These methods tidy HoltWinters models of univariate time
series.
# S3 method for HoltWinters
sw_tidy(x, ...)# S3 method for HoltWinters
sw_glance(x, ...)
# S3 method for HoltWinters
sw_augment(x, data = NULL, rename_index = "index", timetk_idx = FALSE, ...)
# S3 method for HoltWinters
sw_tidy_decomp(x, timetk_idx = FALSE, rename_index = "index", ...)
sw_tidy() returns one row for each model parameter,
with two columns:
term: The various parameters (alpha, beta, gamma, and coefficients)
estimate: The estimated parameter value
sw_glance() returns one row with the following columns:
model.desc: A description of the model
sigma: The square root of the estimated residual variance
logLik: The data's log-likelihood under the model
AIC: The Akaike Information Criterion
BIC: The Bayesian Information Criterion (NA for bats / tbats)
ME: Mean error
RMSE: Root mean squared error
MAE: Mean absolute error
MPE: Mean percentage error
MAPE: Mean absolute percentage error
MASE: Mean absolute scaled error
ACF1: Autocorrelation of errors at lag 1
sw_augment() returns a tibble with the following time series attributes:
index: An index is either attempted to be extracted from the model or
a sequential index is created for plotting purposes
.actual: The original time series
.fitted: The fitted values from the model
.resid: The residual values from the model
sw_tidy_decomp() returns a tibble with the following time series attributes:
index: An index is either attempted to be extracted from the model or
a sequential index is created for plotting purposes
observed: The original time series
season: The seasonal component
trend: The trend component
remainder: observed - (season + trend)
seasadj: observed - season (or trend + remainder)
An object of class "HoltWinters"
Additional parameters (not used)
Used with sw_augment only.
NULL by default which simply returns augmented columns only.
User can supply the original data, which returns the data + augmented columns.
Used with sw_augment only.
A string representing the name of the index generated.
Used with sw_augment and sw_tidy_decomp.
When TRUE, uses a timetk index (irregular, typically date or datetime) if present.
library(dplyr)
library(forecast)
fit_hw <- USAccDeaths %>%
stats::HoltWinters()
sw_tidy(fit_hw)
sw_glance(fit_hw)
sw_augment(fit_hw)
sw_tidy_decomp(fit_hw)
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