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ivx: Robust Econometric Inference

Drawing statistical inference on the coefficients of a short- or long-horizon predictive regression with persistent regressors by using the IVX method of Magdalinos and Phillips (2009) and Kostakis, Magdalinos and Stamatogiannis (2015).

Installation

You can install the development version from GitHub with:

# Install release version from CRAN
install.packages("ivx")


# install.packages("devtools")
devtools::install_github("kvasilopoulos/ivx")

Usage

library(ivx)
library(magrittr)

This is a basic example, lets load the data first:

# Monthly data from Kostakis et al (2014)
kms %>%
  names()
#>  [1] "Date" "DE"   "LTY"  "DY"   "DP"   "TBL"  "EP"   "BM"   "INF"  "DFY" 
#> [11] "NTIS" "TMS"  "Ret"

Univariate

And then do the univariate estimation:

ivx(Ret ~ DP, data = kms) %>% 
  summary()
#> 
#> Call:
#> ivx(formula = Ret ~ DP, data = kms, horizon = 1)
#> 
#> Coefficients:
#>    Estimate Wald Ind Pr(> chi)
#> DP 0.006489    2.031     0.154
#> 
#> Joint Wald statistic:  2.031 on 1 DF, p-value 0.1541
#> Multiple R-squared:  0.002844,   Adjusted R-squared:  0.001877

ivx(Ret ~ DP, data = kms, horizon = 4) %>% 
  summary()
#> 
#> Call:
#> ivx(formula = Ret ~ DP, data = kms, horizon = 4)
#> 
#> Coefficients:
#>    Estimate Wald Ind Pr(> chi)
#> DP 0.006931    2.271     0.132
#> 
#> Joint Wald statistic:  2.271 on 1 DF, p-value 0.1318
#> Multiple R-squared:  0.01167,    Adjusted R-squared:  0.01358

Multivariate

And the multivariate estimation, for one or multiple horizons:

ivx(Ret ~ DP + TBL, data = kms) %>% 
  summary()
#> 
#> Call:
#> ivx(formula = Ret ~ DP + TBL, data = kms, horizon = 1)
#> 
#> Coefficients:
#>      Estimate Wald Ind Pr(> chi)
#> DP   0.006145    1.819     0.177
#> TBL -0.080717    1.957     0.162
#> 
#> Joint Wald statistic:  3.644 on 2 DF, p-value 0.1617
#> Multiple R-squared:  0.004968,   Adjusted R-squared:  0.003036

ivx(Ret ~ DP + TBL, data = kms, horizon = 4) %>% 
  summary()
#> 
#> Call:
#> ivx(formula = Ret ~ DP + TBL, data = kms, horizon = 4)
#> 
#> Coefficients:
#>      Estimate Wald Ind Pr(> chi)
#> DP   0.006579    2.045     0.153
#> TBL -0.073549    1.595     0.207
#> 
#> Joint Wald statistic:  3.527 on 2 DF, p-value 0.1715
#> Multiple R-squared:  0.018,  Adjusted R-squared:  0.01895

Yang et al. (2020) IVX-AR methodology

ivx_ar(hpi ~ cpi, data = ylpc) %>% 
  summary()
#> 
#> Call:
#> ivx_ar(formula = hpi ~ cpi, data = ylpc, horizon = 1)
#> 
#> Auto () with AR terms q = 4
#> 
#> Coefficients:
#>       Estimate Wald Ind Pr(> chi)  
#> cpi -0.0001775    4.326    0.0375 *
#> ---
#> Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#> 
#> Joint Wald statistic:  4.326 on 1 DF, p-value 0.03753
#> Multiple R-squared:  0.02721,    Adjusted R-squared:  0.02142
#> Wald AR statistic: 132.3 on 4 DF, p-value < 2.2e-16

Please note that the ‘ivx’ project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.

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Install

install.packages('ivx')

Monthly Downloads

209

Version

1.1.0

License

GPL-3

Issues

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Maintainer

Kostas Vasilopoulos

Last Published

November 24th, 2020

Functions in ivx (1.1.0)

ivx-package

Robust Econometric Inference
ivx_fit

Fitter Functions for IVX Models
ac_test

Autocorrelation tests
ivx

Fitting IVX Models
extract.ivx

extract method for ivx objects
delta

Calculate the delta coefficient
ac_test_

Tests for autocorrelation
ivx_ar

Fitting IVX-AR Models
kms

KMS Monthly data
ivx_ar_fit

Fitter Functions for IVX-AR Models
summary.ivx_ar

Summarizing IVX-AR Model Fits
kms_quarterly

KMS Quarterly data
summary.ivx

Summarizing IVX Model Fits
quarterly

Quarterly dataset of KMS
ylpc

YLPC Quarterly data
monthly

Monthly dataset of KMS
vcov.ivx

Calculate Variance-Covariance Matrix for a Fitted Model Object