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qardlr: Quantile Autoregressive Distributed Lag Model

R implementation of the Quantile Autoregressive Distributed Lag (QARDL) model by Cho, Kim & Shin (2015).

Overview

The qardlr package provides tools for estimating quantile-specific long-run equilibrium relationships and short-run dynamics using the QARDL framework. This approach extends classical ARDL cointegration analysis to the quantile regression setting, allowing researchers to examine how relationships vary across different points of the conditional distribution.

Installation

# Install from CRAN (when available)
install.packages("qardlr")

Key Features

  • Quantile regression across multiple tau values
  • BIC-based automatic lag selection (p, q)
  • Error Correction Model (ECM) parameterization
  • Long-run (β), short-run AR (φ), and impact (γ) parameters
  • Wald tests for parameter constancy across quantiles
  • Rolling/recursive QARDL estimation for stability analysis
  • Monte Carlo simulation for finite-sample properties
  • Publication-ready output tables (text, LaTeX, HTML)

Quick Start

library(qardlr)

# Load example data
data(qardl_sim)

# Basic QARDL estimation with automatic lag selection
fit <- qardl(y ~ x1 + x2, data = qardl_sim, 
             tau = c(0.25, 0.50, 0.75))

# View results
summary(fit)

# Wald tests for parameter constancy
wald_results <- qardl_wald(fit)
print(wald_results)

# Generate publication-ready table
cat(qardl_table(fit, type = "latex"))

The QARDL Model

The QARDL(p,q) model is specified as:

$$Q_{y_t}(\tau | \mathcal{F}{t-1}) = c(\tau) + \sum{i=1}^{p} \phi_i(\tau) y_{t-i} + \sum_{j=0}^{q-1} \gamma'j(\tau) x{t-j}$$

Key Parameters:

  • β(τ): Long-run parameters = Σγ(τ) / (1 - Σφ(τ))
  • φ(τ): Short-run AR coefficients
  • γ(τ): Short-run impact parameters
  • ρ(τ): Speed of adjustment (ECM) = Σφ(τ) - 1

Functions

FunctionDescription
qardl()Main QARDL estimation
qardl_wald()Wald tests for parameter constancy
qardl_rolling()Rolling/recursive window estimation
qardl_simulate()Monte Carlo simulation
qardl_bic_select()BIC-based lag selection
qardl_table()Publication-ready tables

ECM Parameterization

Use ecm = TRUE for Error Correction Model form:

fit_ecm <- qardl(y ~ x1 + x2, data = qardl_sim, 
                 tau = c(0.25, 0.50, 0.75), 
                 ecm = TRUE)
summary(fit_ecm)

Rolling Window Analysis

# Rolling QARDL with 50-observation window
roll <- qardl_rolling(y ~ x1 + x2, data = qardl_sim,
                      tau = c(0.25, 0.50, 0.75), 
                      p = 2, q = 2, window = 50)
plot(roll, which = "beta", var = 1)

Monte Carlo Simulation

# Assess finite-sample properties
mc <- qardl_simulate(nobs = 200, reps = 1000, 
                     tau = c(0.25, 0.50, 0.75),
                     p = 1, q = 1, k = 1)
print(mc)

Citation

If you use this package, please cite:

Cho, J.S., Kim, T.-H., & Shin, Y. (2015). Quantile cointegration in the autoregressive distributed-lag modeling framework. Journal of Econometrics, 188(1), 281-300. https://doi.org/10.1016/j.jeconom.2015.01.003

Author

Dr. Merwan Roudane
Email: merwanroudane920@gmail.com

License

GPL-3

Copy Link

Version

Install

install.packages('qardlr')

Monthly Downloads

134

Version

1.0.1

License

GPL-3

Issues

Pull Requests

Stars

Forks

Maintainer

Muhammad Alkhalaf

Last Published

March 13th, 2026

Functions in qardlr (1.0.1)

vcov.qardl

Variance-Covariance Method for QARDL
qardlr-package

qardlr: Quantile Autoregressive Distributed Lag Model
qardl_rolling

Rolling Window QARDL Estimation
summary.qardl

Summary of QARDL Results
qardl_bic_select

BIC-Based Lag Order Selection for QARDL
qardl_wald

Wald Tests for QARDL Parameter Constancy
qardl_simulate

Monte Carlo Simulation for QARDL
qardl_table

Generate Publication-Ready QARDL Tables
qardl_estimate

Core QARDL Estimation
qardl_sim

Simulated QARDL Dataset
wald_constancy_test

Wald Constancy Test
wald_pairwise_tests

Pairwise Wald Tests
get_stars_latex

Get LaTeX Stars
compute_ecm

Compute ECM Parameterization
build_latex_table

Build LaTeX Table
build_html_table

Build HTML Table
get_stars_html

Get HTML Stars
coef.qardl

Coefficients Method for QARDL
dgp_qardl

Data Generating Process for QARDL
compute_longrun

Compute Long-Run Parameters
build_text_table

Build Text Table
get_stars

Get Significance Stars
print_bic_grid

Print BIC Grid
print.qardl_wald

Print QARDL Wald Test Results
print.qardl_rolling

Print Rolling QARDL Results
print_detailed_table

Print Detailed Parameter Table
qardl

Quantile Autoregressive Distributed Lag Model Estimation
predict.qardl

Predict Method for QARDL
plot.qardl_rolling

Plot Rolling QARDL Results
print_param_table

Print Parameter Table
print.qardl_mc

Print Monte Carlo Results
print.qardl

Print QARDL Results