tsutils

Time Series Exploration, Modelling and Forecasting


License
GPL-3.0

Documentation

Functions for time series exploration, modelling and forecasting for R: tsutils package

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Development repository for the tsutils package for R. Stable version can be found at: https://cran.r-project.org/package=tsutils

Installing

To install the development version use:

if (!require("devtools")){install.packages("devtools")}
devtools::install_github("trnnick/tsutils")

Otherwise, install the stable version from CRAN:

install.packages("tsutils")

Functionality

The tsutils package provides functions to support various aspects of time series and forecasting modelling. In particular this package includes: (i) tests and visualisations that can help the modeller explore time series components and perform decomposition; (ii) modelling shortcuts, such as functions to construct lagmatrices and seasonal dummy variables of various forms; (iii) an implementation of the Theta method; (iv) tools to facilitate the design of the forecasting process, such as ABC-XYZ analyses; and (v) "quality of life" tools, such as treating time series for trailing and leading values.

Time series exploration:

  • cmav: centred moving average.
  • coxstuart: Cox-Stuart test for location/dispersion.
  • decomp: classical time series decomposition.
  • seasplot: construct seasonal plots.
  • trendtest: test a time series for trend.

Time series modelling:

  • getOptK: optimal temporal aggregation level for AR(1), MA(1), ARMA(1,1).
  • lagmatrix: create leads/lags of variable.
  • residout: construct control chart of residuals.
  • seasdummy: create seasonal dummies.
  • theta: Theta method.

Hierarchical time series:

  • Sthief: temporal hierarchy S matrix.
  • plotSthief: plot temporal hierarchy S matrix.

Forecasting process modelling:

  • abc: ABC analysis.
  • xyz: XYZ analysis.
  • abcxyz: ABC-XYZ analyses visualisation.

Quality of life:

  • geomean: geometric mean.
  • lambdaseq: generate sequence of lambda for LASSO regression.
  • leadtrail: remove leading/training zeros/NAs.
  • wins: winsorisation, including vectorised versions colWins and rowWins.

Time series data:

  • referrals: A&E monthly referrals.

Authors & contributors

References

References are provided where necessary at the help file of each function. The overall modelling philosophy is reflected in:

Ord K., Fildes R., Kourentzes N. (2017) Principles of Business Forecasting, 2e. Wessex Press Publishing Co.

License

This project is licensed under the GPL3 License

Happy forecasting!