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Efficient kernelisation of discriminative dimensionality reduction

机译:区分大小维的有效核化

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Modern nonlinear dimensionality reduction (DR) techniques project high dimensional data to low dimensions for their visual inspection. Provided the intrinsic data dimensionality is larger than two, DR necessarily faces information loss and the problem becomes ill-posed. Discriminative dimensionality reduction (DiDi) offers one intuitive way to reduce this ambiguity: it allows a practitioner to identify what is relevant and what should be regarded as noise by means of intuitive auxiliary information such as class labels. One powerful DiDi method relies on a change of the data metric based on the Fisher information. This technique has been presented for vectorial data so far. The aim of this contribution is to extend the technique to more general data structures which are characterised in terms of pairwise similarities only by means of a kernelisation. We demonstrate that a computation of the Fisher metric is possible in kernel space, and that it can efficiently be integrated into modern DR technologies such as t-SNE or faster Barnes-Hut-SNE. We demonstrate the performance of the approach in a variety of benchmarks. (C) 2017 Elsevier B.V. All rights reserved.
机译:现代非线性降维(DR)技术将高维数据投影到低维,以进行视觉检查。如果固有数据维数大于2,则DR必然会面临信息丢失,并且问题会变得不适当。区分性降维(DiDi)提供了一种减少这种歧义的直观方法:它允许从业人员通过直观的辅助信息(例如类别标签)来识别什么是相关的以及什么应该被视为噪声。一种强大的DiDi方法依赖于基于Fisher信息的数据度量标准的更改。到目前为止,已经针对矢量数据提出了该技术。这种贡献的目的是将技术扩展到更一般的数据结构,这些数据结构仅通过核化以成对相似性为特征。我们证明了Fisher度量的计算在内核空间中是可能的,并且它可以有效地集成到现代DR技术中,例如t-SNE或更快的Barnes-Hut-SNE。我们在各种基准中证明了该方法的性能。 (C)2017 Elsevier B.V.保留所有权利。

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