ts_cor: An Interactive Visualization of the ACF and PACF Functions
Description
An Interactive Visualization of the ACF and PACF Functions
Usage
ts_cor(ts.obj, type = "both", seasonal = TRUE, ci = 0.95,
lag.max = NULL, seasonal_lags = NULL)
Arguments
ts.obj
A univariate time series object class 'ts'
type
A character, defines the plot type - 'acf' for ACF plot, 'pacf' for PACF plot, and 'both' (default) for both ACF and PACF plots
seasonal
A boolean, when set to TRUE (default) will color the seasonal lags
ci
The significant level of the estimation - a numeric value between 0 and 1, default is set for 0.95
lag.max
maximum lag at which to calculate the acf. Default is 10*log10(N/m)
where N is the number of observations and m the number of series.
Will be automatically limited to one less than the number of observations in the series
seasonal_lags
A vector of integers, highlight specific cyclic lags (besides the main seasonal lags of the series).
This is useful when working with multiseasonal time series data. For example, for a monthly series
(e.g., frequency 12) setting the argument to 3 will highlight the quarterly lags
data(USgas)
ts_cor(ts.obj = USgas)
# Setting the maximum number of lags to 72ts_cor(ts.obj = USgas, lag.max = 72)
# Plotting only ACF ts_cor(ts.obj = USgas, lag.max = 72, type = "acf")