Fynn Bachmann, Philipp Hennig, Dmitry Kobak
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引用次数: 0

摘要

科学数据集通常具有层次结构:例如,在调查中,个体参与者(样本)可能被分组在更高的层次(单位),例如他们的地理区域。在这些设置中,兴趣通常是在单位水平上探索结构,而不是在样本水平上。单位可以根据其均值之间的距离进行比较,但这忽略了样本的单位内分布。在这里,我们开发了一种使用Wasserstein距离度量对分层数据集进行探索性分析的方法,该度量考虑了单位内分布的形状。我们使用t-SNE来构建单元的二维嵌入,基于它们之间的成对Wasserstein距离矩阵。距离矩阵可以通过用高斯分布近似每个单元来有效地计算,但我们也提供了一种可扩展的方法来计算精确的Wasserstein距离。我们使用合成数据来证明我们的Wasserstein t-SNE的有效性,并将其应用于2017年德国议会选举的数据,以投票站为样本,以投票区为单位。由此产生的嵌入揭示了数据中有意义的结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wasserstein t-SNE
Scientific datasets often have hierarchical structure: for example, in surveys, individual participants (samples) might be grouped at a higher level (units) such as their geographical region. In these settings, the interest is often in exploring the structure on the unit level rather than on the sample level. Units can be compared based on the distance between their means, however this ignores the within-unit distribution of samples. Here we develop an approach for exploratory analysis of hierarchical datasets using the Wasserstein distance metric that takes into account the shapes of within-unit distributions. We use t-SNE to construct 2D embeddings of the units, based on the matrix of pairwise Wasserstein distances between them. The distance matrix can be efficiently computed by approximating each unit with a Gaussian distribution, but we also provide a scalable method to compute exact Wasserstein distances. We use synthetic data to demonstrate the effectiveness of our Wasserstein t-SNE, and apply it to data from the 2017 German parliamentary election, considering polling stations as samples and voting districts as units. The resulting embedding uncovers meaningful structure in the data.
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