| Type: | Package |
| Title: | Panel Smooth Transition Regression Modelling |
| Version: | 2.0.0 |
| Description: | Implements the Panel Smooth Transition Regression (PSTR) framework for nonlinear panel data modelling. The modelling procedure consists of three stages: Specification, Estimation and Evaluation. The package provides tools for model specification testing, to do PSTR model estimation, and to do model evaluation. The implemented tests allow for cluster dependence and are heteroskedasticity-consistent. The wild bootstrap and wild cluster bootstrap tests are also implemented. Parallel computation (as an option) is implemented in some functions, especially the bootstrap tests. The package supports parallel computation, which is useful for large-scale bootstrap procedures. |
| Depends: | R (≥ 4.1.0) |
| License: | GPL-3 |
| Encoding: | UTF-8 |
| LazyData: | true |
| RoxygenNote: | 7.3.3 |
| Imports: | tibble, R6, knitr, cli, ggplot2, plotly, magrittr |
| Suggests: | rmarkdown, snowfall, testthat (≥ 3.0.0) |
| Config/testthat/edition: | 3 |
| URL: | https://github.com/yukai-yang/PSTR |
| BugReports: | https://github.com/yukai-yang/PSTR/issues |
| VignetteBuilder: | knitr |
| NeedsCompilation: | no |
| Packaged: | 2026-02-23 12:09:55 UTC; yyang |
| Author: | Yukai Yang |
| Maintainer: | Yukai Yang <yukai.yang@statistik.uu.se> |
| Repository: | CRAN |
| Date/Publication: | 2026-02-27 20:32:19 UTC |
PSTR: A package implementing the Panel Smooth Transition Regression (PSTR) modelling.
Description
The package implements the Panel Smooth Transition Regression (PSTR) modelling.
Details
The modelling procedure consists of three stages: Specification, Estimation and Evaluation. The package offers tools helping the package users to conduct model specification tests, to do PSTR model estimation, and to do model evaluation.
The cluster-dependency and heteroskedasticity-consistent tests are implemented in the package.
The wild bootstrap and cluster wild bootstrap tests are also implemented.
Parallel computation (as an option) is implemented in some functions, especially the bootstrap tests. Therefore, the package suits tasks running many cores on super-computation servers.
The Panel Smooth Transition Regression (PSTR) model is defined to be
y_{it} = \mu_i + \beta_0' x_{it} + \beta_1' z_{it} g_{it} + u_{it}
where g_{it} is the transition function taking the logistic form with the transition variable for individual i, x_{it} contains the explanatory variables in the linear part, and z_{it} contains the explanatory variables in the nonlinear part, and they can be different.
The transition function g_{it} takes the logistic form
g(q_{it} ; \gamma, c) = \left( 1 + \exp \left( - \gamma \prod_{j=1}^{m} (q_{it} - c_j) \right) \right)^{-1}
with \gamma > 0 and c_1 < c_2 < ... < c_m. \gamma can be reparametrized as \gamma = \exp{\delta} where \delta is a real number.
Author and Maintainer
Yukai Yang
Department of Statistics, Uppsala University
References
González, A., Teräsvirta, T., van Dijk, D. and Yang, Y. (2005) "Panel Smooth Transition Regression Models", SSE/EFI Working Paper Series in Economics and Finance 604, Stockholm School of Economics, revised 11 Oct 2017.
Function for Initialization
NewPSTR initialize the modelling by creating an object of the class PSTR.
Functions for Model Specification
LinTest implements the linearity tests.
WCB_LinTest implements the wild bootstrap (WB) and the wild cluster bootstrap (WCB) linearity tests.
Function for Model Estimation
EstPSTR implements the estimation of the PSTR model.
Functions for Model Evaluation
EvalTest implements the evaluation tests.
WCB_TVTest implements the wild bootstrap (WB) and the wild cluster bootstrap (WCB) evaluation test of no time-varying parameters.
WCB_HETest implements the wild bootstrap (WB) and the wild cluster bootstrap (WCB) evaluation test of no remaining nonlinearity (no remaining heterogeneity).
Other Functions
version shows the version number and some information of the package.
print.PSTR prints the object of the class PSTR.
plot_transition plots the transition function of an estimated PSTR model.
plot_coefficients plots coefficients, standard errors, and p-values against the transition variable.
plot_response plots curve or surfaces of the expected reponse agaist the corresponding variable.
plot_target plots the surface of the target function for the nonlinear least square estimation.
Data
Hansen99 a balanced panel of 565 US firms observed for the years 1973–1987.
sunspot transformed Wolf annual sunspot numbers for the years 1710-1979.
Author(s)
Maintainer: Yukai Yang yukai.yang@statistik.uu.se (ORCID)
See Also
Useful links:
Estimate a PSTR model by nonlinear least squares
Description
EstPSTR estimates either a nonlinear PSTR model (when iq is provided) or a
linear fixed-effects panel regression (when iq = NULL).
Usage
EstPSTR(
use,
im = 1,
iq = NULL,
par = NULL,
useDelta = FALSE,
vLower = 2,
vUpper = 2,
method = "L-BFGS-B"
)
Arguments
use |
An object of class |
im |
Integer. Number of switches |
iq |
Either an integer index (column number in the transition-variable matrix) or a
character string (transition-variable name) specifying which transition variable to use.
If |
par |
Numeric vector of length |
useDelta |
Logical. If |
vLower |
Numeric scalar or vector. Lower offsets defining the lower bounds in the optimiser.
Bounds are applied to the internal parameter vector used in optimisation (with the first
element being |
vUpper |
Numeric scalar or vector. Upper offsets defining the upper bounds in the optimiser.
Bounds are applied to the internal parameter vector used in optimisation (with the first
element being |
method |
Character. Optimisation method passed to |
Details
Two equivalent interfaces are available:
Wrapper function:
EstPSTR(use = obj, ...).R6 method:
obj$EstPSTR(...).
The wrapper calls the corresponding R6 method and returns use invisibly.
The transition function is logistic and depends on a transition variable q_{it} and
nonlinear parameters \gamma > 0 and switching locations c_1 < \cdots < c_m:
g(q_{it}; \gamma, c_1,\ldots,c_m) = \left(1 + \exp\left[-\gamma \prod_{j=1}^{m}(q_{it}-c_j)\right]\right)^{-1}.
The smoothness parameter is internally reparametrised as \gamma = \exp(\delta), where
\delta \in \mathbb{R}. The optimisation is always carried out in \delta and c.
If par = NULL, the function constructs default initial values from quantiles of the
selected transition variable and treats the first element as \delta.
Value
Invisibly returns use with estimation results added. In particular, for a
nonlinear PSTR model (iq not NULL), the object contains (among others):
deltaEstimate of
\delta.gammaEstimate of
\gamma = \exp(\delta).cEstimates of
c_1,\ldots,c_m.vgEstimated transition-function values
g_{it}.betaEstimated coefficients (named as
var_0for linear-part coefficients andvar_1for nonlinear-part coefficients).vUResiduals.
vMEstimated individual effects.
s2Estimated residual variance.
covCluster-robust and heteroskedasticity-consistent covariance matrix of all estimates.
seStandard errors corresponding to
est.estVector of all estimates (coefficients followed by nonlinear parameters).
mbetaEstimates of coefficients in the second extreme regime (when available).
mseStandard errors for
mbeta(when available).
For a linear fixed-effects model (iq = NULL), the object contains beta, vU,
vM, s2, cov, se, and est.
See Also
NewPSTR, LinTest, WCB_LinTest,
EvalTest, stats::optim.
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala","debta","cfa","sales"),
tvars = c("vala"), iT = 14)
# 1) Linear fixed-effects model
pstr <- EstPSTR(use = pstr)
print(pstr, mode = "estimates", digits = 6)
# 2) Nonlinear PSTR model
pstr <- EstPSTR(use = pstr, im = 1, iq = 1, useDelta = TRUE,
par = c(.63, 0), vLower = 4, vUpper = 4)
print(pstr, mode = "estimates", digits = 6)
# R6 method interface (equivalent)
pstr$EstPSTR(im = 1, iq = 1, useDelta = TRUE, par = c(.63, 0), method = "CG")
Evaluate an estimated PSTR model
Description
EvalTest provides post-estimation evaluation tests for an estimated PSTR model.
It supports two null hypotheses:
- Parameter constancy
No time variation in parameters (labelled
"time-varying").- No remaining nonlinearity
No remaining nonlinearity/heterogeneity given a candidate transition variable (labelled
"heterogeneity").
Usage
EvalTest(use, type = c("time-varying", "heterogeneity"), vq = NULL)
WCB_TVTest(use, iB = 100, parallel = FALSE, cpus = 4)
WCB_HETest(use, vq, iB = 100, parallel = FALSE, cpus = 4)
Arguments
use |
An object of class |
type |
Character vector. Which evaluation tests to run in |
vq |
Numeric vector. Candidate transition variable used by the no remaining nonlinearity
test. Required if |
iB |
Integer. Number of bootstrap replications. Default is |
parallel |
Logical. Whether to use parallel computation (via the snowfall backend). |
cpus |
Integer. Number of CPU cores used if |
Details
Wild bootstrap (WB) and wild cluster bootstrap (WCB) versions are available via
WCB_TVTest (parameter constancy) and WCB_HETest (no remaining nonlinearity).
Two equivalent interfaces are available for each test:
Wrapper function, for example
EvalTest(use = obj, ...).R6 method, for example
obj$EvalTest(...).
Each wrapper calls the corresponding R6 method and returns use invisibly.
The bootstrap variants are computationally intensive. WB is robust to heteroskedasticity,
while WCB is additionally robust to within-individual dependence (cluster dependence).
Parallel execution can be enabled via parallel and cpus.
Value
Invisibly returns use with evaluation results added.
tvA list of parameter-constancy (time-varying) test results, one element per
m.htA list of no remaining nonlinearity (heterogeneity) test results, one element per
m.wcb_tvA numeric matrix of WB/WCB p-values for parameter-constancy tests (one row per
m).wcb_htA numeric matrix of WB/WCB p-values for no remaining nonlinearity tests (one row per
m).
The individual list elements in tv and ht contain LM-type test statistics and
p-values (including HAC variants), consistent with the output from LinTest.
See Also
NewPSTR, LinTest, WCB_LinTest,
EstPSTR.
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala","debta","cfa","sales"),
tvars = c("vala"), iT = 14)
# estimate first
pstr <- EstPSTR(use = pstr, im = 1, iq = 1, useDelta = TRUE, par = c(.63, 0), method = "CG")
# evaluation tests
pstr <- EvalTest(
use = pstr,
type = c("time-varying","heterogeneity"),
vq = as.matrix(Hansen99[,'vala'])[,1]
)
print(pstr, mode = "evaluation")
# bootstrap variants (requires snowfall)
library(snowfall)
pstr <- WCB_TVTest(
use = pstr, iB = 4,
parallel = TRUE, cpus = 2)
pstr <- WCB_HETest(
use = pstr,
vq = as.matrix(Hansen99[,'vala'])[,1],
iB = 4, parallel = TRUE, cpus = 2)
print(pstr, mode = "evaluation")
A balanced panel of 565 US firms observed for the years 1973–1987
Description
A dataset containing a balanced panel data of annual observations over the period 1973-1987 (15 years) for 560 US firms for the variables described below.
Usage
Hansen99
Format
A tibble with 7840 rows and 20 variables:
- cusip
Committee on Uniform Security Identication Procedures firm code number, the first 6 digits (CNUM)
- year
2-digit year of the data
- inva
investment to assets ratio
- dt_75
dummy variable for 1975
- dt_76
dummy variable for 1976
- dt_77
dummy variable for 1977
- dt_78
dummy variable for 1978
- dt_79
dummy variable for 1979
- dt_80
dummy variable for 1980
- dt_81
dummy variable for 1981
- dt_82
dummy variable for 1982
- dt_83
dummy variable for 1983
- dt_84
dummy variable for 1984
- dt_85
dummy variable for 1985
- dt_86
dummy variable for 1986
- dt_87
dummy variable for 1987
- vala
lagged total market value to assets ratio ("Tobin's Q")
- debta
lagged long term debt to assets ratio
- cfa
lagged cash flow to assets ratio
- sales
lagged sales during the year (million USD)
Details
The structure of the dataset is such that the time index runs “fast”, while the firm index runs “slow”; that is, first all 14 observations for the first firm are given, then the 14 observations for the second firm, etc.
Since we used one year lagged variables of "vala", "debta", "cfa" and "cfa" as regressors, the records in 1973 are skipped.
All values are nominal and millions of dollars except where otherwise noted. Stocks are end of year.
Source
https://www.ssc.wisc.edu/~bhansen/progs/joe_99.html
Linearity (homogeneity) tests for PSTR models
Description
These functions conduct linearity (homogeneity) tests against the alternative of a logistic smooth transition component in a Panel Smooth Transition Regression (PSTR) model.
Usage
LinTest(use)
WCB_LinTest(use, iB = 100, parallel = FALSE, cpus = 2)
Arguments
use |
An object of class |
iB |
Integer. Number of bootstrap repetitions. Default is |
parallel |
Logical. Whether to use parallel computation in bootstrap routines. |
cpus |
Integer. Number of CPU cores to use when |
Details
Two equivalent interfaces are available:
-
Wrapper functions:
LinTest(use = obj)andWCB_LinTest(use = obj, ...). -
R6 methods:
obj$LinTest()andobj$WCB_LinTest(...).
The wrapper functions call the corresponding R6 methods and return the (mutated) object invisibly.
The tests are carried out for each potential transition variable specified in tvars
when creating the model via NewPSTR. For each transition variable, tests are computed
for the number of switches m = 1, \ldots, im, where im is the maximal number of switches.
The procedures produce two families of tests:
- (i) Linearity tests for each
m -
For a fixed
m, the null hypothesis isH_0^i: \beta_{i} = \beta_{i-1} = \cdots = \beta_{1} = 0, \qquad i = 1, \ldots, m. - (ii) Sequence tests for selecting
m -
These are conditional tests with null
H_0^i: \beta_{i} = 0 \mid \beta_{i+1} = \cdots = \beta_{m} = 0, \qquad i = 1, \ldots, m.
For each hypothesis, four asymptotic LM-type tests are reported:
-
\chi^2-version LM test. F-version LM test.
-
\chi^2-version HAC LM test (heteroskedasticity and autocorrelation consistent). F-version HAC LM test.
WCB_LinTest additionally reports wild bootstrap (WB) and wild cluster bootstrap (WCB) p-values.
WB is robust to heteroskedasticity, while WCB is robust to both heteroskedasticity and within-individual
dependence (cluster dependence). The bootstrap routines can be computationally expensive; parallel execution
can be enabled via parallel = TRUE.
Results are stored in the returned object (see Value).
Value
Both functions return use invisibly, after adding the following components:
testList. Asymptotic linearity test results for each transition variable and
m.sqtestList. Asymptotic sequence test results for each transition variable and
m.wcb_testList (only for
WCB_LinTest). WB and WCB p-values for the linearity tests.wcb_sqtestList (only for
WCB_LinTest). WB and WCB p-values for the sequence tests.
See Also
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala","debta","cfa","sales"),
tvars = c("vala"), iT = 14)
# R6 method interface
pstr$LinTest()
# Wrapper interface (equivalent)
pstr <- LinTest(pstr)
# Show results
print(pstr, mode = "tests")
# Bootstrap tests (can be slow)
pstr$WCB_LinTest(iB = 200, parallel = TRUE, cpus = 2)
# or
pstr <- WCB_LinTest(use = pstr, iB = 200, parallel = TRUE, cpus = 2)
print(pstr, mode = "tests")
Create a PSTR model object
Description
Create an R6 object of class "PSTR" to be used as the main container for
Panel Smooth Transition Regression (PSTR) modelling in this package.
You typically call NewPSTR() once, and then pass the returned object to
specification, estimation and evaluation functions.
Usage
NewPSTR(data, dep, indep, indep_k = NULL, tvars, im = 1, iT)
Arguments
data |
A tibble containing the panel in long format. The number of rows must be
|
dep |
A single column index or a single column name specifying the dependent variable. |
indep |
A vector of column indices or column names specifying the regressors in the linear part. |
indep_k |
Optional. A vector of column indices or column names specifying the regressors
in the non-linear part. If |
tvars |
A vector of column indices or column names specifying the candidate transition variables. |
im |
Integer. The maximal number of switches used in linearity-related tests.
Default is |
iT |
Integer. The time dimension (number of time observations per individual). |
Details
The candidate transition variables in tvars will be stored in the object
and can be tested one by one by functions such as LinTest.
Missing values in the dependent variable, linear regressors, non-linear regressors,
or transition variables are removed internally (row-wise).
The number of individuals N is inferred from nrow(data) and iT
after removing missing values.
Value
An R6 object of class "PSTR".
See Also
LinTest, WCB_LinTest, EstPSTR,
EvalTest, WCB_TVTest, WCB_HETest.
Examples
pstr <- NewPSTR(
Hansen99,
dep = "inva",
indep = 4:20,
indep_k = c("vala", "debta", "cfa", "sales"),
tvars = c("vala", "debta"),
iT = 14
)
# print summary (your R6 print method)
pstr
print(pstr, mode = "summary")
# after running tests/estimation, you can print other sections
# print(pstr, mode = "tests")
# print(pstr, mode = "estimates")
# print(pstr, mode = "evaluation")
Plot coefficients, standard errors, and p-values against the transition variable
Description
This function plots three curves against the transition variable: the coefficient function, its standard error, and the corresponding p-value.
Usage
plot_coefficients(obj, vars, length.out = 100, color = "blue", size = 1.5)
Arguments
obj |
An object of class |
vars |
A vector of column indices or variable names from the nonlinear part. |
length.out |
Number of grid points over the transition variable. |
color |
Line colour. |
size |
Line width. |
Details
For each selected variable j, the curves are
f_1(x) = \beta_{0j} + \beta_{1j} g(x;\gamma,c)
f_2(x) = se\{f_1(x)\}
f_3(x) = 1 - \Pr\left\{X < \left[f_1(x)/f_2(x)\right]^2\right\}
where X follows a chi-square distribution with one degree of freedom.
In addition to the exported function plot_coefficients(obj = ...),
the same functionality is available as an R6 method via
obj$plot_coefficients(...).
Value
A named list of ggplot2 objects.
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala","debta","cfa","sales"),
tvars = c("vala","debta","cfa","sales"), iT = 14)
pstr <- EstPSTR(use = pstr, im = 1, iq = 1,
useDelta = TRUE, par = c(.63,0), method = "CG")
# Exported function
ret <- plot_coefficients(pstr, vars = 1:4)
# R6 method
ret2 <- pstr$plot_coefficients(vars = 1:4)
Plot the expected response against selected variables
Description
This function plots the effect-adjusted expected response for selected nonlinear variables in a PSTR model.
Usage
plot_response(
obj,
vars,
log_scale = FALSE,
length.out = 20,
color = "blue",
size = 1.5
)
Arguments
obj |
An object of class |
vars |
Integer vector of column indices from the nonlinear part. |
log_scale |
Logical scalar or length-2 vector indicating whether to use log scale for the regressor and/or transition variable. |
length.out |
Scalar or length-2 numeric vector controlling grid size. |
color |
Line colour. |
size |
Line width. |
Details
If the selected variable differs from the transition variable, a 3-D surface of
(\beta_{k,0} + \beta_{k,1} g(q;\gamma,c)) z_{k}
is plotted against z_k and the transition variable.
If the selected variable coincides with the transition variable, a curve is plotted instead.
In addition to the exported function
plot_response(obj = ...), the same functionality is available
as an R6 method via obj$plot_response(...).
Value
A named list of ggplot2 (curve) and/or
plotly (surface) objects.
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala","debta","cfa","sales"),
tvars = c("vala","debta","cfa","sales"), iT = 14)
pstr <- EstPSTR(use = pstr, im = 1, iq = 1,
useDelta = TRUE, par = c(.63,0), method = "CG")
# Exported interface
ret <- plot_response(pstr, vars = 1:4)
# R6 method
ret2 <- pstr$plot_response(vars = 1:4)
Plot the surface of the target function for nonlinear least squares estimation
Description
This function plots a 3-D surface of the nonlinear least squares (NLS) target function used in estimating a PSTR model. It is mainly intended as a diagnostic tool for choosing reasonable initial values for the nonlinear parameters.
Usage
plot_target(
obj,
im = 1,
iq = NULL,
par = NULL,
basedon = c(1, 2),
from,
to,
length.out = 40
)
Arguments
obj |
An object of class |
im |
Integer. The number of switches |
iq |
Either an integer index (a column number in the transition-variable matrix) or a character string (a transition-variable name) specifying which transition variable is used when computing the target function. |
par |
Numeric vector of length |
basedon |
Integer vector of length |
from |
Numeric vector of length |
to |
Numeric vector of length |
length.out |
Either a scalar or a numeric vector of length |
Details
The target function is evaluated on a two-dimensional grid over two selected parameters,
while all other nonlinear parameters are held fixed at values provided by par.
The nonlinear parameter vector is always ordered as
\delta, c_1, \ldots, c_m, where \gamma = \exp(\delta) and m = im.
In addition to the exported function plot_target(obj = ...), the same functionality
is available as an R6 method via obj$plot_target(...).
Value
A plotly object representing a 3-D surface plot of the target function
values evaluated on the specified parameter grid.
See Also
NewPSTR, LinTest, WCB_LinTest,
EstPSTR, EvalTest, WCB_TVTest,
WCB_HETest
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala", "debta", "cfa", "sales"),
tvars = c("vala"), iT = 14)
# 1) Exported function interface
ret <- plot_target(obj = pstr, iq = 1, basedon = c(1, 2),
from = c(log(1), 6), to = c(log(18), 10),
length.out = c(40, 40))
# 2) R6 method interface
ret2 <- pstr$plot_target(iq = 1, basedon = c(1, 2),
from = c(log(1), 6), to = c(log(18), 10),
length.out = c(40, 40))
Plot the transition function of an estimated PSTR model
Description
This function plots the estimated transition function
g(q;\gamma,c) of a fitted PSTR model.
Usage
plot_transition(
obj,
size = 1.5,
color = "blue",
xlim = NULL,
ylim = NULL,
fill = NULL,
alpha = NULL
)
Arguments
obj |
An object of class |
size |
Point size. |
color |
Point colour. |
xlim |
Optional numeric vector of length 2 specifying x-axis limits. |
ylim |
Optional numeric vector of length 2 specifying y-axis limits. |
fill |
Optional colour for highlighting the support of observed q. |
alpha |
Transparency level for points and shading. |
Details
Observed transition values are displayed together with the fitted transition curve. For models with multiple switches, multiple curves are shown.
In addition to the exported function
plot_transition(obj = ...), the same functionality is
available as an R6 method via obj$plot_transition(...).
Value
A ggplot2 object.
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala","debta","cfa","sales"),
tvars = c("vala"), iT = 14)
pstr <- EstPSTR(use = pstr, im = 1, iq = 1,
useDelta = TRUE, par = c(.63,0), method = "CG")
# Exported function
plot_transition(pstr)
# R6 method
pstr$plot_transition()
Print a PSTR model object
Description
Print method for objects of class "PSTR".
Arguments
x |
An object of class |
... |
Further arguments passed to the underlying print routine. See Arguments below. |
Details
The print output is organised into four sections:
"summary"Data summary: panel dimensions, dependent variable, linear/non-linear regressors, transition variables.
"tests"Specification tests: linearity (homogeneity) tests and the sequence of homogeneity tests (optionally with WB/WCB p-values if available).
"estimates"Estimation results: coefficient estimates with standard errors and t-ratios, printed in chunks to fit the console width.
"evaluation"Evaluation tests: parameter constancy and no-remaining-nonlinearity tests (optionally with WB/WCB p-values if available).
In addition to calling print(x, ...), the same functionality is available
as an R6 method via x$print(...).
Value
Invisibly returns x.
Arguments
The following arguments are supported (they are forwarded to the R6 method x$print()):
formatCharacter. Output format passed to
knitr::kable()(for example"simple","pipe","latex"). Default is"simple".modeCharacter vector specifying which sections to print. It is matched (partially) against
c("summary","tests","estimates","evaluation"). Default is"summary".digitsInteger. Number of significant digits used in printed tables. Default is
4.
See Also
NewPSTR, LinTest, WCB_LinTest,
EstPSTR, EvalTest, WCB_TVTest,
WCB_HETest.
Examples
pstr <- NewPSTR(Hansen99, dep = "inva", indep = 4:20,
indep_k = c("vala","debta","cfa","sales"),
tvars = c("vala","debta","cfa","sales"), iT = 14)
# default: summary only
pstr
# specification tests
print(pstr, mode = "tests", format = "simple")
print(pstr, mode = "tests", format = "pipe", caption = "The test results")
# estimates
print(pstr, mode = "estimates")
# evaluation
print(pstr, mode = "evaluation")
# R6 method interface (same output)
pstr$print(mode = c("summary","tests"))
Transformed Wolf annual sunspot numbers for the years 1710-1979
Description
A dataset containing the transformed Wolf annual sunspot numbers for the years 1710-1979.
Usage
sunspot
Format
A tibble with 270 rows and 11 variables:
- spot_0
transformed sunspot
- spot_1
transformed sunspot, lag one
- spot_2
transformed sunspot, lag two
- spot_3
transformed sunspot, lag three
- spot_4
transformed sunspot, lag four
- spot_5
transformed sunspot, lag five
- spot_6
transformed sunspot, lag six
- spot_7
transformed sunspot, lag seven
- spot_8
transformed sunspot, lag eight
- spot_9
transformed sunspot, lag nine
- spot_10
transformed sunspot, lag ten
Details
Each column of the data matrix is a lagged transformed sunspot observations from lag order 0 to 10.
The data were transformed by using the formula
y_t = 2 \left\{ (1 + x_t)^{1/2} -1 \right\}
see Ghaddar and Tong (1981)
References
Ghaddar, D. K. and Tong, H. (1981) Data transformation and self-exciting threshold autoregression, Applied Statistics, 30, 238–48.
Source
https://www.sidc.be/html/sunspot.html
Show the version number of some information.
Description
This function shows the version number and some information of the package.
Usage
version()
Author(s)
Yukai Yang, yukai.yang@statistik.uu.se