LSEbootLS - 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. The methodology is
based on the approach described in Ferreira et al. (2020),
allowing errors to be locally approximated by stationary
processes.