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Estimation methods for a linearly structured covariance matrix
2023, Mieldzioc, Adam
Summary Covariance matrices with a linear structure are widely used in multivariate analysis. The choice of the most appropriate covariance structure can be made from a class of possible linear structures. Once we have made the choice, an important question is how we can estimate the covariance matrix for a given covariance structure. This article describes methods used to estimate the structured covariance matrix, and indicates the advantages and disadvantages of the selected methods.
Structure identification for a linearly structured covariance matrix: part II
2023, Mieldzioc, Adam
Summary Covariance matrices with a linear structure are widely used in multivariate analysis. The choice of covariance structure can be made from a set of possible linear structures. As a result, the most appropriate structure is determined by minimizing the discrepancy function. This paper is a continuation of previous work on identifying linear structures with an entropy loss function as a discrepancy function. We present extensive simulation studies on the correctness of identification with the assumed pentagonal banded Toeplitz structure.
On estimation of a partitioned covariance matrix with linearly structured blocks
2025, Filipiak, Katarzyna, Markiewicz, Augustyn, Mieldzioc, Adam, Mrowińska, Malwina