Matrix Healy Plot: A Practical Tool for Visual Assessment of Matrix-Variate Normality
Matrix Healy Plot: A Practical Tool for Visual Assessment of Matrix-Variate Normality
Matrix-valued data, where each observation is represented as a matrix, frequently arises in various scientific disciplines. Modeling such data often relies on matrix-variate normal distributions, making matrix-variate normality testing crucial for valid statistical inference. Recently, the Distance-Distance (DD) plot has been introduced as a graphical tool for visually assessing matrix-variate normality. However, the Mahalanobis squared distances (MSD) used in the DD plot require vectorizing matrix observations, restricting its applicability to cases where the dimension of the vectorized data does not exceed the sample size. To address this limitation, we propose a novel graphical method called the Matrix Healy (MHealy) plot, an extension of the Healy plot for vector-valued data. This new plot is based on more accurate matrix-based MSD that leverages the inherent structure of matrix data. Consequently, it offers a more reliable visual assessment. Importantly, the MHealy plot eliminates the sample size restriction of the DD plot and hence more applicable to matrix-valued data. Empirical results demonstrate its effectiveness and practicality compared to the DD plot across various scenarios, particularly in cases where the DD plot is not available due to limited sample sizes.
Fen Jiang、Jianhua Zhao、Changchun Shang、Xuan Ma、Yue Wang、Ye Tao
数学
Fen Jiang,Jianhua Zhao,Changchun Shang,Xuan Ma,Yue Wang,Ye Tao.Matrix Healy Plot: A Practical Tool for Visual Assessment of Matrix-Variate Normality[EB/OL].(2025-05-01)[2025-05-29].https://arxiv.org/abs/2505.00361.点此复制
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