Estimating High-dimensional Covariance and Precision Matrices under General Missing Dependence
Seongoh Park, Xinlei Wang, Johan Lim

TL;DR
This paper develops theoretical guarantees for the inverse probability weighting estimator of covariance matrices under complex missing data dependencies, enabling more accurate high-dimensional statistical inference.
Contribution
It establishes the optimal convergence rate of the IPW estimator under general missing dependencies, extending previous results limited to simple missing structures.
Findings
Optimal convergence rate of $O_p(\sqrt{rac{\log p}{n}})$ for the IPW estimator.
Theoretical deviation bounds even with relaxed assumptions on missing data.
Comparison of IPW with imputation methods in simulation studies.
Abstract
A sample covariance matrix of completely observed data is the key statistic in a large variety of multivariate statistical procedures, such as structured covariance/precision matrix estimation, principal component analysis, and testing of equality of mean vectors. However, when the data are partially observed, the sample covariance matrix from the available data is biased and does not provide valid multivariate procedures. To correct the bias, a simple adjustment method called inverse probability weighting (IPW) has been used in previous research, yielding the IPW estimator. The estimator plays the role of in the missing data context so that it can be plugged into off-the-shelf multivariate procedures. However, theoretical properties (e.g. concentration) of the IPW estimator have been only established under very simple missing structures; every variable…
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