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Nonnegative spectral clustering and adaptive graph-based matrix regression for unsupervised image feature selection

机译:无监督图像特征选择的非负谱聚类和基于自适应图的矩阵回归

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摘要

Matrix regression model can directly take matrix data as input data, and its loss function is defined by left and right regression matrices. The spectral clustering-based matrix regression model can perform feature selection for unsupervised images. However, the graph weight matrix used in the existing spectral clustering models is predefined, which is often inaccurate, especially for noisy images. Moreover, they do not consider the preservation of local structure of image samples in transformation space. To this end, we propose a nonnegative spectral clustering and adaptive graph-based matrix regression model for unsupervised image feature selection. This model can make the prediction label matrix as smooth as possible on the whole graph, and the graph weight matrix can be adaptively learned instead of being predefined as fixed matrix. Thus, the accurate local structure of the sample data is preserved in transformation space and the discriminative information of these pseudo class labels can be revealed. Finally, we devise an efficient optimization algorithm to solve the proposed problem and analyze the computational complexity and convergence of the algorithm. Some experimental results on several datasets also show the effectiveness and superiority of our proposed method.
机译:矩阵回归模型可以直接将矩阵数据作为输入数据,其丢失函数由左和右回归矩阵定义。基于频谱聚类的矩阵回归模型可以对无监督图像执行特征选择。然而,在现有的频谱聚类模型中使用的图形重量矩阵是预定义的,这通常是不准确的,特别是对于嘈杂的图像。此外,它们不考虑在转换空间中的图像样本的局部结构的保存。为此,我们提出了一种用于无监督图像特征选择的非负谱聚类和基于自适应图的矩阵回归模型。该模型可以使预测标签矩阵尽可能平滑地在整个图表上,并且可以自适应地学习图形权重矩阵,而不是预定义为固定矩阵。因此,样本数据的准确局部结构被保留在变换空间中,并且可以揭示这些伪类标签的辨别信息。最后,我们设计了一个有效的优化算法来解决所提出的问题并分析算法的计算复杂性和收敛性。若干数据集的一些实验结果也显示了我们所提出的方法的有效性和优越性。

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