Inference Without Compatibility

03/14/2019
by   Michael Law, et al.
0

We consider hypothesis testing problems for a single covariate in the context of a linear model with Gaussian design when p>n. Under minimal sparsity conditions of their type and without any compatibility condition, we construct an asymptotically Gaussian estimator with variance equal to the oracle least-squares. The estimator is based on a weighted average of all models of a given sparsity level in the spirit of exponential weighting. We adapt this procedure to estimate the signal strength and provide a few applications. We support our results using numerical simulations based on algorithm which approximates the theoretical estimator and provide a comparison with the de-biased lasso.

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