乘法非负图嵌入

Changhu Wang, Zheng Song, Shuicheng Yan, Lei Zhang, HongJiang Zhang
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引用次数: 26

摘要

在本文中,我们研究了非负图嵌入问题,该问题最初在[J]。Yang等人,2008]从非负数据分解和内在图和惩罚图所表征的特定目的中获益。我们的贡献是双重的。一方面,我们提出了一种非负图嵌入的乘法迭代过程,与文献[14]中涉及m矩阵逆计算的迭代过程相比,显著降低了计算成本。另一方面,非负图嵌入框架通过将每个数据编码为任意阶张量,以一种更一般的方式表示,这带来了一组副产物,例如非负判别张量分解算法,具有可接受的时间和内存开销。与非负数据分解、图嵌入和张量表示的最新算法进行了大量的实验比较,证明了该算法在计算速度、稀疏性、判别能力和对真实图像遮挡的鲁棒性方面的特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiplicative nonnegative graph embedding
In this paper, we study the problem of nonnegative graph embedding, originally investigated in [J. Yang et al., 2008] for reaping the benefits from both nonnegative data factorization and the specific purpose characterized by the intrinsic and penalty graphs. Our contributions are two-fold. On the one hand, we present a multiplicative iterative procedure for nonnegative graph embedding, which significantly reduces the computational cost compared with the iterative procedure in [14] involving the matrix inverse calculation of an M-matrix. On the other hand, the nonnegative graph embedding framework is expressed in a more general way by encoding each datum as a tensor of arbitrary order, which brings a group of byproducts, e.g., nonnegative discriminative tensor factorization algorithm, with admissible time and memory cost. Extensive experiments compared with the state-of-the-art algorithms on nonnegative data factorization, graph embedding, and tensor representation demonstrate the algorithmic properties in computation speed, sparsity, discriminating power, and robustness to realistic image occlusions.
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