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Tensor Rank One Discriminant Analysis-A convergent method for discriminative multilinear subspace selection

机译:张量秩一判别分析-判别多线性子空间选择的收敛方法

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摘要

This paper proposes Tensor Rank One Discriminant Analysis (TR1DA) in which general tensors are input for pattern classification. TR1DA is based on Differential Scatter Discriminant Criterion (DSDC) and Tensor Rank One Analysis (TR1A). DSDC is a generalization of the Fisher discriminant criterion. It ensures convergence during training stage. TR1A is a method for adapting general tensors as input to DSDC. The benefits of TR1DA include: (1) a natural way of representing data without losing structure information, i.e., the information about the relative positions of pixels or regions; (2) a reduction in the small sample size problem which occurs in conventional discriminant learning because the number of training samples is much less than the dimensionality of the feature space; (3) a better convergence during the training procedure. We use a graph-embedding framework to generalize TR1DA in manifold learning-based feature selection algorithms, such as locally linear embedding, ISOMAP, and the Laplace eigenmap. We also kernelize TR1DA to nonlinear problems. TR1DA is then demonstrated to outperform traditional subspace methods, such as principal component analysis and linear discriminant analysis.
机译:本文提出了张量秩一判别分析(TR1DA),其中输入了一般张量用于模式分类。 TR1DA基于差分散射判别准则(DSDC)和张量秩一分析(TR1A)。 DSDC是Fisher判别准则的概括。它确保了培训阶段的融合。 TR1A是一种将通用张量作为DSDC的输入的方法。 TR1DA的优点包括:(1)在不丢失结构信息(即有关像素或区域的相对位置的信息)的情况下表示数据的自然方式; (2)减少了传统判别学习中出现的小样本量问题,因为训练样本的数量远小于特征空间的维数; (3)在训练过程中更好的收敛。我们使用图嵌入框架在基于流形学习的特征选择算法(例如局部线性嵌入,ISOMAP和Laplace特征映射)中推广TR1DA。我们还将TR1DA内核化为非线性问题。然后证明TR1DA优于传统的子空间方法,例如主成分分析和线性判别分析。

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