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Visual Abstraction and Exploration of Multi-class Scatterplots

机译:视觉抽象和多类散点图的探索

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Scatterplots are widely used to visualize scatter dataset for exploring outliers, clusters, local trends, and correlations. Depicting multi-class scattered points within a single scatterplot view, however, may suffer from heavy overdraw, making it inefficient for data analysis. This paper presents a new visual abstraction scheme that employs a hierarchical multi-class sampling technique to show a feature-preserving simplification. To enhance the density contrast, the colors of multiple classes are optimized by taking the multi-class point distributions into account. We design a visual exploration system that supports visual inspection and quantitative analysis from different perspectives. We have applied our system to several challenging datasets, and the results demonstrate the efficiency of our approach.
机译:散点图被广泛用于可视化散点数据集,以探索异常值,聚类,局部趋势和相关性。但是,在单个散点图视图中描述多个类别的分散点可能会遭受严重的透支,从而使数据分析效率低下。本文提出了一种新的视觉抽象方案,该方案采用了分层的多类采样技术来显示特征保留的简化。为了增强密度对比度,通过考虑多类点分布来优化多类颜色。我们设计了一种视觉探索系统,可从不同角度支持视觉检查和定量分析。我们已经将我们的系统应用于几个具有挑战性的数据集,结果证明了我们方法的有效性。

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