Package: tseffects 0.2.1

tseffects: Dynamic Inferences from Time Series (with Interactions)

Autoregressive distributed lag (A[R]DL) models (and their reparameterized equivalent, the Generalized Error-Correction Model [GECM]) are the workhorse models in uncovering dynamic inferences. ADL models are simple to estimate; this is what makes them attractive. Once these models are estimated, what is less clear is how to uncover a rich set of dynamic inferences from these models. We provide tools for recovering those inferences. These tools apply to traditional time-series quantities of interest: especially instantaneous effects for any period and cumulative effects for any period (including the long-run effect). They also allow for a variety of shock histories to be applied to the independent variable (beyond just a one-time, one-unit increase) as well as the recovery of inferences in levels for shocks applies to (in)dependent variables in differences (what we call the Generalized Dynamic Response Function). These effects are also available for the general conditional dynamic model advocated by Warner, Vande Kamp, and Jordan (2026 <doi:10.1017/psrm.2026.10087>). We also provide the actual formulae for these effects.

Authors:Soren Jordan [aut, cre, cph], Garrett N. Vande Kamp [aut], Reshi Rajan [aut]

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# Install 'tseffects' in R:
install.packages('tseffects', repos = c('https://sorenjordan.r-universe.dev', 'https://cloud.r-project.org'))

Bug tracker:https://github.com/sorenjordan/tseffects/issues

Pkgdown/docs site:https://sorenjordan.github.io

Datasets:

On CRAN:

Conda:

4.48 score 2 stars 169 downloads 8 exports 77 dependencies

Last updated from:760711542c. Checks:9 OK. Indexed: yes.

TargetResultTimeFilesSyslog
linux-devel-x86_64OK257
source / vignettesOK199
linux-release-x86_64OK268
macos-release-arm64OK266
macos-oldrel-arm64OK236
windows-develOK197
windows-releaseOK189
windows-oldrelOK177
wasm-releaseOK120

Exports:GDRF.adl.plotGDRF.gecm.plotGDTE.adl.plotGDTE.gecm.plotgecm.to.adlgeneral.calculatorinteract.adl.plotpulse.calculator

Dependencies:abindbackportsbootbroomcarcarDataclicolorspacecowplotcpp11DerivdoBydplyrfarverforecastFormulafracdiffgenericsggplot2gluegmpgtableisobandlabelinglatticelifecyclelme4lmtestmagrittrMASSMatrixMatrixModelsmgcvmicrobenchmarkminqamodelrmpolynlmenloptrnnetnumDerivorthopolynompartitionspbkrtestpillarpkgconfigplyrpolynompurrrquantregR6rbibutilsRColorBrewerRcppRcppArmadilloRcppEigenRdpackreformulasrlangS7sandwichscalessetsSparseMstringistringrsurvivaltibbletidyrtidyselecttimeDateurcautf8vctrsviridisLitewithrzoo

An Introduction to tseffects: Dynamic Inferences from Time Series (with Interactions)

Rendered fromtseffects-vignette.Rmdusingknitr::rmarkdownon Apr 06 2026.

Last update: 2026-02-05
Started: 2025-07-24