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I have about 20 variables about different cities labeled "Y" or "N" and are factors. The variables are like "has co-op" and the such. I want to find some correlations and possibly use the corrplot package to display the connections between all these variables. But for some reason I cannot coerce the variables so that they are read in a way corrplot or even cor() likes so that I can get them in a matrix. I tried:

 M <- cor(model.matrix(~.-1,data=mydata[c(25:44)]))

but the results in corrplot came out really weird. Does anyone have a fast way to turn a bunch of Y/N answers into a correlation matrix? Thanks!

9

You can use the sjp.corr function or sjt.corr function for graphical or tabular output, both from the sjPlot-package.

DF <- data.frame(v1 = sample(c("Y","N"), 100, T),
                 v2 = sample(c("Y","N"), 100, T),
                 v3 = sample(c("Y","N"), 100, T),
                 v4 = sample(c("Y","N"), 100, T),
                 v5 = sample(c("Y","N"), 100, T))
DF[] <- lapply(DF,as.integer)
library(sjPlot)
sjp.corr(DF)
sjt.corr(DF)

The plot:

enter image description here

The table (in RStudio viewer pane):

enter image description here

You can use many parameters to modify the appearance of the plot or table, see some examples here.

  • Nice! I'll use that from now on. By the way, with simulated examples, it's customary to set the seed (though maybe not important here). – Frank Jul 6 '15 at 11:36
  • 1
    You're right, I should accustom myself to setting seed for reproducibility. ;-) – Daniel Jul 6 '15 at 13:40
3

For binary variables, you might consider cross tabs (the table function in R).

However, getting the correlation matrix is pretty straightforward:

# example data
set.seed(1)
DF <- data.frame(x=sample(c("Y","N"),100,T),y=sample(c("Y","N"),100,T))

# how to get correlation
DF[] <- lapply(DF,as.integer)
cor(DF)
#            x          y
# x  1.0000000 -0.0369479
# y -0.0369479  1.0000000

# visualize it
library(corrplot)
corrplot(cor(DF))

When you convert to integer in this example, "N" is 1 and "Y" is 2. I'm not sure if that holds generally (for R's storage of factors). To have a look at the mapping for your data, try lapply(DF,levels) before converting to integer.

To me, the plot makes sense. If you have questions about the statistical interpretation of correlations in this context, you should consider having a look at http://stats.stackexchange.com

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