Deep matrix factorizations (deep MFs) are recent unsupervised data mining techniques inspired by constrained low-rank approximations. They aim to extract complex hierarchies of features within high-dimensional datasets. Most of the loss functions proposed in the literature to evaluate the quality of deep MF models and the underlying optimization frameworks are not consistent because different losses are used at different layers. In this paper, we introduce two meaningful loss functions for deep MF and present a generic framework to solve the corresponding optimization problems. We illustrate the effectiveness of this approach through the integration of various constraints and regularizations, such as sparsity, nonnegativity and minimum-volume. The models are successfully applied on both synthetic and real data, namely for hyperspectral unmixing and extraction of facial features.
翻译:深矩阵因子化(深放大系数)是最近由低度近似值限制所激发的不受监督的数据挖掘技术,目的是从高维数据集中提取复杂的特征等级,文献中提议用于评价深MF模型质量的大部分损失功能和基本优化框架不一致,因为不同层次使用不同的损失。在本文件中,我们为深层MF引入了两个有意义的损失功能,并提出了一个解决相应优化问题的通用框架。我们通过综合各种制约和规范,例如宽度、非惯性和最小量,来说明这一方法的有效性。这些模型成功地应用于合成数据和真实数据,即用于超光谱混集和提取面部特征。