# Approximation of covariance for differently sized arrays

Are there any common tools in NumPy/SciPy for computing a correlation measure that works even when the input variables are differently sized? In the standard formulation of covariance and correlation, one is required to have the same number of observations for each different variable under test. Typically, you must pass a matrix where each row is a different variable and each column represents a distinct observation.

In my case, I have 9 different variables, but for each variable the number of observations is not constant. Some variables have more observations than others. I know that there are fields like sensor fusion which study problems like this, so what standard tools are out there for computing relational statistics on data series of differing lengths (preferably in Python)?

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I think this sort of question would be right at home on Computational Science. Of course it's fine here too, but I just thought I'd mention that another site dedicated to these sorts of questions exists. – David Z Jan 9 '12 at 22:17
Thanks! I knew there was MathOverflow, but the admins on that site are extremely rude and close questions for aesthetic reasons, regardless of how practical and helpful it might be. I did not know about the Computational Science site... that will largely help me avoid Math Overflow, which is excellent! – Mr. F Jan 10 '12 at 0:10

From a purely mathmatical point of view, I believe they have to be the same. To make them the same you can apply some concepts related to the missing data problem. I guess I am saying it is not strictly a covariance anymore if the vectors aren't the same size. Whatever tool you use will just make up some points in some smart way to make the vectors of equal length.

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I totally understand, that's why I'm asking for an approximation to covariance. In my case, the data are not missing, it's just that some of the variables can only have values for some observations. On other observation occasions, it doesn't make sense for all variables. I think it's closer to sensor fusion than missing data from statistics, but I agree it's closely related. To be clear, I'm looking precisely for a summary statistic that does work when they are not the same lengths.. so not covariance, but some variant of it. – Mr. F Jan 9 '12 at 22:36
@EMS your response suggests to me a misunderstanding about your data. If you are trying to compute the covariance between two sets of values, of course you have to know which values correspond to one another (for example x(t) and y(t), for some set of times t). If there is no correspondence, then there is no way to tell what kind of correlation these two sets of values have. Perhaps if you described your data a in a bit more detail it would help. – ddodev Jan 9 '12 at 22:43
Fair point...don't have a lot of experience there. But check into link ANCOVA, MANCOVA. Seems like your answer might be in there somewhere – Matt Jan 9 '12 at 22:43
@ddoev, my data are not time series. – Mr. F Jan 9 '12 at 22:55
@EMS Now you have a 13 x 9 matrix. Create another 13 x 9 mask matrix as instructed in the numpy docs that marks which entries in your matrix have the value -1 (or whatever). These are your missing data. Now you can use the numpy function to do whatever you want. – ddodev Jan 9 '12 at 23:02

"The issue is that each variable corresponds to the response on a survey, and not every survey taker answered every question. Thus, I want some measure of how an answer to question 2, say, affects likelihood of answers to question 8, for example."

This is the missing data problem. I think what's confusing people is that you keep referring to your samples as having different lengths. I think you might be visualizing them like this:

sample 1:

``````question number: [1,2,3,4,5]
response       : [1,0,1,1,0]
``````

sample 2:

``````question number: [2,4,5]
response       : [1,1,0]
``````

when sample 2 should be more like this:

``````question number: [  1,2,  3,4,5]
response       : [NaN,1,NaN,1,0]
``````

It's the question number, not the number of questions answered that's important. Without question-to-question correspondence it's impossible to calculate anything like a covariance matrix.

Anyway, that `numpy.ma.cov` function that ddodev mentioned calculates the covariance, by taking advantage of the fact that the elements being summed, each only depend on two values.

So it calculates the ones it can. Then when it comes to the step of dividing by n, it divides by the number of values that were calculated (for that particular covvariance-matrix element), instead of the total number of samples.

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Yes, thank you for clarifying what I meant much better than I was. I was confused because I had never heard for "the missing data problem" in this context. I'd only heard of it in the context of sequential importance sampling techniques. I didn't know that the problem of covariance of mismatched samples so straightforwardly corresponded to the missing data problem. I assumed there must be other statistical quantities that don't rely on the samples being the same size (even with omissions) and also didn't rely on conditional expectations. – Mr. F Jan 19 '12 at 1:04

That's where I started. Notice that in the docs, the input data `x` has to be array-like, meaning that the rows cannot be different sizes. In my case, row 1 of my data has 13 entries, but row 2 has only 10 entries, for example. I still want a single number that expresses the correlation between row 1 and row 2 though. – Mr. F Jan 9 '12 at 22:15