降维映射

K. Bunte, Michael Biehl, B. Hammer
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引用次数: 12

摘要

已经建立了大量强大的降维方法,可用于数据可视化和预处理。这些都伴随着正式的评价方案,允许根据一般原则进行定量评价,甚至导致基于这些目标的进一步可视化方案。然而,大多数方法只提供先前给定的有限点集的映射,需要额外的步骤进行样本外扩展。我们提出了基于成本函数概念的降维的一般观点,并基于这一一般原则,将降维扩展到数据流形的显式映射。这提供了简单的样本外扩展。此外,它为数据可视化理论开辟了一条道路,从其对新数据点的泛化能力的角度出发。我们演示了基于简单的全局线性映射和基于原型的局部线性映射的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dimensionality reduction mappings
A wealth of powerful dimensionality reduction methods has been established which can be used for data visualization and preprocessing. These are accompanied by formal evaluation schemes, which allow a quantitative evaluation along general principles and which even lead to further visualization schemes based on these objectives. Most methods, however, provide a mapping of a priorly given finite set of points only, requiring additional steps for out-of-sample extensions. We propose a general view on dimensionality reduction based on the concept of cost functions, and, based on this general principle, extend dimensionality reduction to explicit mappings of the data manifold. This offers simple out-of-sample extensions. Further, it opens a way towards a theory of data visualization taking the perspective of its generalization ability to new data points. We demonstrate the approach based on a simple global linear mapping as well as prototype-based local linear mappings.
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