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Robust Covariance Matrix Estimation for High-Dimensional Compositional Data with Application to Sales Data Analysis

Danning Li, Arun Srinivasan, Qian Chen, Lingzhou Xue

2022Journal of Business and Economic Statistics10 citationsDOIOpen Access PDF

Abstract

Compositional data arises in a wide variety of research areas when some form of standardization and composition is necessary. Estimating covariance matrices is of fundamental importance for high-dimensional compositional data analysis. However, existing methods require the restrictive Gaussian or sub-Gaussian assumption, which may not hold in practice. We propose a robust composition adjusted thresholding covariance procedure based on Huber-type M-estimation to estimate the sparse covariance structure of high-dimensional compositional data. We introduce a cross-validation procedure to choose the tuning parameters of the proposed method. Theoretically, by assuming a bounded fourth moment condition, we obtain the rates of convergence and signal recovery property for the proposed method and provide the theoretical guarantees for the cross-validation procedure under the high-dimensional setting. Numerically, we demonstrate the effectiveness of the proposed method in simulation studies and also a real application to sales data analysis.

Topics & Concepts

CovarianceCompositional dataComputer scienceCovariance matrixGaussianEstimation of covariance matricesAlgorithmBounded functionCovariance functionMoment (physics)Convergence (economics)UnobservableData miningMathematicsMathematical optimizationEconometricsStatisticsClassical mechanicsQuantum mechanicsEconomic growthPhysicsMathematical analysisEconomicsGeochemistry and Geologic MappingAdvanced Statistical Methods and ModelsBlind Source Separation Techniques
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