# Order y-axis ticks in order from lowest to highest

I have the following data, and am having some issues with the y axis ordering =

``````> str(dat)
'data.frame':   3678 obs. of  41 variables:
\$ highest_bid                 : Factor w/ 140 levels "\\N","0","10",..: 2 2 2 2 2 2 2 2 2 2 ...
\$ age_of_oldest_driver        : Factor w/ 75 levels "18","19","20",..: 66 11 33 24 57 3 17 5 32 22 ...
``````

When I plot highest bid on age, I get the desired plot but the age's are in order of the factor, which is not what I want. The y axis goes from 180, 19, 200, 2300, 25, 230, 250, etc. Because of values like 19, 25, and 2300, it throws the ordering of the y axis off. See below plot.

``````ggplot(dat, aes(x=factor(age_of_oldest_driver), y=highest_bid)) +
stat_summary(fun.y="mean", geom="bar")
``````

Now, I generated some sample data to play around with this problem, but I can't seem to reproduce it. Here's what I did. Once again, this works perfectly.

``````df=data.frame(score=c(400,200,3000,500,751,630,554,630,100,250,330,5100,4100,800),
age=c(18,18,23,50,19,39,19,23,22,22,40,35,22,16))
str(df)
ggplot(df, aes(x=factor(age), y=factor(score))) + geom_bar()

library(plyr)
library(ggplot2)
ggplot(ddply(df, .(age), mean), aes(x=factor(age), y=factor(score))) + geom_bar()
``````

Any idea on what I'm doing wrong in the initial code that I published.

Thanks!!

Here's the wrong image. Notice the y-axis.

-

You can reorder the original factor (age) before ploting it

``````df\$ageord <- factor(df\$age, levels = levels(factor(df\$age)), ordered = TRUE )

require(ggplot2)
ggplot(df, aes(x=ageord, y = score)) + geom_bar(stat = "identity")
``````

EDIT : if it doesn't work

``````df\$ageord <- factor(df\$age, levels = sort(unique(df\$age)), ordered = TRUE )

ggplot(df, aes(x=ageord, y = score)) + geom_bar(stat = "identity")
``````
-
Yeah, I tried that allready. Still have the problems that some levels come out as = "1026", "11", "1101", "113", "118", "1201" It should be 11<113<118<1026<1101<1201 –  ATMathew Aug 8 '12 at 15:58
Because your `age_of_oldest_driver` is a factor. Try `dat\$age_of_oldest_driver_new = as.numeric(as.character(dat\$age_of_oldest_driver))`. Because in the dummy example, `df\$age` is numeric and not a factor. –  dickoa Aug 8 '12 at 16:13