\name{RMcovariate} \alias{RMcovariate} \alias{RM_COVARIATE} \title{Model for covariates} \description{ The model makes covariates available. } \usage{ RMcovariate(formula=NULL, data, x, y=NULL, z=NULL, T=NULL, grid, raw, norm, addNA, factor) } \arguments{ \item{formula, data}{formula and by which the data should be modelled, similar to \link[stats]{lm}. If \code{formula} is not given, the the linear model is given by the data themselves. } \item{x,y,z,T,grid}{optional. The usual arguments as in \command{\link{RFsimulate}} to define the locations where the covariates are given. } % \item{var}{optional arguments; same meaning for any % \command{\link{RMmodel}}. If not passed, the above % covariance function remains unmodified.} % \item{factor}{vector or matrix of numerical values. % The length of the vector must match the given number of locations. % } % % \item{var}{variance, i.e. factor multiplied to the data, which can be % estimated through ML % } \item{raw}{\argRaw } \item{norm}{\argNorm} \item{addNA}{ If \code{addNA} is \code{TRUE}, then an additional (linear) factor is estimated in an estimation framework. This parameter must be set in particular when \command{RMcovariate} passes several covariates. } \item{factor}{real value. From user's point of view very much the same as setting the argument \code{var}}. } \note{ \itemize{ \item \code{c}, \code{x} also accept lists of data. However, its use is not in an advanced stage yet. } } \details{ The function interpolates (nearest neighbour) between the values. } \value{ \command{\link{RMcovariate}} returns an object of class \code{\link[=RMmodel-class]{RMmodel}}. } \me \seealso{ \command{\link{RMfixcov}}, \command{\link{RMmodel}}, \command{\link{RMtrend}} } \examples{\dontshow{StartExample(reduced = FALSE)} RFoptions(seed=0) ## *ANY* simulation will have the random seed 0; set ## RFoptions(seed=NA) to make them all random again z <- 0.2 + (1:10) RFfctn(RMcovariate(z), 1:10) RFfctn(RMcovariate(data=z, x=1:10), c(2, 2.1, 2.5, 3)) \dontshow{FinalizeExample()}} \keyword{spatial} \keyword{models}