基于张量网络求和的特征融合

G. G. Calvi, I. Kisil, D. Mandic
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引用次数: 4

摘要

张量网络(TNs)作为一种多路数据分析工具,由于其能够通过其内在特征的较小尺度互连来表示大规模张量,从而解决维度的诅咒,因此受到了相当大的关注。然而,尽管有明显的好处,目前将神经网络作为独立实体处理并没有充分利用其底层结构和相关特征定位。为此,我们利用与特征融合的类比,提出了一个严格的tnn组合框架,特别关注它们的总和作为它们组合的自然方式。所提出的框架被证明允许任意数量张量的特征组合,只要它们的TN表示拓扑是同构的。涉及图像数据集的多类分类的仿真显示了该框架的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Fusion via Tensor Network Summation
Tensor networks (TNs) have been earning considerable attention as multiway data analysis tools owing to their ability to tackle the curse of dimensionality through the representation of large-scale tensors via smaller-scale interconnections of their intrinsic features. However, despite the obvious benefits, the current treatment of TNs as stand-alone entities does not take full advantage of their underlying structure and the associated feature localization. To this end, we exploit the analogy with feature fusion to propose a rigorous framework for the combination of TNs, with a particular focus on their summation as a natural way of their combination. The proposed framework is shown to allow for feature combination of any number of tensors, as long as their TN representation topologies are isomorphic. Simulations involving multi-class classification of an image dataset show the benefits of the proposed framework.
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