Tensor Networks for Dimensionality Reduction and Large-scale Optimization: Part 2 Applications and Future Perspectives

A. Cichocki, A. Phan, Qibin Zhao, Namgil Lee, I. Oseledets, Masashi Sugiyama, D. Mandic
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引用次数: 249

Abstract

This monograph builds on Tensor Networks for Dimensionality Reduction and Large-scale Optimization: Part 1 Low-Rank Tensor Decompositions by discussing tensor network models for super-compressed higher-order representation of data/parameters and cost functions, together with an outline of their applications in machine learning and data analytics. A particular emphasis is on elucidating, through graphical illustrations, that by virtue of the underlying low-rank tensor approximations and sophisticated contractions of core tensors, tensor networks have the ability to perform distributed computations on otherwise prohibitively large volume of data/parameters, thereby alleviating the curse of dimensionality. The usefulness of this concept is illustrated over a number of applied areas, including generalized regression and classification, generalized eigenvalue decomposition and in the optimization of deep neural networks. The monograph focuses on tensor train (TT) and Hierarchical Tucker (HT) decompositions and their extensions, and on demonstrating the ability of tensor networks to provide scalable solutions for a variety of otherwise intractable large-scale optimization problems. Tensor Networks for Dimensionality Reduction and Large-scale Optimization Parts 1 and 2 can be used as stand-alone texts, or together as a comprehensive review of the exciting field of low-rank tensor networks and tensor decompositions. See also: Tensor Networks for Dimensionality Reduction and Large-scale Optimization: Part 1 Low-Rank Tensor Decompositions. ISBN 978-1-68083-222-8
用于降维和大规模优化的张量网络:第2部分应用和未来展望
本专著建立在用于降维和大规模优化的张量网络:第1部分低秩张量分解,通过讨论用于超压缩高阶数据/参数和成本函数表示的张量网络模型,以及它们在机器学习和数据分析中的应用大纲。特别强调的是,通过图形说明,凭借底层低秩张量近似和核心张量的复杂收缩,张量网络有能力在大量数据/参数上执行分布式计算,从而减轻了维度的诅咒。这个概念的有用性在许多应用领域得到了说明,包括广义回归和分类,广义特征值分解和深度神经网络的优化。本专著着重于张量训练(TT)和分层塔克(HT)分解及其扩展,并展示了张量网络为各种难以解决的大规模优化问题提供可扩展解决方案的能力。第1部分和第2部分可以作为单独的文本使用,也可以作为对令人兴奋的低秩张量网络和张量分解领域的全面回顾。参见:用于降维和大规模优化的张量网络:第1部分低秩张量分解。ISBN 978-1-68083-222-8
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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