Tensor Regression

Jiani Liu, Ce Zhu, Zhen Long, Yipeng Liu
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引用次数: 13

Abstract

Regression analysis is a key area of interest in the field of data analysis and machine learning which is devoted to exploring the dependencies between variables, often using vectors. The emergence of high dimensional data in technologies such as neuroimaging, computer vision, climatology and social networks, has brought challenges to traditional data representation methods. Tensors, as high dimensional extensions of vectors, are considered as natural representations of high dimensional data. In this book, the authors provide a systematic study and analysis of tensor-based regression models and their applications in recent years. It groups and illustrates the existing tensor-based regression methods and covers the basics, core ideas, and theoretical characteristics of most tensor-based regression methods. In addition, readers can learn how to use existing tensor-based regression methods to solve specific regression tasks with multiway data, what datasets can be selected, and what software packages are available to start related work as soon as possible. Tensor Regression is the first thorough overview of the fundamentals, motivations, popular algorithms, strategies for efficient implementation, related applications, available datasets, and software resources for tensor-based regression analysis. It is essential reading for all students, researchers and practitioners of working on high dimensional data.
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张量的回归
回归分析是数据分析和机器学习领域的一个关键领域,它致力于探索变量之间的依赖关系,通常使用向量。高维数据在神经成像、计算机视觉、气候学和社会网络等技术中的出现,给传统的数据表示方法带来了挑战。张量作为向量的高维扩展,被认为是高维数据的自然表示。在本书中,作者对近年来基于张量的回归模型及其应用进行了系统的研究和分析。它对现有的基于张量的回归方法进行了分组和说明,涵盖了大多数基于张量的回归方法的基础、核心思想和理论特征。此外,读者可以了解如何使用现有的基于张量的回归方法来解决具有多路数据的具体回归任务,可以选择哪些数据集,以及有哪些软件包可以尽快开始相关工作。张量回归是对基于张量的回归分析的基本原理、动机、流行算法、有效实现策略、相关应用、可用数据集和软件资源的第一次全面概述。它是所有学生、研究人员和从事高维数据工作的实践者的必读读物。
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