自动生成用于可视化的语义图标编码

V. Setlur, J. Mackinlay
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引用次数: 27

摘要

作者使用图标编码来表示可视化中分类信息的语义。可视化工具中的默认图标库通常与数据的语义不匹配。用户经常手动搜索或创建更有语义意义的图标。这个过程可能会阻碍可视化分析的流程,特别是当数据量很大时,从而导致次优的用户体验。我们提出了一种为数据点的分类维度自动生成语义相关的图标编码的技术。该算法采用自然语言处理从网络中寻找相关图像。我们通过使用Tableau Public工作簿生成大型图标库来评估我们在Mechanical Turk上的方法,这些工作簿代表了世界上人们真正的分析工作。我们的结果表明,自动算法几乎和手动创建的图标一样好,特别是对于更大的数据基数有更高的用户满意度。
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Automatic generation of semantic icon encodings for visualizations
Authors use icon encodings to indicate the semantics of categorical information in visualizations. The default icon libraries found in visualization tools often do not match the semantics of the data. Users often manually search for or create icons that are more semantically meaningful. This process can hinder the flow of visual analysis, especially when the amount of data is large, leading to a suboptimal user experience. We propose a technique for automatically generating semantically relevant icon encodings for categorical dimensions of data points. The algorithm employs natural language processing in order to find relevant imagery from the Internet. We evaluate our approach on Mechanical Turk by generating large libraries of icons using Tableau Public workbooks that represent real analytical effort by people out in the world. Our results show that the automatic algorithm does nearly as well as the manually created icons, and particularly has higher user satisfaction for larger cardinalities of data.
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