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BiFold visualization of bipartite datasets

机译:二分层数据集的Bifold可视化

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The emerging domain of data-enabled science necessitates development of algorithms and tools for knowledge discovery. Human interaction with data through well-constructed graphical representation can take special advantage of our visual ability to identify patterns. We develop a data visualization framework, called BiFold, for exploratory analysis of bipartite datasets that describe binary relationships between groups of objects. Typical data examples would include voting records, organizational memberships, and pairwise associations, or other binary datasets. BiFold provides a low dimensional embedding of data that represents similarity by visual nearness, analogous to Multidimensional Scaling (MDS). The unique and new feature of BiFold is its ability to simultaneously capture both within-group and between-group relationships among objects, enhancing knowledge discovery. We benchmark BiFold using the Southern Women Dataset, where social groups are now visually evident. We construct BiFold plots for two US voting datasets: For the presidential election outcomes since 1976, BiFold illustrates the evolving geopolitical structures that underlie these election results. For Senate congressional voting, BiFold identifies a partisan coordinate, separating senators into two parties while simultaneously visualizing a bipartisan-coalition coordinate which captures the ultimate fate of the bills (pass/fail). Finally, we consider a global cuisine dataset of the association between recipes and food ingredients. BiFold allows us to visually compare and contrast cuisines while also allowing identification of signature ingredients of individual cuisines.
机译:支持数据的科学的新兴领域需要开发算法和工具,以了解知识发现。通过构造良好的图形表示与数据的人类互动可以特别利用我们的视觉能力来识别模式。我们开发一个名为Bifold的数据可视化框架,以便对描述对象组之间的二进制关系的二进制数据集进行探索性分析。典型的数据示例将包括投票记录,组织成员资格和成对关联或其他二进制数据集。 BIFOLD提供了一种低维嵌入的数据,该数据表示相似性的视觉接近性,类似于多维缩放(MDS)。 BIFOLD的独特和新功能是其能够同时捕获对象之间的组内和组之间的关系,增强知识发现。我们使用南部女性数据集进行Bifold,社会群体现在视为明显。我们为两个美国投票数据集构建了Bifold Plots:对于自1976年以来的总统选举结果,BIFOLD说明了发展落下这些选举结果的进步地缘政治结构。对于参议院国会投票,BIFOLD确定了一个党派协调,将参议员分成双方,同时可视化两党联盟坐标,占据票据的最终命运(通过/失败)。最后,我们考虑食谱与食品成分之间的全球美食数据集。 Bifold使我们能够在视觉上比较和对比美食,同时还可以识别营造繁想的各个美食。

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