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Kernelization of Tensor-Based Models for Multiway Data Analysis: Processing of Multidimensional Structured Data

机译:基于张量的多途数据分析模型的内核化:多维结构化数据的处理

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Tensors (also called multiway arrays) are a generalization of vectors and matrices to higher dimensions based on multilinear algebra. The development of theory and algorithms for tensor decompositions (factorizations) has been an active area of study within the past decade, e.g., [1] and [2]. These methods have been successfully applied to many problems in unsupervised learning and exploratory data analysis. Multiway analysis enables one to effectively capture the multilinear structure of the data, which is usually available as a priori information about the data. Hence, it might provide advantages over matrix factorizations by enabling one to more effectively use the underlying structure of the data. Besides unsupervised tensor decompositions, supervised tensor subspace regression and classification formulations have been also successfully applied to a variety of fields including chemometrics, signal processing, computer vision, and neuroscience.
机译:张量(也称为多路数组)是基于多线性代数的矢量和矩阵到更高维度的概括。在过去的十年中,张量分解(因式分解)的理论和算法的发展一直是研究的活跃领域,例如[1]和[2]。这些方法已成功应用于无监督学习和探索性数据分析中的许多问题。多向分析使人们能够有效地捕获数据的多线性结构,通常可以将其用作有关数据的先验信息。因此,通过使人们能够更有效地使用数据的底层结构,它可以提供优于矩阵分解的优势。除了无监督的张量分解外,有监督的张量子空间回归和分类公式也已成功应用于各种领域,包括化学计量学,信号处理,计算机视觉和神经科学。

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