outliers-tstatistics: Test Statistics for the Significance of Outliers

Description Usage Arguments Details Value References See Also Examples

Description

This function computes the t-statistics to assess the significance of different types of outliers at every possible time point. The statistics can be based either on an ARIMA model, arima or auto.arima.

Usage

1
2
outliers.tstatistics(pars, resid, types = c("AO", "LS", "TC"), 
  sigma = NULL, delta = 0.7)

Arguments

pars

a list containing the parameters of the model. See details section in locate.outliers.

resid

a time series. Residuals of the ARIMA model fitted to the data.

types

a character vector indicating the types of outliers to be considered.

sigma

a numeric or NULL. Standard deviation of residuals.

delta

a numeric. Parameter of the temporary change type of outlier.

Details

Five types of outliers can be considered. By default: "AO" additive outliers, "LS" level shifts, and "TC" temporary changes are selected; "IO" innovative outliers and "SLS" seasonal level shifts can also be selected.

The test statistics are based on the second equation defined in locate.outliers.

These functions are the called by locate.outliers. The approach described in Chen & Liu (1993) is implemented to compute the t-statistics.

By default (sigma = NULL), the standard deviation of residuals is computed as the mean absolute deviation of resid.

Value

For each function, a two-column matrix is returned. The first column contains the estimate of the coefficients related to the type of outlier and the second column contains the t-statistics. The value of these statistics for each time point is stored by rows, thus the number of rows is equal to the length of resid.

References

Chen, C. and Liu, Lon-Mu (1993). ‘Joint Estimation of Model Parameters and Outlier Effects in Time Series’. Journal of the American Statistical Association, 88(421), pp. 284-297.

Gómez, V. and Maravall, A. (1996). Programs TRAMO and SEATS. Instructions for the user. Banco de España, Servicio de Estudios. Working paper number 9628. http://www.bde.es/f/webbde/SES/Secciones/Publicaciones/PublicacionesSeriadas/DocumentosTrabajo/96/Fich/dt9628e.pdf

Gómez, V. and Taguas, D. (1995). Detección y Corrección Automática de Outliers con TRAMO: Una Aplicación al IPC de Bienes Industriales no Energéticos. Ministerio de Economía y Hacienda. Document number D-95006. http://www.sepg.pap.minhap.gob.es/sitios/sepg/es-ES/Presupuestos/Documentacion/Documents/DOCUMENTOS%20DE%20TRABAJO/D95006.pdf

Kaiser, R., and Maravall, A. (1999). Seasonal Outliers in Time Series. Banco de España, Servicio de Estudios. Working paper number 9915. http://www.bde.es/f/webbde/SES/Secciones/Publicaciones/PublicacionesSeriadas/DocumentosTrabajo/99/Fic/dt9915e.pdf

See Also

locate.outliers, outliers.regressors.

Examples

 1
 2
 3
 4
 5
 6
 7
 8
 9
10
11
12
13
14
# given an ARIMA model detect potential outliers
# for a critical value equal to 3.5
data("hicp")
y <- log(hicp[["011600"]])
fit <- arima(y, order = c(1, 1, 0), seasonal = list(order = c(2, 0, 2)))
resid <- residuals(fit)
pars <- coefs2poly(fit)
tstats <- outliers.tstatistics(pars, resid)
# potential observations affected by an additive outliers
which(abs(tstats[,"AO","tstat"]) > 3.5)
# potential observations affected by a temporary change
which(abs(tstats[,"TC","tstat"]) > 3.5)
# potential observations affected by a level shift
which(abs(tstats[,"LS","tstat"]) > 3.5)

Example output

[1]  79 210 224
[1] 163 210
[1] 210 225

tsoutliers documentation built on May 2, 2019, 4:56 a.m.