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I'm trying to make this logistic regression graph in ggplot2.

df <- structure(list(y = c(2L, 7L, 776L, 19L, 12L, 26L, 7L, 12L, 8L,
24L, 20L, 16L, 12L, 10L, 23L, 20L, 16L, 12L, 18L, 22L, 23L, 22L,
13L, 7L, 20L, 12L, 13L, 11L, 11L, 14L, 10L, 8L, 10L, 11L, 5L,
5L, 1L, 2L, 1L, 1L, 0L, 0L, 0L), n = c(3L, 7L, 789L, 20L, 14L,
27L, 7L, 13L, 9L, 29L, 22L, 17L, 14L, 11L, 30L, 21L, 19L, 14L,
22L, 29L, 28L, 28L, 19L, 10L, 27L, 22L, 18L, 18L, 14L, 23L, 18L,
12L, 19L, 15L, 13L, 9L, 7L, 3L, 1L, 1L, 1L, 1L, 1L), x = c(18L,
19L, 20L, 21L, 22L, 23L, 24L, 25L, 26L, 27L, 28L, 29L, 30L, 31L,
32L, 33L, 34L, 35L, 36L, 37L, 38L, 39L, 40L, 41L, 42L, 43L, 44L,
45L, 46L, 47L, 48L, 49L, 50L, 51L, 52L, 53L, 54L, 55L, 56L, 59L,
62L, 63L, 66L)), .Names = c("y", "n", "x"), class = "data.frame", row.names = c(NA,
-43L))


mod.fit <- glm(formula = y/n ~ x, data = df, weight=n, family = binomial(link = logit),
        na.action = na.exclude, control = list(epsilon = 0.0001, maxit = 50, trace = T))
summary(mod.fit)

Pi <- c(0.25, 0.5, 0.75)
LD <- (log(Pi /(1-Pi))-mod.fit$coefficients[1])/mod.fit$coefficients[2]
LD.summary <- data.frame(Pi , LD)
LD.summary


plot(df$x, df$y/df$n, xlab = "x", ylab = "Estimated probability")

lin.pred <- predict(mod.fit)
pi.hat <- exp(lin.pred)/(1 + exp(lin.pred))
lines(df$x, pi.hat, lty = 1, col = "red")


segments(x0 = LD.summary$LD, y0 = -0.1, x1 = LD.summary$LD, y1 = LD.summary$Pi,
         lty=2, col=c("darkblue","darkred","darkgreen"))
segments(x0 = 15, y0 = LD.summary$Pi, x1 = LD.summary$LD, y1 = LD.summary$Pi,
         lty=2, col=c("darkblue","darkred","darkgreen"))
legend("bottomleft", legend=c("LD25", "LD50", "LD75"), lty=2, col=c("darkblue","darkred","darkgreen"), bty="n", cex=0.75)

enter image description here

Here is my attempt with ggplot2

library(ggplot2)

p <- ggplot(data = df, aes(x = x, y = y/n)) +
            geom_point() +
            stat_smooth(method = "glm", family = "binomial")

p <- p + geom_segment(aes(
                            x = LD.summary$LD
                          , y = 0
                          , xend = LD.summary$LD
                          , yend = LD.summary$Pi
                         )
                         , colour="red"
                       )

p <- p + geom_segment(aes(
                            x = 0
                          , y = LD.summary$Pi
                          , xend = LD.summary$LD
                          , yend = LD.summary$Pi
                         )
                         , colour="red"
                       )

print(p)

enter image description here

Questions

  1. Predicted values for glm and stat_smooth look different. Are these two methods produces different results or I'm missing something here.
  2. My ggplot2 graph is not exactly as base R graph.
  3. How to use different colours for line segments in ggplot2?
  4. And how to put legend in ggplot2?

Thanks in advance for your help and time. Thanks

share|improve this question
    
Your base R picture doesn't have the legend in it (commands are fine though) - I'll update it to avoid confusion. –  mathematical.coffee Jan 13 '12 at 3:08
    
@mathematical.coffee: Thanks for your comment. Please see the legend on the bottomleft. –  MYaseen208 Jan 13 '12 at 3:15
1  
yeah, that's because I updated the picture to include the legend. –  mathematical.coffee Jan 13 '12 at 3:16
    
oops, thanks @mathematical.coffee –  MYaseen208 Jan 13 '12 at 3:17

2 Answers 2

up vote 11 down vote accepted

Just a couple of minor additions to @mathetmatical.coffee's answer. Typically, geom_smooth isn't supposed to replace actual modeling, which is why it can seem inconvenient at times when you want to use specific output you'd get from glm and such. But really, all we need to do is add the fitted values to our data frame:

df$pred <- pi.hat
LD.summary$group <- c('LD25','LD50','LD75')

ggplot(df,aes(x = x, y = y/n)) + 
    geom_point() + 
    geom_line(aes(y = pred),colour = "black") + 
    geom_segment(data=LD.summary, aes(y = Pi,
                                      xend = LD,
                                      yend = Pi,
                                      col = group),x = -Inf,linetype = "dashed") + 
    geom_segment(data=LD.summary,aes(x = LD,
                                     xend = LD,
                                     yend = Pi,
                                     col = group),y = -Inf,linetype = "dashed")

enter image description here

The final little trick is the use of Inf and -Inf to get the dashed lines to extend all the way to the plot boundaries.

The lesson here is that if all you want to do is add a smooth to a plot, and nothing else in the plot depends on it, use geom_smooth. If you want to refer to the output from the fitted model, its generally easier to fit the model outside ggplot and then plot.

share|improve this answer
    
Elegant answer. Thanks for your help. –  MYaseen208 Jan 13 '12 at 6:51

Modify your LD.summary to include a new column with group (or appropriate label).

LD.summary$group <- c('LD25','LD50','LD75')

Then modify your geom_segment commands to have a col=LD.summary$group in it (and remove the colour="red"), which plots each segment in a different colour and adds a legend:

geom_segment( aes(...,col=LD.summary$group) )

Also, to avoid having to do the LD.summary$xxx all the time, feed in data=LD.summary to your geom_segment:

geom_segment(data=LD.summary, aes(x=0, y=Pi,xend=LD, yend=Pi, colour=group) )

As to why the graphs are not exactly the same, in the base R graph the x axis goes from ~20 onwards, whereas in ggplot it goes from zero onwards. This is because your second geom_segment starts at x=0. To fix you could change x=0 to x=min(df$x).

To get your y axis label use + scale_y_continuous('Estimated probability').

In summary:

LD.summary$group <- c('LD25','LD50','LD75')
p <- ggplot(data = df, aes(x = x, y = y/n)) +
            geom_point() +
            stat_smooth(method = "glm", family = "binomial") +
            scale_y_continuous('Estimated probability')    # <-- add y label
p <- p + geom_segment(data=LD.summary, aes( # <-- data=Ld.summary
                            x = LD
                          , y = 0
                          , xend = LD
                          , yend = Pi
                          , col = group     # <- colours
                         )
                       )    
p <- p + geom_segment(data=LD.summary, aes( # <-- data=Ld.summary
                            x = min(df$x)   # <-- don't plot all the way to x=0
                          , y = Pi
                          , xend = LD
                          , yend = Pi
                          , col = group     # <- colours
                         )
                       )
print(p)

which yields:

enter image description here

share|improve this answer
    
@mathematical.cofee: Thanks for your elegent answer. One observation: why LD25, LD50 are not touching the predicted line as they do in base R graph? Any idea. Thanks –  MYaseen208 Jan 13 '12 at 3:39
    
@MYaseen208 it's something to do with stat_smooth which is not generating the same numbers as your pi.hat formula: try plotting the first p and then doing lines(x,pi.hat,lty=1,col='red') to see what I mean. I don't know enough about statistics to help you there unfortunately (i.e. wheter your pi.hat calculation is wrong or whether stat_smooth is doing some other calculation you are unaware of). All I can suggest is to have a look at the online help for stat_smooth and see if it gives any info on how it calculate the smoother. had.co.nz/ggplot2/stat_smooth.html –  mathematical.coffee Jan 13 '12 at 3:47
    
Although I am sure that it would be trivial to adjust the existing answer, in the current form it does not answer the question. I.e. the graph is not reproduced, since the corners of the segments do not lie on the curve. –  mpiktas Jan 13 '12 at 7:27
5  
@MYaseen208 Its because stat_smooth isn't being passed the same options as you pass in the glm call for mod.fit. In particular, the weight option isn't passed. Try adding weight=n to the aes in the ggplot call. –  James Jan 13 '12 at 11:32

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