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A sparse grid based method for generative dimensionality reduction of high-dimensional data

机译:一种基于稀疏网格的高维数据生成降维方法

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Generative dimensionality reduction methods play an important role in machine learning applications because they construct an explicit mapping from a low-dimensional space to the high-dimensional data space. We discuss a general framework to describe generative dimensionality reduction methods, where the main focus lies on a regularized principal manifold learning variant. Since most generative dimensionality reduction algorithms exploit the representer theorem for reproducing kernel Hilbert spaces, their computational costs grow at least quadratically in the number n of data. Instead, we introduce a grid-based discretization approach which automatically scales just linearly in n. To circumvent the curse of dimensionality of full tensor product grids, we use the concept of sparse grids. Furthermore, in real-world applications, some embedding directions are usually more important than others and it is reasonable to refine the underlying discretization space only in these directions. To this end, we employ a dimension-adaptive algorithm which is based on the ANOVA (analysis of variance) decomposition of a function. In particular, the reconstruction error is used to measure the quality of an embedding. As an application, the study of large simulation data from an engineering application in the automotive industry (car crash simulation) is performed. (C) 2015 Elsevier Inc. All rights reserved.
机译:生成维降维方法在机器学习应用程序中起着重要作用,因为它们构造了从低维空间到高维数据空间的显式映射。我们讨论了描述生成的降维方法的一般框架,其中主要重点在于正规化的主要流形学习变量。由于大多数生成降维算法都利用表示定理来再现内核希尔伯特空间,因此它们的计算量至少在数据数量n上呈二次方增长。取而代之的是,我们引入了基于网格的离散化方法,该方法会自动在n中线性缩放。为了规避全张量积网格的维数诅咒,我们使用稀疏网格的概念。此外,在实际应用中,某些嵌入方向通常比其他嵌入方向更重要,并且仅在这些方向上优化底层离散空间是合理的。为此,我们采用基于函数的ANOVA(方差分析)分解的维数自适应算法。特别地,重建误差用于测量嵌入的质量。作为应用程序,对汽车行业的工程应用程序中的大型仿真数据进行了研究(汽车碰撞仿真)。 (C)2015 Elsevier Inc.保留所有权利。

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