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2-MAP: Aligned Visualizations for Comparison of High-Dimensional Point Sets

机译:2-MAP:对齐的可视化,用于比较高维点集

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Visualization tools like t-SNE and UMAP give insight into the high-dimensional structure of datasets. When there are related datasets (such as the high-dimensional representations of image data created by two different Deep Learning architectures), roughly aligning those visualizations helps to highlight both the similarities and differences. In this paper we propose a method to align multiple low dimensional UMAP visualizations by adding an alignment term to the UMAP loss function. We provide an automated procedure to find a weight for this term that encourages the alignment but only minimally changes the fidelity of the underlying embedding.
机译:像t-SNE和UMAP这样的可视化工具可以洞察数据集的高维结构。当存在相关的数据集(例如,由两种不同的深度学习架构创建的图像数据的高维表示)时,粗略地对齐这些可视化有助于突出相同点和不同点。在本文中,我们提出了一种通过向UMAP损失函数添加对齐项来对齐多个低维UMAP可视化的方法。我们提供了一个自动程序来查找该术语的权重,该权重鼓励对齐,但仅最小程度地更改了底层嵌入的保真度。

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