Casting multiple shadows: interactive data visualisation with tours and embeddings

Stuart Lee, U. Laa, D. Cook
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引用次数: 0

Abstract

Non-linear dimensionality reduction (NLDR) methods such as t-distributed stochastic neighbour embedding (t-SNE) are ubiquitous in the natural sciences, however, the appropriate use of these methods is difficult because of their complex parameterisations; analysts must make trade-offs in order to identify structure in the visualisation of an NLDR technique. We present visual diagnostics for the pragmatic usage of NLDR methods by combining them with a technique called the tour. A tour is a sequence of interpolated linear projections of multivariate data onto a lower dimensional space. The sequence is displayed as a dynamic visualisation, allowing a user to see the shadows the high-dimensional data casts in a lower dimensional view. By linking the tour to an NLDR view, we can preserve global structure and through user interactions like linked brushing observe where the NLDR view may be misleading. We display several case studies from both simulations and single cell transcriptomics, that shows our approach is useful for cluster orientation tasks. The implementation of our framework is available as an R package called liminal available at https://github.com/sa-lee/liminal.
投射多个阴影:带有游览和嵌入的交互式数据可视化
非线性降维(NLDR)方法,如t分布随机邻居嵌入(t-SNE)在自然科学中无处不在,然而,由于它们复杂的参数化,这些方法的适当使用是困难的;分析人员必须做出权衡,以便在NLDR技术的可视化中识别结构。我们通过将NLDR方法与称为tour的技术相结合,为NLDR方法的实用使用提供可视化诊断。遍历是多维数据在低维空间上的插值线性投影序列。序列显示为动态可视化,允许用户看到高维数据在低维视图中投射的阴影。通过将游览链接到NLDR视图,我们可以保留全局结构,并通过用户交互(如链接刷刷)观察NLDR视图可能会误导的地方。我们展示了几个来自模拟和单细胞转录组学的案例研究,表明我们的方法对集群定向任务是有用的。我们的框架的实现可以在https://github.com/sa-lee/liminal上作为一个名为liminal的R包获得。
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