# R - Warning message: “In cor(…): the standard deviation is zero”

I have a single vector of flow data (29 data) and a 3D matrix data(360*180*29)

i want to find the correlation between single vector and 3D vector. The correlation matrix will have a size of 360*180.

``````> str(ScottsCk_flow_1981_2010_JJA)
num [1:29] 0.151 0.644 0.996 0.658 1.702 ...
> str(ssta_winter)
num [1:360, 1:180, 1:29] NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN ...
> summary(ssta_winter)
Min.  1st Qu.   Median     Mean  3rd Qu.     Max.     NA's
-2.8     -0.2      0.1      0.2      0.6      6.0 596849.0
``````

This above is the structure of the vector and 3D matrix. 3D matrix has many values as Null.

``````> for (i in 1:360) {
+   for(j in 1:180){
+       cor_ScottsCk_SF_SST_JJA[i,j] = cor(ScottsCk_flow_1981_2010_JJA,ssta_winter[i,j,])
+    }
+ }
There were 50 or more warnings (use warnings() to see the first 50)
``````

This part of code above is the code to find correlation. But it gives waring as

``````> warnings()
Warning messages:
1: In cor(ScottsCk_flow_1981_2010_JJA, ssta_winter[i, j,  ... :
the standard deviation is zero
2: In cor(ScottsCk_flow_1981_2010_JJA, ssta_winter[i, j,  ... :
the standard deviation is zero
3: In cor(ScottsCk_flow_1981_2010_JJA, ssta_winter[i, j,  ... :
the standard deviation is zero
4: In cor(ScottsCk_flow_1981_2010_JJA, ssta_winter[i, j,  ... :
the standard deviation is zero
5: In cor(ScottsCk_flow_1981_2010_JJA, ssta_winter[i, j,  ... :
the standard deviation is zero
``````

also, the result of the correlation matrix is all NULL. how did this happen?

``````> str(cor_ScottsCk_SF_SST_JJA)
num [1:360, 1:180] NA NA NA NA NA NA NA NA NA NA ...
``````

I have used exact same code bfr with 350 flow vector and 360*180*350 matrix. This code works perfectly.

-
For loop, all loop counter are not hard coded, hard coding here is just to simplify question. –  Yu Deng Feb 3 '12 at 7:00

A few thoughts.

First, by using `apply()`, you can replace that nested loop with something like this:

``````cor_ScottsCk_SF_SST_JJA <-
apply(ssta_winter, MARGIN = 1:2, FUN = cor, ScottsCk_flow_1981_2010_JJA)
``````

Second, it appears that >31% (`596849/(360*180*29)`) of the points in `ssta_winter` are `NaN` or (possibly) `NA_real_`. Given the return value of a correlation calculated on vectors that contain even a single `NaN`,

``````cor(c(1:3, NaN), c(1:4))
# [1] NA
``````

isn't it likely that all those `NaN`s are causing `cor_ScottsCk_SF_SST_JJA` to be filled with `NA`s?

Third, as the warning messages plainly tell you, some of the vectors you are passing to `cor()` have zero variance. They have nothing to do with the `NaN`s: as the following shows, R doesn't complain about standard deviations of 0 when `NaN` are involved. (Quite sensibly too, since you can't calculate standard deviations for undefined numbers):

``````cor(c(NaN, NaN, NaN, NaN), c(1,1,1,1))
# [1] NA

cor(c(1,1,1,1), c(1,2,3,4))
# [1] NA
# Warning message:
# In cor(c(1, 1, 1, 1), c(1, 2, 3, 4)) : the standard deviation is zero
``````
-
But why it works previously, the same ssta data, a lot of NAs. –  Yu Deng Feb 3 '12 at 7:52
I'm curious about that as well, but have no way of knowing (or learning anything) without the data in front of me. Best of luck! –  Josh O'Brien Feb 3 '12 at 8:04
sorry, the problem is the ssta_winter array, the loop doesn't pass down, the data are saved corresponding to the last loop counter. Thank you for your help. –  Yu Deng Feb 4 '12 at 0:55