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i'm trying to get the Pearson correlation coefficient for all rows in a data frame relative to each other. there are values that are empty (NA) and this seems to be presenting a problem that I don't encounter when running cor() on 2 vectors with missing values. This is the correct result on 2 vectors:

x <- c(NA, 4.5, NA, 4, NA, 1)
y <- c(2.5, 3.5, 3, 3.5, 3, 2.5)
cor(x,y, use = "complete.obs")
[1] 0.9912407

and here is the result when they are part of a data frame:

cor(t(critics1), use = "complete.obs")
   y  a  b  c  d  e  x
y  1 NA NA NA NA NA NA
a NA  1  1  1 -1  1 -1
b NA  1  1  1 -1  1 -1
c NA  1  1  1 -1  1 -1
d NA -1 -1 -1  1 -1  1
e NA  1  1  1 -1  1 -1
x NA -1 -1 -1  1 -1  1
Warning message:
In cor(t(critics1), use = "complete.obs") : the standard deviation is zero

Why is the use parameter not having the same effect? Here is what the critics1 dataframe looks like;

film1 film2 film3 film4 film5 film6
y   2.5   3.5   3.0   3.5   3.0   2.5
a   3.0   3.5   1.5   5.0   3.0   3.5
b   2.5   3.0    NA   3.5   4.0    NA
c    NA   3.5   3.0   4.0   4.5   2.5
d   3.0   4.0   2.0   3.0   3.0   2.0
e   3.0   4.0    NA   5.0   3.0   3.5
x    NA   4.5    NA   4.0    NA   1.0
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What does the data.frame critics1 look like? Could you include a few rows in your question? –  Josh O'Brien Dec 6 '11 at 18:59
2  
Maybe there are actually no complete observations in your matrix, in which case you might need to use pairwise.complete.obs? Only way to know for sure is to share the structure of your matrix, as Josh says. –  joran Dec 6 '11 at 19:02
1  
@joran. Bingo. There are only two complete observations, and (to boot), y shows no variance among them. With pairwise.complete.obs, it works just fine. –  Josh O'Brien Dec 6 '11 at 19:17

1 Answer 1

up vote 7 down vote accepted

As @joran speculated, when you transpose critics1, there are only two complete observations (i.e. rows with no missing values). That's why all of the correlations are either 1 or -1 or (for those involving y, which has value 3.5 in both complete rows), NA.

t(critics1)
#         y   a   b   c d   e   x
# film1 2.5 3.0 2.5  NA 3 3.0  NA
# film2 3.5 3.5 3.0 3.5 4 4.0 4.5
# film3 3.0 1.5  NA 3.0 2  NA  NA
# film4 3.5 5.0 3.5 4.0 3 5.0 4.0
# film5 3.0 3.0 4.0 4.5 3 3.0  NA
# film6 2.5 3.5  NA 2.5 2 3.5 1.0

If you use use="pairwise.complete.obs" instead of use="complete.obs", it works as you'd like:

cor(t(df), use="pairwise.complete.obs")["y","x"] # Extract correlation of y and x
# [1] 0.9912407
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