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.