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High-dimensional covariance matrix estimation using a low-rank and diagonal decomposition

High-dimensional covariance matrix estimation using a low-rank and diagonal decomposition

来源:Arxiv_logoArxiv
英文摘要

We study high-dimensional covariance/precision matrix estimation under the assumption that the covariance/precision matrix can be decomposed into a low-rank component L and a diagonal component D. The rank of L can either be chosen to be small or controlled by a penalty function. Under moderate conditions on the population covariance/precision matrix itself and on the penalty function, we prove some consistency results for our estimators. A blockwise coordinate descent algorithm, which iteratively updates L and D, is then proposed to obtain the estimator in practice. Finally, various numerical experiments are presented: using simulated data, we show that our estimator performs quite well in terms of the Kullback-Leibler loss; using stock return data, we show that our method can be applied to obtain enhanced solutions to the Markowitz portfolio selection problem.

Mu Zhu、Yilei Wu、Yingli Qin

数学

Mu Zhu,Yilei Wu,Yingli Qin.High-dimensional covariance matrix estimation using a low-rank and diagonal decomposition[EB/OL].(2018-02-16)[2025-05-14].https://arxiv.org/abs/1802.06048.点此复制

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