# show volume in each node using ctree , plot in R

can any one please show me how to add volume in each of the nodes , instead of the final node volume

``````t <- ctree(is_return ~ a + b + c)
plot(t, type="simple")
``````

and my tree would look like

how can I modified that plot where it would show N= on every circle nodes , not only the black or the final node.

Thanks

• Can you supply a reproducible example please? And explain what 's N? – agstudy Dec 8 '12 at 1:14
• Oh,N in here is volume , say of the sample, N = 100 , meanings 100 fall into the black square box. but I want to add N in box b and c .. Say if 150 fall into b oval, I want to add N = 150 in there. – JPC Dec 8 '12 at 4:07

The idea is to specify a panel functions for plotting inner nodes.

I generate some data, and the tree

``````lls <- data.frame(N = gl(3, 50, labels = c("A", "B", "C")),
a = rnorm(150) + rep(c(1, 0,150)),
b = runif(150))
pond= sample(1:5,150,replace=TRUE)
tt <- ctree(formula=N~a+b, data=lls,weights = pond)
``````

The custom inner plot function. I draw a circle where i write the some of weights.

``````innerWeights <- function(node){
grid.circle(gp = gpar(fill = "White", col = 1))
mainlab <- paste( node\$psplit\$variableName, "\n(n = ")
mainlab <- paste(mainlab, sum(node\$weights),")" , sep = "")
grid.text(mainlab,gp = gpar(col='red'))
}
``````

I plot the tree

``````plot(tt, type='simple', inner_panel = innerWeights)
``````

PS: the results depends on a random generated data, so you will not probably get the same plot.

• Wow ! Thank you so much agstudy! :) – JPC Dec 10 '12 at 15:19
• @JPC you are welcome. Next time please try to produce a good reproducible example. when I have time I'll do version with ggplot2 inner_function. – agstudy Dec 10 '12 at 15:21
• will do. Thanks again. – JPC Dec 10 '12 at 15:55
• I 'm trying to add back node labels ("A", "B", "C" ) into the inner_panel, but didn't have any success. Could you please show me how to ? Thank you. – JPC Dec 12 '12 at 14:42
• @JPC One hint , put a browser() in the begining of innerWeights , and see your node argument... – agstudy Dec 12 '12 at 14:45

When exporting the decision tree, change the dimensions of the image. for a decision tree with 200 terminal nodes the width should be about 30.000.