Statistical Inference on High Dimensional Gaussian Graphical Regression Models
Gaussian graphical regressions have emerged as a powerful approach for regressing the precision matrix of a Gaussian graphical model on covariates, which, unlike traditional Gaussian graphical models, can help determine how graphs are modulated by high dimensional subject-level covariates, and recov...
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Zusammenfassung: | Gaussian graphical regressions have emerged as a powerful approach for
regressing the precision matrix of a Gaussian graphical model on covariates,
which, unlike traditional Gaussian graphical models, can help determine how
graphs are modulated by high dimensional subject-level covariates, and recover
both the population-level and subject-level graphs. To fit the model, a
multi-task learning approach {achieves} %has been shown to result in lower
error rates compared to node-wise regressions. However, due to the high
complexity and dimensionality of the Gaussian graphical regression problem, the
important task of statistical inference remains unexplored. We propose a class
of debiased estimators based on multi-task learners for statistical inference
in Gaussian graphical regressions. We show that debiasing can be performed
quickly and separately for the multi-task learners. In a key debiasing step
{that estimates} %involving the estimation of the inverse covariance matrix, we
propose a novel {projection technique} %diagonalization approach that
dramatically reduces computational costs {in optimization} to scale only with
the sample size $n$. We show that our debiased estimators enjoy a fast
convergence rate and asymptotically follow a normal distribution, enabling
valid statistical inference such as constructing confidence intervals and
performing hypothesis testing. Simulation studies confirm the practical utility
of the proposed approach, and we further apply it to analyze gene co-expression
graph data from a brain cancer study, revealing meaningful biological
relationships. |
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DOI: | 10.48550/arxiv.2411.01588 |