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Discover latent discriminant information for dimensionality reduction: Non-negative sparseness preserving embedding

机译:发现潜在的判别信息以降低维数:非负稀疏保留嵌入

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How to define sparse affinity weight matrices is still an open problem in existing manifold learning algorithms. In this paper, we propose a novel unsupervised learning method called Non-negative Sparseness Preserving Embedding (NSPE) for linear dimensionality reduction. Differing from the manifold learning-based subspace learning methods such as Locality Preserving Projections (LPP), Neighbor Preserving Embedding (NPE) and the recently proposed sparse representation based Sparsity Preserving Projections (SPP); NSPE preserves the non-negative sparse reconstruction relationships in low-dimensional subspace. Another novelty of NSPE is the sparseness constraint, which is directly added to control the non-negative sparse representation coefficients. This gives a more ground truth model to imitate the actions of the active neuron cells of V1 of the primate visual cortex on information processing. Although labels are not used in the training steps, the non-negative sparse representation can still discover the latent discriminant information and thus provides better measure coefficients and significant discriminant abilities for feature extraction. Moreover, NSPE is more efficient than the recently proposed sparse representation based SPP algorithm. Comprehensive comparison and extensive experiments show that NSPE has the competitive performance against the unsupervised learning algorithms such as classical PCA and the state-of-the-art techniques: LPP, NPE and SPP.
机译:在现有的流形学习算法中,如何定义稀疏亲和权重矩阵仍然是一个未解决的问题。在本文中,我们提出了一种新的无监督学习方法,称为非负稀疏保留嵌入(NSPE),用于线性降维。与基于流形学习的子空间学习方法不同,例如局部性保留投影(LPP),邻居保留嵌入(NPE)和最近提出的基于稀疏表示的稀疏性保留投影(SPP); NSPE保留了低维子空间中的非负稀疏重建关系。 NSPE的另一个新颖之处是稀疏约束,它被直接添加以控制非负的稀疏表示系数。这提供了一个更真实的模型来模仿灵长类动物视觉皮层V1的活动神经元细胞对信息处理的作用。尽管训练步骤中未使用标签,但非负的稀疏表示仍可以发现潜在的判别信息,从而为特征提取提供更好的度量系数和重要的判别能力。而且,NSPE比最近提出的基于稀疏表示的SPP算法更有效。全面的比较和广泛的实验表明,NSPE与无监督学习算法(如经典PCA和最新技术:LPP,NPE和SPP)相比具有竞争优势。

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