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I'm looking to calculate some form of correlation coefficient in R (or any common stats package actually) in which the value of the correlation is influenced by missing values. I am not sure if this is possible and am looking for a method. I do not want to impute data, but actually want the correlation to be reduced based on the number of incomplete cases included in some systematic fashion. The data are a series of time points generated by different individuals and the correlation coefficient is being used to compute reliability. In many cases, one individual's data will include several more time points than the other individual...

Again, not sure if there is any standard procedure for dealing with such a situation.

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If you are reducing correlation, you are, in effect, imputing data to affect that change. –  Alex Reynolds Dec 2 '11 at 8:08
Ok, that would be great. Any suggestions? Although I think that runs counter to the spirit of "impute": Assign (a value) to something by inference from the value of the products or processes to which it contributes. –  user883210 Dec 22 '11 at 19:36

2 Answers 2

One thing to look at is fitting a logistic regression to whether or not a point is missing. If there is no relationship then that provides support for assuming that the missing values won't provide any information. If that is your case then you won't have to impute anything and can just perform your computation without the missing values. glm in R can be used for logistic regression.

Also on a different note, see the use="pairwise.complete.obs" argument to cor which may or may not apply to you.

EDIT: I have revised this answer based on rereading the question.

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I thought this would be the answer, but on further thought there are issues. Still a good suggestion. To make this work for my case (2 sets of time points for the same duration video) one could adopt the following modification. First, divide the video into bins and count overlaps for the two coders within bins. Use overlap/no-overlap as input to the logistic regression. Assuming I do this, given the number of missing overlaps, it's almost certain that there will be a relationship (if I'm understanding correctly). In that case, I still have no way of getting a good reliability measure. –  user883210 Dec 22 '11 at 19:35

My feeling is that when there is a datapair that has one of the timeseries showing NA, that pair cannot be used for calculating a correlation as there is no information at that point. As there is no information on that point, there is no way to know how it would influence the correlation. Specifying that an NA reduces the correlation seems tricky, if an observation would be present at a point this could just as easily have improved the correlation.

Default behavior in R is to return NA for the correlation if there is an NA present. This behavior can be tweaked using the 'use' argument. See the documentation of that function for more details.

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I agree with you, and nicely described. In a way, the correlation is already penalised by missing data, as this will reduce the sample size used to calculate the p-value. –  Michelle Dec 2 '11 at 19:07
In the particular case I'm dealing with individuals basically tend to agree very closely in time when they do both mark a time point, or one individual marks a point and the other does not. Thus, simply reducing the sample size likely doesn't penalize sufficiently, but it could be helpful in other cases. –  user883210 Dec 22 '11 at 19:17

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