1

I'm working with survey data. There are two groups of survey items, and each group has three items. There are two respondents in my survey sample.

I am attempting to generate heat maps by survey item groups, where:

  • the respondents are on the 'y' axis
  • survey items they responded to are on the 'x' axis.

Here is a fully reproducible example:

    wd <- "D:/Desktop/"
    setwd(wd)

    #--create dataframe

    respondent = c("Respondent_1", "Respondent_1", "Respondent_1","Respondent_1", "Respondent_1", "Respondent_1",
                   "Respondent_2", "Respondent_2", "Respondent_2","Respondent_2", "Respondent_2", "Respondent_2")
    item = c("Item_1", "Item_2", "Item_3","Item_1", "Item_2", "Item_3",
             "Item_1", "Item_2", "Item_3","Item_1", "Item_2", "Item_3") 

    item_group = c("Group_1","Group_1","Group_1","Group_2","Group_2","Group_2",
                   "Group_1","Group_1","Group_1","Group_2","Group_2","Group_2")
    score = c(1, 40, 100, 100, 30, 12, 
              2, 15, 80, 77, 44, 10) 

    high_value_color = c("darkred", "darkred", "darkred",
                         "brown3", "brown3", "brown3")

    plot_df = data.frame(respondent, item, item_group, score, high_value_color) 

    #--write function
    #--inspired from this: http://www.reed.edu/data-at-reed/resources/R/loops_with_ggplot2.html

    plot_list <- unique(plot_df$item_group)

    survey_items.graph <- function(df, na.rm = TRUE, ...) {

    #--loop to generate heatmaps for each group

      for (i in seq_along(plot_list)) { 

        plot <-  ggplot(aes(x = df$item[df$item_group == plot_list[i]], 
                            y = df$respondent[df$item_group==plot_list[i]]), 
                        data = subset(df, df$item_group == plot_list[i])) +
          geom_tile(aes(fill = df$score[df$item_group == plot_list[i]]), colour = "black") + 
          scale_fill_gradient2(low = "azure1", 
                               high = df$high_value_color[df$item_group == plot_list[i]], 
                               guide = "colorbar") +
          geom_text(aes(label = df$score[df$item_group==plot_list[i]], 
                        hjust = 0.5, 
                        angle = 90), 
                        size = 4) +
          ggtitle(df$item_group[df$item_group==plot_list[i]]) +
          theme(panel.grid.major = element_blank(),
                panel.grid.minor = element_blank(),
                panel.background = element_blank(),
                plot.title = element_text(size = 7, face="bold"),
                axis.text.y = element_text(size = 7, face ="bold"),
                axis.text.x = element_text(angle=90, hjust=1),
                axis.title = element_blank(),
                legend.position = "none")
        # save plots as .png
        ggsave(plot, file=paste(wd,"plots/heatmap for ", plot_list[i], ".png", sep=""), scale=2)
        print(plot)
      }
    }

    #--load ggplot2

    library(ggplot2)

    #--execute function on plot dataframe
    survey_items.graph(plot_df)

When I execute my code, I got the following two plots:

current plots

My intuition tells me that I'm not doing something right with the 'high' argument of the 'scale_fill_gradient2' portion of my code.

As a test, when I've replaced the value for the 'high' argument with just an acceptable color string value (e.g. 'brown3', other colors can be found here), I get the plots to behave as I want them to.

tweaked plots

What I want is for the 'high' argument of 'scale_fill_gradient2' to accept the corresponding items' value found in the 'high_value_color' variable of the data.

  • 1
    Start by removing df$ from aes() calls. – Axeman Sep 2 '16 at 19:46
  • Your intuition is right. You are passing 6 colors to the high argument of scale_fill_gradient2. – Axeman Sep 2 '16 at 19:51
  • 3
    You're repeating yourself an awful lot with the subsetting, df$item_group==plot_list[i]]. Have the first line of your for loop be sub_df = df[df$item_group==plot_list[i]], ] and then use sub_df instead of subsetting every single data element every time you use it. – Gregor Sep 2 '16 at 19:56
  • 3
    You probably want high = unique(df$high_value_color[df$item_group == plot_list[i]]. If you've worked with lapply loops at all, I find split and lapply loops easier than for loops for creating a plot per group. – aosmith Sep 2 '16 at 19:57
  • @aosmith Your response worked! I will certainly explore the lapply and split loops. – ealfons1 Sep 2 '16 at 20:16
3

Ok. The main problem was the passing of colors to scale_fill_gradient2. However, there is a lot more in your code that can be improved. Specifically, you want to only pass bare variable names to aes. I also don't see why you are constantly repeating your subsetting everywhere. You make it very likely for yourself to run into trouble.

Here is how I would probably tackle a problem like this:

First of all, we make a function that is a lot simpler: it only takes directly a data argument and simply makes the required plot with that data (no loop).

survey_items.graph <- function(dat) {
  ggplot(aes(x = item, y = respondent), data = dat) +
    geom_tile(aes(fill = score), colour = "black") + 
    scale_fill_gradient2(low = "azure1", 
                         high = dat$high_value_color[1], 
                         guide = "colorbar") +
    geom_text(aes(label = score), hjust = 0.5, angle = 90, size = 4) +
    ggtitle(dat$item_group[1]) +
    theme(panel.grid.major = element_blank(),
          panel.grid.minor = element_blank(),
          panel.background = element_blank(),
          plot.title = element_text(size = 7, face="bold"),
          axis.text.y = element_text(size = 7, face ="bold"),
          axis.text.x = element_text(angle=90, hjust=1),
          axis.title = element_blank(),
          legend.position = "none")
}

We then split up your data in a list of data.frames, one per item_group:

split_data <- split(plot_df, plot_df$item_group)

Then we apply our function to each entry in the list, creating a list of plots:

plot_list <- lapply(split_data, survey_items.graph)

For convenience here, I use grid.arrange to quickly stitch both plots together:

library(gridExtra)
do.call(grid.arrange, plot_list)

I you want to save them you can use something like:

Map(function(x, i, ...) ggsave(paste0('plot', i, '.png'), x, ...), 
    plot_list, seq_along(plot_list), scale = 2)

enter image description here

  • Hey. The comment by @aosmith worked for my current approach. Nonetheless, I will explore your alternative for this and future projects. – ealfons1 Sep 2 '16 at 20:17
  • 2
    @ealfons1 There are different approaches of course, but please at least fix you aes calls. Your way will bite you in the behind sooner or later! Have a good weekend. – Axeman Sep 2 '16 at 20:24
  • 1
    To be more explicit, using $ inside aes() will work for simple ggplots, but it's a bad habit. It will break if there are facets or more complicated stat functions involved. There is no reason to ever do it. – Gregor Sep 2 '16 at 20:28
  • Will remove the $ from aes() calls. – ealfons1 Sep 2 '16 at 20:31

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.