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Fast hierarchical tucker decomposition with single-mode preservation and tensor subspace analysis for feature extraction from augmented multimodal data

机译:具有单模保存和Tensor子空间分析的快速分层Tucker分解,包括增强多模式数据的特征提取

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摘要

Tensor decomposition is a valuable and robust method for multilinear feature extraction and the dimensionality reduction of multiway data with a wide range of applications. Various tensor network (TN) models have been developed to extract features, and to relax the dimensionality and storage complexity of highly dimensional data. In this study, we extend the family of TNs and propose the hierarchical Tucker decomposition model with single-mode preservation (HTDMP). Various tensor augmentation strategies are suggested to enrich existing data information. These strategies are applied in combination with the HTDMP and multimodal tensor subspace analysis for image classification. The numerical experiments conducted confirm that the proposed method can outperform well-known tensor decomposition algorithms. (c) 2021 Elsevier B.V. All rights reserved.
机译:张量分解是多线性特征提取的有价值且稳健的方法,以及具有广泛应用的多道数据的维度降低。 已经开发了各种张量网络(TN)模型来提取特征,并放松高度尺寸数据的维度和存储复杂性。 在本研究中,我们扩展了TNS的系列,并提出了单模保存(HTDMP)的分层Tucker分解模型。 建议丰富各种张量增强策略来丰富现有的数据信息。 这些策略与HTDMP和多模式张量子空间分析相结合,用于图像分类。 进行的数值实验证实,该方法可以优于众所周知的张量分解算法。 (c)2021 Elsevier B.V.保留所有权利。

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