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Unsupervised dimensionality reduction: the challenges of big data visualisation

机译:无监督降维:大数据可视化的挑战

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Dimensionality reduction is an unsupervised task that allows high-dimensional data to be processed or visualised in lower-dimensional spaces. This tutorial reviews the basic principles of dimensionality reduction and discusses some of the approaches that were published over the past years from the perspective of their application to big data. The tutorial ends with a short review of papers about dimensionality reduction in these proceedings, as well as some perspectives for the near future.
机译:降维是一项不受监督的任务,它允许在低维空间中处理或可视化高维数据。本教程回顾了降维的基本原理,并从过去将这些方法应用于大数据的角度讨论了一些方法。本教程最后简要回顾了这些程序中有关降维的论文,以及对不久的将来的一些看法。

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