robustHD (version 0.6.1)

tslars: (Robust) least angle regression for time series data

Description

(Robustly) sequence groups of candidate predictors and their respective lagged values according to their predictive content and find the optimal model along the sequence. Note that lagged values of the response are included as a predictor group as well.

Usage

tslars(x, ...)

# S3 method for formula tslars(formula, data, ...)

# S3 method for default tslars(x, y, h = 1, pMax = 3, sMax = NA, fit = TRUE, s = c(0, sMax), crit = "BIC", ncores = 1, cl = NULL, model = TRUE, ...)

rtslars(x, ...)

# S3 method for formula rtslars(formula, data, ...)

# S3 method for default rtslars(x, y, h = 1, pMax = 3, sMax = NA, centerFun = median, scaleFun = mad, regFun = lmrob, regArgs = list(), combine = c("min", "euclidean", "mahalanobis"), winsorize = FALSE, const = 2, prob = 0.95, fit = TRUE, s = c(0, sMax), crit = "BIC", ncores = 1, cl = NULL, seed = NULL, model = TRUE, ...)

Arguments

x

a numeric matrix or data frame containing the candidate predictor series.

additional arguments to be passed down.

formula

a formula describing the full model.

data

an optional data frame, list or environment (or object coercible to a data frame by as.data.frame) containing the variables in the model. If not found in data, the variables are taken from environment(formula), typically the environment from which tslars or rtslars is called.

y

a numeric vector containing the response series.

h

an integer giving the forecast horizon (defaults to 1).

pMax

an integer giving the maximum number of lags in the model (defaults to 3).

sMax

an integer giving the number of predictor series to be sequenced. If it is NA (the default), predictor groups are sequenced as long as there are twice as many observations as predictor variables.

fit

a logical indicating whether to fit submodels along the sequence (TRUE, the default) or to simply return the sequence (FALSE).

s

an integer vector of length two giving the first and last step along the sequence for which to compute submodels. The default is to start with a model containing only an intercept (step 0) and iteratively add all series along the sequence (step sMax). If the second element is NA, predictor groups are added to the model as long as there are twice as many observations as predictor variables. If only one value is supplied, it is recycled.

crit

a character string specifying the optimality criterion to be used for selecting the final model. Currently, only "BIC" for the Bayes information criterion is implemented.

ncores

a positive integer giving the number of processor cores to be used for parallel computing (the default is 1 for no parallelization). If this is set to NA, all available processor cores are used. For each lag length, parallel computing for obtaining the data cleaning weights and for fitting models along the sequence is implemented on the R level using package parallel. Otherwise parallel computing for some of of the more computer-intensive computations in the sequencing step is implemented on the C++ level via OpenMP (http://openmp.org/).

cl

a parallel cluster for parallel computing as generated by makeCluster. This is preferred over ncores for tasks that are parallelized on the R level, in which case ncores is only used for tasks that are parallelized on the C++ level.

model

a logical indicating whether the model data should be included in the returned object.

centerFun

a function to compute a robust estimate for the center (defaults to median).

scaleFun

a function to compute a robust estimate for the scale (defaults to mad).

regFun

a function to compute robust linear regressions that can be interpreted as weighted least squares (defaults to lmrob).

regArgs

a list of arguments to be passed to regFun.

combine

a character string specifying how to combine the data cleaning weights from the robust regressions with each predictor group. Possible values are "min" for taking the minimum weight for each observation, "euclidean" for weights based on Euclidean distances of the multivariate set of standardized residuals (i.e., multivariate winsorization of the standardized residuals assuming independence), or "mahalanobis" for weights based on Mahalanobis distances of the multivariate set of standardized residuals (i.e., multivariate winsorization of the standardized residuals).

winsorize

a logical indicating whether to clean the data by multivariate winsorization.

const

numeric; tuning constant for multivariate winsorization to be used in the initial corralation estimates based on adjusted univariate winsorization (defaults to 2).

prob

numeric; probability for the quantile of the \(\chi^{2}\) distribution to be used in multivariate winsorization (defaults to 0.95).

seed

optional initial seed for the random number generator (see .Random.seed), which is useful because many robust regression functions (including lmrob) involve randomness. On parallel R worker processes, random number streams are used and the seed is set via clusterSetRNGStream.

Value

If fit is FALSE, an integer matrix in which each column contains the indices of the sequenced predictor series for the corresponding lag length.

Otherwise an object of class "tslars" with the following components:

pFit

a list containing the fits for the respective lag lengths (see tslarsP).

pOpt

an integer giving the optimal number of lags.

pMax

the maximum number of lags considered.

x

the matrix of candidate predictor series (if model is TRUE).

y

the response series (if model is TRUE).

call

the matched function call.

References

Gelper, S. and Croux, C. (2010) Time series least angle regression for selecting predictive economic sentiment series. Working paper.

See Also

coef, fitted, plot, predict, residuals, tslarsP, lmrob