Tensor Elliptical Graphic Model
Tensor Elliptical Graphic Model
We address the problem of robust estimation of sparse high dimensional tensor elliptical graphical model. Most of the research focus on tensor graphical model under normality. To extend the tensor graphical model to more heavy-tailed scenarios, motivated by the fact that up to a constant, the spatial-sign covariance matrix can approximate the true covariance matrix when the dimension turns to infinity under tensor elliptical distribution, we proposed a spatial-sign-based estimator to robustly estimate tensor elliptical graphical model, the rate of which matches the existing rate under normality for a wider family of distribution, i.e. elliptical distribution. We also conducted extensive simulations and real data applications to illustrate the practical utility of the proposed methods, especially under heavy-tailed distribution.
Jixuan Liu、Zhengke Lu、Le Zhou、Long Feng、Zhaojun Wang
数学计算技术、计算机技术
Jixuan Liu,Zhengke Lu,Le Zhou,Long Feng,Zhaojun Wang.Tensor Elliptical Graphic Model[EB/OL].(2025-08-01)[2025-08-11].https://arxiv.org/abs/2508.00333.点此复制
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