IEEE Trans Neural Netw Learn Syst. 2015 Nov;26(11):2760-74. doi: 10.1109/TNNLS.2015.2393886. Epub 2015 May 4.
Dimensionality reduction is an important method to analyze high-dimensional data and has many applications in pattern recognition and computer vision. In this paper, we propose a robust nonnegative patch alignment for dimensionality reduction, which includes a reconstruction error term and a whole alignment term. We use correntropy-induced metric to measure the reconstruction error, in which the weight is learned adaptively for each entry. For the whole alignment, we propose locality-preserving robust nonnegative patch alignment (LP-RNA) and sparsity-preserviing robust nonnegative patch alignment (SP-RNA), which are unsupervised and supervised, respectively. In the LP-RNA, we propose a locally sparse graph to encode the local geometric structure of the manifold embedded in high-dimensional space. In particular, we select large p -nearest neighbors for each sample, then obtain the sparse representation with respect to these neighbors. The sparse representation is used to build a graph, which simultaneously enjoys locality, sparseness, and robustness. In the SP-RNA, we simultaneously use local geometric structure and discriminative information, in which the sparse reconstruction coefficient is used to characterize the local geometric structure and weighted distance is used to measure the separability of different classes. For the induced nonconvex objective function, we formulate it into a weighted nonnegative matrix factorization based on half-quadratic optimization. We propose a multiplicative update rule to solve this function and show that the objective function converges to a local optimum. Several experimental results on synthetic and real data sets demonstrate that the learned representation is more discriminative and robust than most existing dimensionality reduction methods.
降维是分析高维数据的一种重要方法,在模式识别和计算机视觉中有许多应用。在本文中,我们提出了一种鲁棒的非负补丁对齐方法用于降维,它包含了重建误差项和整体对齐项。我们使用相关熵诱导的度量来衡量重建误差,其中权重是为每个条目自适应学习的。对于整体对齐,我们提出了保局部结构的鲁棒非负补丁对齐(LP-RNA)和保稀疏性的鲁棒非负补丁对齐(SP-RNA),它们分别是无监督和有监督的。在 LP-RNA 中,我们提出了一种局部稀疏图来编码嵌入在高维空间中的流形的局部几何结构。具体来说,我们为每个样本选择较大的 p-近邻,然后根据这些邻居进行稀疏表示。稀疏表示用于构建一个同时具有局部性、稀疏性和鲁棒性的图。在 SP-RNA 中,我们同时利用局部几何结构和判别信息,其中稀疏重建系数用于描述局部几何结构,加权距离用于测量不同类别的可分离性。对于所诱导的非凸目标函数,我们将其基于半二次优化公式化为加权非负矩阵分解。我们提出了一种乘法更新规则来求解这个函数,并证明目标函数收敛到局部最优解。在一些合成和真实数据集上的实验结果表明,所学习的表示比大多数现有的降维方法更具有判别力和鲁棒性。