mgcv (version 1.8-28)

missing.data: Missing data in GAMs

Description

If there are missing values in the reponse or covariates of a GAM then the default is simply to use only the `complete cases'. If there are many missing covariates, this can get rather wasteful. One possibility is then to use imputation. Another is to substitute a simple random effects model in which the by variable mechanism is used to set s(x) to zero for any missing x, while a Gaussian random effect is then substituted for the `missing' s(x). See the example for details of how this works, and gam.modelsfor the necessary background on by variables.

Arguments

See Also

gam.vcomp, gam.models, s, smooth.construct.re.smooth.spec,gam

Examples

Run this code
# NOT RUN {
## The example takes a couple of minutes to run...
# }
# NOT RUN {
require(mgcv)
par(mfrow=c(4,4),mar=c(4,4,1,1))
for (sim in c(1,7)) { ## cycle over uncorrelated and correlated covariates
  n <- 350;set.seed(2)
  ## simulate data but randomly drop 300 covariate measurements
  ## leaving only 50 complete cases...
  dat <- gamSim(sim,n=n,scale=3) ## 1 or 7
  drop <- sample(1:n,300) ## to
  for (i in 2:5) dat[drop[1:75+(i-2)*75],i] <- NA

  ## process data.frame producing binary indicators of missingness,
  ## mx0, mx1 etc. For each missing value create a level of a factor
  ## idx0, idx1, etc. So idx0 has as many levels as x0 has missing 
  ## values. Replace the NA's in each variable by the mean of the 
  ## non missing for that variable...

  dname <- names(dat)[2:5]
  dat1 <- dat
  for (i in 1:4) {
    by.name <- paste("m",dname[i],sep="") 
    dat1[[by.name]] <- is.na(dat1[[dname[i]]])
    dat1[[dname[i]]][dat1[[by.name]]] <- mean(dat1[[dname[i]]],na.rm=TRUE)
    lev <- rep(1,n);lev[dat1[[by.name]]] <- 1:sum(dat1[[by.name]])
    id.name <- paste("id",dname[i],sep="")
    dat1[[id.name]] <- factor(lev) 
    dat1[[by.name]] <- as.numeric(dat1[[by.name]])
  }

  ## Fit a gam, in which any missing value contributes zero 
  ## to the linear predictor from its smooth, but each 
  ## missing has its own random effect, with the random effect 
  ## variances being specific to the variable. e.g.
  ## for s(x0,by=ordered(!mx0)), declaring the `by' as an ordered
  ## factor ensures that the smooth is centred, but multiplied
  ## by zero when mx0 is one (indicating a missing x0). This means
  ## that any value (within range) can be put in place of the 
  ## NA for x0.  s(idx0,bs="re",by=mx0) produces a separate Gaussian 
  ## random effect for each missing value of x0 (in place of s(x0),
  ## effectively). The `by' variable simply sets the random effect to 
  ## zero when x0 is non-missing, so that we can set idx0 to any 
  ## existing level for these cases.   

  b <- gam(y~s(x0,by=ordered(!mx0))+s(x1,by=ordered(!mx1))+
             s(x2,by=ordered(!mx2))+s(x3,by=ordered(!mx3))+
             s(idx0,bs="re",by=mx0)+s(idx1,bs="re",by=mx1)+
             s(idx2,bs="re",by=mx2)+s(idx3,bs="re",by=mx3)
             ,data=dat1,method="REML")

  for (i in 1:4) plot(b,select=i) ## plot the smooth effects from b

  ## fit the model to the `complete case' data...
  b2 <- gam(y~s(x0)+s(x1)+s(x2)+s(x3),data=dat,method="REML")
  plot(b2) ## plot the complete case results
}
# }

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