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LSEbootLS (version 0.1.0)

Bootstrap Methods for Regression Models with Locally Stationary Errors

Description

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.

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Version

Install

install.packages('LSEbootLS')

Monthly Downloads

134

Version

0.1.0

License

GPL (>= 3)

Maintainer

Nicolas Loyola

Last Published

July 1st, 2024

Functions in LSEbootLS (0.1.0)

application

Calculate the bootstrap LSE for a long memory model
Coveragelongmemory

Calculate the coverage of several long-memory models
USinf

US Monthly Inflation Data
Coverageshortmemory

Calculate the coverage for several short-memory models
LSEbootLS-package

Bootstrap Methods for Regression Models with Locally Stationary Errors