同时保留2D散点图的简单性和可读性。我们称这种增强为广义灵敏度散点图(GSS)。在GSS中,灵敏度系数在视觉上被描绘为流线,这给了数据的连续性和方向感,从而提供了有关数据点在高维空间中散布方式的线索。我们介绍了一系列字形和操作,这些字形和操作有助于使用GSS分析多维数据集,并针对回归和分类任务使用大量众所周知的数据集进行验证。

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