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On the Role of ML Estimation and Bregman Divergences in Sparse Representation of Covariance and Precision Matrices

机译:ML估计和Bregman散度在协方差和精确矩阵的稀疏表示中的作用

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Sparse representation of structured signals requires modelling strategies that maintain specific signal properties, in addition to preserving original information content and achieving simpler signal representation. Therefore, the major design challenge is to introduce adequate problem formulations and offer solutions that will efficiently lead to desired representations. In this context, sparse representation of covariance and precision matrices, which appear as feature descriptors or mixture model parameters, respectively, will be in the main focus of this paper.
机译:结构化信号的稀疏表示除了保留原始信息内容并实现更简单的信号表示之外,还需要维持特定信号属性的建模策略。因此,主要的设计挑战是引入适当的问题表述并提供将有效地导致所需表示形式的解决方案。在这种情况下,协方差和精确矩阵的稀疏表示将分别作为特征描述符或混合模型参数出现,将成为本文的主要重点。

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