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I have a large dataset that I would prefer not to split up because it will be rather time consuming. One column contains a list of parks which I want to make separate plots for as each plot belongs somewhere different. Each park needs to be grouped by Zone and Year as time series graphs. The mean for Height_mm also needs to be calculated with standard errors. There are 5 different parks each with 3 different zones and 10 different years. There are over 5000 records in the csv.


  Park_name  Zone Year  Height_mm
1     Park1 Zone1 2011        380
2     Park1 Zone1 2011        510
3     Park1 Zone1 2011        270
4     Park1 Zone2 2011        270
5     Park1 Zone2 2011        230
6     Park1 Zone2 2011        330

I would like to be able to manipulate the code below to make this work though I just can't figure it out. I'll gladly take any other suggestions though.


data=read.table("C:/data.csv", sep=",", header=TRUE)

ggplot(data, aes(x=Year, y=Height_mm)) + 
  #geom_errorbar(aes(ymin=mean-se, ymax=mean+se), width=.05, colour="black", position=pd) +
  geom_line() +
  geom_point(size=3, fill="black") +
  xlab("Year") + 
  ylab("Mean height (mm)") +
  #facet_wrap(~Park_name, scales = "free", ncol=2) + #I'd like something like this but with all plots as separate figures
  theme_bw() +
        panel.grid.minor = theme_blank(),
        panel.grid.major = theme_blank(),
        legend.justification=c(10,10), legend.position=c(10,10), 
        legend.title = theme_text(),
        legend.key = theme_blank()

I'm assuming I need a 'for' loop of some kind though I don't know where to put it or how to use it. Thanks

share|improve this question
Have you considered aggregate, split, by or tapply to chop up data? –  Roman Luštrik Jul 26 '13 at 5:56
5000 records is now considered a small dataset, and would take no appreciable time to split –  baptiste Jul 26 '13 at 12:08
if I call p your original plot, you can do d_ply(Y, "Park_name", "%+%", e1=p). –  baptiste Jul 26 '13 at 12:12

1 Answer 1

up vote 1 down vote accepted

It seems that you would like to do something similar to the following. If I missunderstood your question, please revise your question. You may also want to provide data from more than one park, zone and year.

# load packages
# read data 
Y <- read.table("C:/data.csv", sep=",", header=TRUE)
# define the theme
th <- theme_bw() +
        panel.grid.minor = element_blank(),
        panel.grid.major = element_blank(),
        legend.justification=c(10,10), legend.position=c(10,10), 
        legend.title = element_text(),
        legend.key = element_blank()
# determine park levels
parks <- levels(Y[,"Park_name"])
# apply seperately for each park
p <- lapply(parks, function(park) {
ggplot(Y[Y[, "Park_name"]==park,], aes(x=as.factor(Year), y=Height_mm)) +
  facet_grid(Zone~.) + # show each zone in a seperate facet
  geom_point() + # plot the actual heights (if desired)
  # plot the mean and confidence interval
  stat_summary(fun.data="mean_cl_boot", color="red") 
# finally print your plots
lapply(p, function(x) print(x+th))
share|improve this answer
Perfect! Just what I was looking for. Just a little bit of personalisation left and it's all good! Thank you so much!! –  user2621173 Aug 1 '13 at 5:31

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