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Semi-supervised classification based on subspace sparse representation

机译:基于子空间稀疏表示的半监督分类

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Graph plays an important role in graph-based semi-supervised classification. However, due to noisy and redundant features in high-dimensional data, it is not a trivial job to construct a well-structured graph on high-dimensional samples. In this paper, we take advantage of sparse representation in random subspaces for graph construction and propose a method called Semi-Supervised Classification based on Subspace Sparse Representation, SSC-SSR in short. SSC-SSR first generates several random subspaces from the original space and then seeks sparse representation coefficients in these subspaces. Next, it trains semi-supervised linear classifiers on graphs that are constructed by these coefficients. Finally, it combines these classifiers into an ensemble classifier by minimizing a linear regression problem. Unlike traditional graph-based semi-supervised classification methods, the graphs of SSC-SSR are data-driven instead of man-made in advance. Empirical study on face images classification tasks demonstrates that SSC-SSR not only has superior recognition performance with respect to competitive methods, but also has wide ranges of effective input parameters.
机译:图在基于图的半监督分类中起着重要作用。但是,由于高维数据中的噪声和冗余特征,在高维样本上构造结构良好的图并不是一件容易的事。本文利用随机子空间中的稀疏表示进行图的构建,并提出了一种基于子空间稀疏表示的半监督分类方法,简称SSC-SSR。 SSC-SSR首先从原始空间生成几个随机子空间,然后在这些子空间中寻找稀疏表示系数。接下来,它在由这些系数构成的图上训练半监督线性分类器。最后,它通过最小化线性回归问题将这些分类器组合为整体分类器。与传统的基于图的半监督分类方法不同,SSC-SSR的图是数据驱动的,而不是预先创建的。对人脸图像分类任务的实证研究表明,SSC-SSR不仅具有优于竞争方法的识别性能,而且具有广泛的有效输入参数。

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