Litcius/Paper detail

Group inference in high dimensions with applications to hierarchical testing

Zijian Guo, Claude Renaux, Peter Bühlmann, Tommaso Cai

2021Electronic Journal of Statistics30 citationsDOIOpen Access PDF

Abstract

High-dimensional group inference is an essential part of statistical methods for analysing complex data sets, including hierarchical testing, tests of interaction, detection of heterogeneous treatment effects and inference for local heritability. Group inference in regression models can be measured with respect to a weighted quadratic functional of the regression sub-vector corresponding to the group. Asymptotically unbiased estimators of these weighted quadratic functionals are constructed and a novel procedure using these estimators for inference is proposed. We derive its asymptotic Gaussian distribution which enables the construction of asymptotically valid confidence intervals and tests which perform well in terms of length or power. The proposed test is computationally efficient even for a large group, statistically valid for any group size and achieving good power performance for testing large groups with many small regression coefficients. We apply the methodology to several interesting statistical problems and demonstrate its strength and usefulness on simulated and real data.

Topics & Concepts

MathematicsInferenceEstimatorStatistical inferenceStatistical hypothesis testingStatisticsAsymptotic distributionQuadratic equationAlgorithmArtificial intelligenceComputer scienceGeometryStatistical Methods and InferenceStatistical Methods in Clinical TrialsAdvanced Causal Inference Techniques