In this paper, we propose a novel subspace learning framework for one-class classification. The proposed framework presents the problem in the form of graph embedding. It includes the previously proposed subspace one-class techniques as its special cases and provides further insight on what these techniques actually optimize. The framework allows to incorporate other meaningful optimization goals via the graph preserving criterion and reveals spectral and spectral regression-based solutions as alternatives to the previously used gradient-based technique. We combine the subspace learning framework iteratively with Support Vector Data Description applied in the subspace to formulate Graph-Embedded Subspace Support Vector Data Description. We experimentally analyzed the performance of newly proposed different variants. We demonstrate improved performance against the baselines and the recently proposed subspace learning methods for one-class classification.
翻译:在本文中,我们提议了一个用于单级分类的新颖的子空间学习框架。拟议框架以图嵌入的形式提出问题。它包括以前提议的子空间单级技术,作为其特例,并进一步深入了解这些技术的实际优化之处。框架允许通过图保存标准纳入其他有意义的优化目标,并揭示光谱和光谱回归解决方案,作为以前使用的梯度基技术的替代品。我们将子空间学习框架与在子空间应用的支持矢量数据说明相迭地结合起来,以制定图嵌入的子空间支持矢量数据说明。我们实验分析了新提出的不同变式的性能。我们展示了相对于基线和最近提议的单级分类子空间学习方法的改进性能。