Visual Abstraction and Exploration of Multi-class Scatterplots

IEEE Trans. Vis. Comput. Graph.(2014)

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摘要
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.
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关键词
overdraw reduction,clusters,visual abstraction,correlations,feature-preserving simplification,data analysis,visual abstraction scheme,density contrast,outliers,scatterplot,hierarchical multiclass sampling technique,multiclass scatterplot,scatterplot view,data visualisation,scatter dataset visualization,sampling methods,sampling,local trends,multiclass point distribution,visualization,statistical analysis,noise,data visualization,market research,estimation
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