Asymptotic properties of the residual bootstrap for Lasso estimators

  • Chatterjee A
  • Lahiri S
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Abstract

In this article, we derive the asymptotic distribution of the bootstrapped Lasso estimator of the regression parameter in a multiple linear regression model. It is shown that under some mild regularity conditions on the design vectors and the regularization parameter, the bootstrap approximation converges weakly to a random measure. The convergence result rigorously establishes a previously known heuristic formula for the limit distribution of the bootstrapped Lasso estimator. It is also shown that when one or more components of the regression parameter vector are zero, the bootstrap may fail to be consistent.

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APA

Chatterjee, A., & Lahiri, S. (2010). Asymptotic properties of the residual bootstrap for Lasso estimators. Proceedings of the American Mathematical Society, 138(12), 4497–4509. https://doi.org/10.1090/s0002-9939-2010-10474-4

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