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I have a survey file in which row are observation and column question.

Here are some fake data they look like:

People,Food,Music,People
P1,Very Bad,Bad,Good
P2,Good,Good,Very Bad
P3,Good,Bad,Good
P4,Good,Very Bad,Very Good
P5,Bad,Good,Very Good
P6,Bad,Good,Very Good

My aim is to create this kind of plot with ggplot2.

  • I absolutely don't care of the colors, design, etc.
  • The plot doesn't correspond to the fake data

enter image description here

Here are my fake data:

raw <- read.csv("http://pastebin.com/raw.php?i=L8cEKcxS",sep=",")
raw[,2]<-factor(raw[,2],levels=c("Very Bad","Bad","Good","Very Good"),ordered=FALSE)
raw[,3]<-factor(raw[,3],levels=c("Very Bad","Bad","Good","Very Good"),ordered=FALSE)
raw[,4]<-factor(raw[,4],levels=c("Very Bad","Bad","Good","Very Good"),ordered=FALSE)

But if I choose Y as count then I'm facing an issue about choosing the X and the Group values... I don't know if I can succeed without using reshape2... I've also tired to use reshape with melt function. But I don't understand how to use it...

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1 Answer 1

up vote 3 down vote accepted

First you need to get the counts for each category, i.e. how many Bads and Goods and so on are there for each group (Food, Music, People). This would be done like so:

raw <- read.csv("http://pastebin.com/raw.php?i=L8cEKcxS",sep=",")
raw[,2]<-factor(raw[,2],levels=c("Very Bad","Bad","Good","Very Good"),ordered=FALSE)
raw[,3]<-factor(raw[,3],levels=c("Very Bad","Bad","Good","Very Good"),ordered=FALSE)
raw[,4]<-factor(raw[,4],levels=c("Very Bad","Bad","Good","Very Good"),ordered=FALSE)

raw=raw[,c(2,3,4)] # getting rid of the "people" variable as I see no use for it

freq=table(col(raw), as.matrix(raw)) # get the counts of each factor level

Then you need to create a data frame out of it, melt it and plot it:

Names=c("Food","Music","People")     # create list of names
data=data.frame(cbind(freq),Names)   # combine them into a data frame
data=data[,c(5,3,1,2,4)]             # sort columns

# melt the data frame for plotting
data.m <- melt(data, id.vars='Names')

# plot everything
ggplot(data.m, aes(Names, value)) +   
  geom_bar(aes(fill = variable), position = "dodge", stat="identity")

Is this what you're after?

enter image description here

To clarify a little bit, in ggplot multiple grouping bar you had a data frame that looked like this:

> head(df)
  ID Type Annee X1PCE X2PCE X3PCE X4PCE X5PCE X6PCE
1  1    A  1980   450   338   154    36    13     9
2  2    A  2000   288   407   212    54    16    23
3  3    A  2020   196   434   246    68    19    36
4  4    B  1980   111   326   441    90    21    11
5  5    B  2000    63   298   443   133    42    21
6  6    B  2020    36   257   462   162    55    30

Since you have numerical values in columns 4-9, which would later be plotted on the y axis, this can be easily transformed with reshape and plotted.

For our current data set, we needed something similar, so we used freq=table(col(raw), as.matrix(raw)) to get this:

> data
   Names Very.Bad Bad Good Very.Good
1   Food        7   6    5         2
2  Music        5   5    7         3
3 People        6   3    7         4

Just imagine you have Very.Bad, Bad, Good and so on instead of X1PCE, X2PCE, X3PCE. See the similarity? But we needed to create such structure first. Hence the freq=table(col(raw), as.matrix(raw)).

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Hello thank you is exactely what I want. Thanks. I just have a question is it also possible to avoid ' raw=raw[,c(2,3,4)] freq=table(col(raw), as.matrix(raw)) and do everything with reshape? Because I had the same kind of issue stackoverflow.com/questions/17303573/… and in this post I only used reshape. I'm confused about it... –  Swiss12000 Aug 10 '13 at 13:41
    
Well, I'm not sure. The raw=raw[,c(2,3,4)] is there only because it has no sense to include the observation indicator (as you do not plot individual observations in the subsequent plot). Therefore, the counts is the only thing that matters. Whether you can do it all with reshape, I don't know. My guess is that you can't. –  jakub Aug 10 '13 at 13:47
    
Well, actually, the data in this current post is different in that it does not contain the numerical counts. Have a look at the columns 4-9 in the data frame from the post you are linking to: they contain numerical values, melted subsequently by Didzis to create the value variable in melted data frame. We did not have any values, so we needed to create them first. Hence freq=table(col(raw), as.matrix(raw)). (I added more extensive explanation at the end of my answer). –  jakub Aug 10 '13 at 14:13
    
Ah true. I got it. Thanks Basically with categorical data like in this post there is one more step... Thanks for your very good explanation. –  Swiss12000 Aug 10 '13 at 14:26
    
Glad I could help. If you like the answer, please check it as accepted (I wouldn't mind a few more reputation points ;-) ) –  jakub Aug 10 '13 at 14:51
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