# Calculate correlation for more than two variables?

I use the following method to calculate a correlation of my dataset:

``````cor( var1, var2, method = "method")
``````

But I like to create a correlation matrix of 4 different variables. What's the easiest way to do this?

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Use the same function (`cor`) on a data frame, e.g.:

``````> cor(VADeaths)
Rural Male Rural Female Urban Male Urban Female
Rural Male    1.0000000    0.9979869  0.9841907    0.9934646
Rural Female  0.9979869    1.0000000  0.9739053    0.9867310
Urban Male    0.9841907    0.9739053  1.0000000    0.9918262
Urban Female  0.9934646    0.9867310  0.9918262    1.0000000
``````

Or on a data frame also helding discrete variables (factors) try something like the following:

``````> cor(mtcars[,unlist(lapply(mtcars, is.numeric))])
mpg        cyl       disp         hp        drat         wt        qsec         vs          am       gear        carb
mpg   1.0000000 -0.8521620 -0.8475514 -0.7761684  0.68117191 -0.8676594  0.41868403  0.6640389  0.59983243  0.4802848 -0.55092507
cyl  -0.8521620  1.0000000  0.9020329  0.8324475 -0.69993811  0.7824958 -0.59124207 -0.8108118 -0.52260705 -0.4926866  0.52698829
disp -0.8475514  0.9020329  1.0000000  0.7909486 -0.71021393  0.8879799 -0.43369788 -0.7104159 -0.59122704 -0.5555692  0.39497686
hp   -0.7761684  0.8324475  0.7909486  1.0000000 -0.44875912  0.6587479 -0.70822339 -0.7230967 -0.24320426 -0.1257043  0.74981247
drat  0.6811719 -0.6999381 -0.7102139 -0.4487591  1.00000000 -0.7124406  0.09120476  0.4402785  0.71271113  0.6996101 -0.09078980
wt   -0.8676594  0.7824958  0.8879799  0.6587479 -0.71244065  1.0000000 -0.17471588 -0.5549157 -0.69249526 -0.5832870  0.42760594
qsec  0.4186840 -0.5912421 -0.4336979 -0.7082234  0.09120476 -0.1747159  1.00000000  0.7445354 -0.22986086 -0.2126822 -0.65624923
vs    0.6640389 -0.8108118 -0.7104159 -0.7230967  0.44027846 -0.5549157  0.74453544  1.0000000  0.16834512  0.2060233 -0.56960714
am    0.5998324 -0.5226070 -0.5912270 -0.2432043  0.71271113 -0.6924953 -0.22986086  0.1683451  1.00000000  0.7940588  0.05753435
gear  0.4802848 -0.4926866 -0.5555692 -0.1257043  0.69961013 -0.5832870 -0.21268223  0.2060233  0.79405876  1.0000000  0.27407284
carb -0.5509251  0.5269883  0.3949769  0.7498125 -0.09078980  0.4276059 -0.65624923 -0.5696071  0.05753435  0.2740728  1.00000000
``````
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Since this graph is necessarily symmetric, it would be better to show the column in the listed order, and the row in the order: UF, UM, RF, RM. The graph then can be limited to those entries above and to the left of the X=Y line. You need only calculate 3/8ths the correlations listed above. –  Slartibartfast Mar 27 '11 at 1:16
What graph? IF you mean the correlation matrix above, `cor` actually only computes the lower triangle then obtains the upper triangle by transposing, look at the source files:) –  Sacha Epskamp Mar 27 '11 at 1:29

See `corr.test` function in `psych` package:

``````> corr.test(mtcars[1:4])
Call:corr.test(x = mtcars[1:4])
Correlation matrix
mpg   cyl  disp    hp
mpg   1.00 -0.85 -0.85 -0.78
cyl  -0.85  1.00  0.90  0.83
disp -0.85  0.90  1.00  0.79
hp   -0.78  0.83  0.79  1.00
Sample Size
mpg cyl disp hp
mpg   32  32   32 32
cyl   32  32   32 32
disp  32  32   32 32
hp    32  32   32 32
Probability value
mpg cyl disp hp
mpg    0   0    0  0
cyl    0   0    0  0
disp   0   0    0  0
hp     0   0    0  0
``````

And yet another shameless self-advert: https://gist.github.com/887249

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the pairs panels function will also give you the correlations, along with the distributions and regression lines of the variables. –  richiemorrisroe Mar 27 '11 at 8:57
@richiemirrisroe, that's right, but `pairs` produces a graph, not a table. There's also `corrgram` package if you prefer graphical over tabular data summary. –  aL3xa Mar 27 '11 at 12:39