LSEbootLS0.1.0 package

Bootstrap Methods for Regression Models with Locally Stationary Errors

Implements bootstrap methods for linear regression models with errors following a time-varying process, focusing on approximating the distribution of the least-squares estimator for regression models with locally stationary errors. It enables the construction of bootstrap and classical confidence intervals for regression coefficients, leveraging intensive simulation studies and real data analysis.

  • Maintainer: Nicolas Loyola
  • License: GPL (>= 3)
  • Last published: 2024-07-01