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The qqmath function makes great caterpillar plots of random effects using the output from the lmer package. That is, qqmath is great at plotting the intercepts from a hierarchical model with their errors around the point estimate. An example of the lmer and qqmath functions are below using the built-in data in the lme4 package called Dyestuff. The code will produce the hierarchical model and a nice plot using the ggmath function.

library("lme4")
data(package = "lme4")

# Dyestuff 
# a balanced one-way classiï¬cation of Yield 
# from samples produced from six Batches

summary(Dyestuff)             

# Batch is an example of a random effect
# Fit 1-way random effects linear model
fit1 <- lmer(Yield ~ 1 + (1|Batch), Dyestuff) 
summary(fit1)
coef(fit1) #intercept for each level in Batch 

# qqplot of the random effects with their variances
qqmath(ranef(fit1, postVar = TRUE), strip = FALSE)$Batch

The last line of code produces a really nice plot of each intercept with the error around each estimate. But formatting the qqmath function seems to be very difficult, and I've been struggling to format the plot. I've come up with a few questions that I cannot answer, and that I think others could also benefit from if they are using the lmer/qqmath combination:

  1. Is there a way to take the qqmath function above and add a few options, such as, making certain points empty vs. filled-in, or different colors for different points? For example, can you make the points for A,B, and C of the Batch variable filled, but then the rest of the points empty?
  2. Is it possible to add axis labels for each point (maybe along the top or right y axis, for example)?
  3. My data has closer to 45 intercepts, so it is possible to add spacing between the labels so they do not run into each other? MAINLY, I am interested in distinguishing/labeling between points on the graph, which seems to be cumbersome/impossible in the ggmath function.

So far, adding any additional option in the qqmath function produce errors where I would not get errors if it was a standard plot, so I'm at a loss.

ALSO, if you feel there is a better package/function for plotting intercepts from lmer output, I'd love to hear it! (for example, can you do points 1-3 using dotplot?)

Thanks.

EDIT: I'm also open to an alternative dotplot if it can be reasonably formatted. I just like the look of a ggmath plot, so I'm starting with a question about that.

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2 Answers 2

up vote 17 down vote accepted
+50

One possibility is to use library ggplot2 to draw similar graph and then you can adjust appearance of your plot.

First, ranef object is saved as randoms. Then variances of intercepts are saved in object qq.

randoms<-ranef(fit1, postVar = TRUE)
qq <- attr(ranef(fit1, postVar = TRUE)[[1]], "postVar")

Object rand.interc contains just random intercepts with level names.

rand.interc<-randoms$Batch

All objects put in one data frame. For error intervals sd.interc is calculated as 2 times square root of variance.

df<-data.frame(Intercepts=randoms$Batch[,1],
              sd.interc=2*sqrt(qq[,,1:length(qq)]),
              lev.names=rownames(rand.interc))

If you need that intercepts are ordered in plot according to value then lev.names should be reordered. This line can be skipped if intercepts should be ordered by level names.

df$lev.names<-factor(df$lev.names,levels=df$lev.names[order(df$Intercepts)])

This code produces plot. Now points will differ by shape according to factor levels.

library(ggplot2)
p <- ggplot(df,aes(lev.names,Intercepts,shape=lev.names))

#Added horizontal line at y=0, error bars to points and points with size two
p <- p + geom_hline(yintercept=0) +geom_errorbar(aes(ymin=Intercepts-sd.interc, ymax=Intercepts+sd.interc), width=0,color="black") + geom_point(aes(size=2)) 

#Removed legends and with scale_shape_manual point shapes set to 1 and 16
p <- p + guides(size=FALSE,shape=FALSE) + scale_shape_manual(values=c(1,1,1,16,16,16))

#Changed appearance of plot (black and white theme) and x and y axis labels
p <- p + theme_bw() + xlab("Levels") + ylab("")

#Final adjustments of plot
p <- p + theme(axis.text.x=element_text(size=rel(1.2)),
               axis.title.x=element_text(size=rel(1.3)),
               axis.text.y=element_text(size=rel(1.2)),
               panel.grid.minor=element_blank(),
               panel.grid.major.x=element_blank())

#To put levels on y axis you just need to use coord_flip()
p <- p+ coord_flip()
print(p)

enter image description here

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Thanks a lot! This looks great. But before I give the bounty, I'm getting two errors that says: could not find function "guides" & could not find function "theme" from your plot code. I have libraries for ggplot2 and scales on, but I still get the errors. Any idea why that would be? Are these a different package? I can still print a plot but it isn't identical because of the errors. Also, is it possible to flip the axes so that the levels are on the Y axis (and the error bars would be horizontal)? –  Captain Murphy Dec 17 '12 at 22:55
1  
You should update your version of ggplot (and scales). There have been major changes in the most recent versions, including the use of theme (instead of opts) –  mnel Dec 17 '12 at 23:00
    
hmm, I updated all my packages, and it still doesn't work. I tried shutting down R before re-trying too; also tried the code in R Studio but it doesn't work :/ –  Captain Murphy Dec 17 '12 at 23:09
1  
@CaptainMurphy, what version of ggplot2 does sessionInfo() say you have? The above code should work with a recent version of ggplot2. –  MattBagg Dec 18 '12 at 0:07
1  
@CaptainMurphy Updated my solution to flip axes. This plot was produced with ggplot2 version 0.9.3. To use this version of ggplot2, your R version should be at least 2.14. –  Didzis Elferts Dec 18 '12 at 6:15

Didzis' answer is great! Just to wrap it up a little bit, I put it into its own function that behaves a lot like qqmath.ranef.mer() and dotplot.ranef.mer(). In addition to Didzis' answer, it also handles models with multiple correlated random effects (like qqmath() and dotplot() do). Comparison to qqmath():

require(lme4)                            ## for lmer(), sleepstudy
fit <- lmer(Reaction ~ Days + (Days|Subject), sleepstudy)
ggCaterpillar(ranef(fit, postVar=TRUE))  ## using ggplot2
qqmath(ranef(fit, postVar=TRUE))         ## for comparison

enter image description here

Comparison to dotplot():

ggCaterpillar(ranef(fit, postVar=TRUE), QQ=FALSE)
dotplot(ranef(fit, postVar=TRUE))

enter image description here

Sometimes, it might be useful to have different scales for the random effects - something which dotplot() enforces. When I tried to relax this, I had to change the facetting (see this answer).

ggCaterpillar(ranef(fit, postVar=TRUE), QQ=FALSE, likeDotplot=FALSE)

enter image description here

## re = object of class ranef.mer
ggCaterpillar <- function(re, QQ=TRUE, likeDotplot=TRUE) {
    require(ggplot2)
    f <- function(x) {
        pv   <- attr(x, "postVar")
        cols <- 1:(dim(pv)[1])
        se   <- unlist(lapply(cols, function(i) sqrt(pv[i, i, ])))
        ord  <- unlist(lapply(x, order)) + rep((0:(ncol(x) - 1)) * nrow(x), each=nrow(x))
        pDf  <- data.frame(y=unlist(x)[ord],
                           ci=1.96*se[ord],
                           nQQ=rep(qnorm(ppoints(nrow(x))), ncol(x)),
                           ID=factor(rep(rownames(x), ncol(x))[ord], levels=rownames(x)[ord]),
                           ind=gl(ncol(x), nrow(x), labels=names(x)))

        if(QQ) {  ## normal QQ-plot
            p <- ggplot(pDf, aes(nQQ, y))
            p <- p + facet_wrap(~ ind, scales="free")
            p <- p + xlab("Standard normal quantiles") + ylab("Random effect quantiles")
        } else {  ## caterpillar dotplot
            p <- ggplot(pDf, aes(ID, y)) + coord_flip()
            if(likeDotplot) {  ## imitate dotplot() -> same scales for random effects
                p <- p + facet_wrap(~ ind)
            } else {           ## different scales for random effects
                p <- p + facet_grid(ind ~ ., scales="free_y")
            }
            p <- p + xlab("Levels") + ylab("Random effects")
        }

        p <- p + theme(legend.position="none")
        p <- p + geom_hline(yintercept=0)
        p <- p + geom_errorbar(aes(ymin=y-ci, ymax=y+ci), width=0, colour="black")
        p <- p + geom_point(aes(size=1.2), colour="blue") 
        return(p)
    }

    lapply(re, f)
}
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This works incredibly well. But what about producing an output table, say for latex? –  bshor Jul 18 at 20:08

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