线性结构协方差矩阵的结构辨识

Adam Mieldzioc
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引用次数: 1

摘要

线性结构协方差矩阵在多变量分析中有着广泛的应用。协方差结构可以从一类线性结构中选择。因此,最优结构是根据最小的差异函数来确定的。本研究采用熵损失函数作为差异函数。给出了从所考虑的结构类别中确定最优结构的方法和算法。通过仿真研究验证了所提方法的准确性。
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Structure identification for a linearly structured covariance matrix
Summary Linearly structured covariance matrices are widely used in multivariate analysis. The covariance structure can be chosen from a class of linear structures. Therefore, the optimal structure is identified in terms of minimizing the discrepancy function. In this research, the entropy loss function is used as the discrepancy function. We give a methodology and algorithm for determining the optimal structure from the class of structures under consideration. The accuracy of the proposed method is checked using a simulation study.
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