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Supervised tensor learning

机译:监督张量学习

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摘要

Tensor representation is helpful to reduce the small sample size problem in discriminative subspace selection. As pointed by this paper, this is mainly because the structure information of objects in computer vision research is a reasonable constraint to reduce the number of unknown parameters used to represent a learning model. Therefore, we apply this information to the vector-based learning and generalize the vector-based learning to the tensor-based learning as the supervised tensor learning (STL) framework, which accepts tensors as input. To obtain the solution of STL, the alternating projection optimization procedure is developed. The STL framework is a combination of the convex optimization and the operations in multilinear algebra. The tensor representation helps reduce the overfitting problem in vector-based learning. Based on STL and its alternating projection optimization procedure, we generalize support vector machines, minimax probability machine, Fisher discriminant analysis, and distance metric learning, to support tensor machines, tensor minimax probability machine, tensor Fisher discriminant analysis, and the multiple distance metrics learning, respectively. We also study the iterative procedure for feature extraction within STL. To examine the effectiveness of STL, we implement the tensor minimax probability machine for image classification. By comparing with minimax probability machine, the tensor version reduces the overfitting problem.
机译:张量表示法有助于减少判别子空间选择中的小样本量问题。正如本文所指出的,这主要是因为计算机视觉研究中对象的结构信息是减少用于表示学习模型的未知参数数量的合理约束。因此,我们将此信息应用于基于矢量的学习,并将基于矢量的学习推广到基于张量的学习,作为监督张量学习(STL)框架,该框架接受张量作为输入。为了获得STL的解决方案,开发了交替投影优化程序。 STL框架是凸优化和多线性代数运算的组合。张量表示有助于减少基于向量的学习中的过拟合问题。基于STL及其交替投影优化程序,我们将支持向量机,最小极大概率机,Fisher判别分析和距离度量学习进行了概括,以支持张量机,张量最小极大概率机,张量Fisher判别分析和多距离度量学习, 分别。我们还研究了STL中特征提取的迭代过程。为了检查STL的有效性,我们实现了张量极小极大概率机进行图像分类。通过与极小极大机比较,张量版本减少了过拟合问题。

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