In this paper, we consider the problem of non-linear dimensionality reduction under uncertainty, both from a theoretical and algorithmic perspectives. Since real-world data usually contain measurements with uncertainties and artifacts, the input space in the proposed framework consists of probability distributions to model the uncertainties associated with each sample. We propose a new dimensionality reduction framework, called NGEU, which leverages uncertainty information and directly extends several traditional approaches, e.g., KPCA, MDA/KMFA, to receive as inputs the probability distributions instead of the original data. We show that the proposed NGEU formulation exhibits a global closed-form solution, and we analyze, based on the Rademacher complexity, how the underlying uncertainties theoretically affect the generalization ability of the framework. Empirical results on different datasets show the effectiveness of the proposed framework.
翻译:在本文中,我们从理论和算法的角度考虑不确定性下的非线性维度减少问题,因为现实世界数据通常含有不确定因素和文物的测量数据,因此,拟议框架中的投入空间由概率分布组成,以模拟与每个样本相关的不确定因素。我们提议一个新的维度减少框架,称为“NGEU”,利用不确定性信息,直接推广几种传统方法,例如,KPA、MDA/KMFA, 将概率分布作为投入,而不是原始数据。我们表明,拟议的NGEU配方显示一种全球封闭式解决办法,我们根据Rademacher的复杂性分析潜在的不确定因素在理论上如何影响框架的普遍化能力。关于不同数据集的实证结果显示了拟议框架的有效性。