2022
DOI: 10.48550/arxiv.2203.06067
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Automatic selection by penalized asymmetric Lq-norm in an high-dimensional model with grouped variables

Abstract: The paper focuses on the automatic selection of the grouped explanatory variables in an high-dimensional model, when the model errors are asymmetric. After introducing the model and notations, we define the adaptive group LASSO expectile estimator for which we prove the oracle properties: the sparsity and the asymptotic normality. Afterwards, the results are generalized by considering the asymmetric L q -norm loss function. The theoretical results are obtained in several cases with respect to the number of var… Show more

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