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I have a data frame of survey data in the following form:

    category    shift   difficulty  importance  frequency   dsmImportance   supervisor
1   Monitoring  Day     3           1           1           3               Debra Smith
2   Monitoring  Day     2           1           1           3               Debra Smith
3   Paperwork   Night   3           1           1           3               Mark Hobbs
4   Operations  Day     1           1           1           2               Ryan Jones
5   Rostering   Night   1           1           1           1               Mark Hobbs

The data is a survey of tasks performed during a work shift, with a rating of 1-3 assigned according to each tasks' difficulty, importance, etc.

What I'd like to do is plot an array of histograms of the task ratings, with difficulty, importance, frequency and dsmImportance for the array columns and category for the rows. My approach so far has been to create single columns for each rating type (difficulty, importance etc.) faceted with category, and then group the columns together using grid_layout(). You can see the result here. (Unfortunately I'm prevented from linking directly to an image until I've been a member for longer.) It works but it's not terribly pretty.

How do I go about creating the array entirely using ggplot2's faceting function? I'm new to R (and stack overflow) but I'm fairly sure I can't do this with the data in the form that it's currently in. I presume I have to melt the data and cast it into a different form, but I don't know what that form should be.

Code

library(ggplot2)
library(gridExtra)

walkaday.dirty = read.csv("~/Documents/walkaday.csv", header = TRUE, sep = ",", fill = TRUE, blank.lines.skip = TRUE)
walkaday = na.omit(walkaday.dirty)

// Order category levels by task frequency
category.levels = names(sort(table(walkaday$category), decreasing = TRUE))
walkaday$category = factor(walkaday$category, levels = category.levels)

Difficulty chart

difficulty = ggplot(walkaday, aes(factor(difficulty, c("3", "2", "1")), fill = difficulty)) + geom_bar() + coord_flip() + xlab("") + ylab("") + opts(legend.position = "none")
difficulty = difficulty + facet_grid(category ~ .) + opts(strip.text.y = theme_blank())

Importance chart

importance = ggplot(walkaday, aes(factor(importance, c("3", "2", "1")), fill = importance)) + geom_bar() + coord_flip() + xlab("") + ylab("") + opts(legend.position = "none", axis.text.y = theme_blank(), axis.ticks = theme_blank())
importance = importance + facet_grid(category ~ .) + opts(strip.text.y = theme_blank())

Frequency chart

frequency = ggplot(walkaday, aes(factor(frequency, c("3", "2", "1")), fill = frequency)) + geom_bar() + coord_flip() + xlab("") + ylab("") + opts(legend.position = "none", axis.text.y = theme_blank(), axis.ticks = theme_blank())
frequency = frequency + facet_grid(category ~ .) + opts(strip.text.y = theme_blank())

DSM Importance chart

dsmImportance = ggplot(walkaday, aes(factor(dsmImportance, c("3", "2", "1")), fill = dsmImportance)) + geom_bar() + coord_flip() + xlab("") + ylab("") + opts(legend.position = "none", axis.text.y = theme_blank(), axis.ticks = theme_blank())
dsmImportance = dsmImportance + facet_grid(category ~ .) + opts(strip.text.y = theme_text(angle = 0))

Combine charts

pushViewport(viewport(layout = grid.layout(1, 4, widths = c(1,1,1,1.7))))
print(difficulty + opts(title = "Task difficulty"), vp = viewport(layout.pos.row = 1, layout.pos.col = 1)) 
print(importance + opts(title = "Task importance"), vp = viewport(layout.pos.row = 1, layout.pos.col = 2)) 
print(frequency + opts(title = "Task frequency"), vp = viewport(layout.pos.row = 1, layout.pos.col = 3)) 
print(dsmImportance + opts(title = "DSM importance"), vp = viewport(layout.pos.row = 1, layout.pos.col = 4))

Data

The dataset can be found here.

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1 Answer

up vote 0 down vote accepted

melt your data into long form so that the rating type appears as a separate variable:

walkaday <- read.csv("http://dl.dropbox.com/u/7046039/walkaday.csv")
walkaday.long <- melt(walkaday,id.vars=c(1,2,7))
qplot(factor(value,c("3","2","1")),data=walkaday.long,geom="bar")+facet_grid(.~variable)

Note the name of the new variable is variable and the values are value.

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Thanks James - I knew it would be simple. Worked brilliantly. Apologies for the late response - I just realised I forgot to reply at the time. –  Nick Jun 12 '12 at 5:46
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