2023
DOI: 10.48550/arxiv.2302.14218
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Debiased Lasso After Sample Splitting for Estimation and Inference in High Dimensional Generalized Linear Models

Abstract: We consider random sample splitting for estimation and inference in high dimensional generalized linear models, where we first apply the lasso to select a submodel using one subsample and then apply the debiased lasso to fit the selected model using the remaining subsample. We show that, no matter including a prespecified subset of regression coefficients or not, the debiased lasso estimation of the selected submodel after a single splitting follows a normal distribution asymptotically. Furthermore, for a set … Show more

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