\name{rrs.test} \alias{rrs.test} \title{ Quantile Regression Rankscore Test } \description{ Function to compute regression rankscore test of a linear hypothesis based on the dual quantile regression process. A test of the hypothesis, is carried out by estimating the restricted model and constructing a test based on the dual process under the restricted model. The details of the test are described in GJKP(1993). The test has a Rao-score, Lagrange-multiplier interpretation since in effect it is based on the value of the gradient of unrestricted quantile regression problem evaluated under the null. This function will eventually be superseded by a more general \code{anova()} method for \code{rq}. } \usage{ rrs.test(x0, x1, y, v, score="wilcoxon") } \arguments{ \item{x0}{ the matrix of maintained regressors, a column of ones is appended automatically. } \item{x1}{ matrix of covariates under test. } \item{y}{ response variable, may be omitted if \code{v} is provided. } \item{v}{ object of class \code{"rq.process"} generated e.g. by \code{rq(y ~ x0, tau=-1)} } \item{score}{ Score function for test (see \code{\link{ranks}}) } } \value{ Test statistic \code{sn} is asymptotically Chi-squared with rank(X1) dfs. The vector of ranks is also returned as component \code{rank}. } \details{ See GJKP(1993) } \references{ [1] Gutenbrunner, C., Jureckova, J., Koenker, R. and Portnoy, S. (1993) Tests of linear hypotheses based on regression rank scores. \emph{Journal of Nonparametric Statistics}, (2), 307-331. [2] Koenker, R. W. and d'Orey (1994). Remark on Alg. AS 229: Computing dual regression quantiles and regression rank scores. \emph{Applied Statistics}, \bold{43}, 410-414. } \seealso{ \code{\link{rq}}, \code{\link{ranks}} } \examples{ # Test that covariates 2 and 3 belong in stackloss model using Wilcoxon scores. data(stackloss) rrs.test(stack.x[,1], stack.x[,2:3], stack.loss) } \keyword{regression} % Converted by Sd2Rd version 0.3-3.