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I am trying to check for auto-correlation in a zoo object (monthly data with several columns) using:

acf(jan, plot=F)$acf[2]

but I get the following error:

Error in na.fail.default(as.ts(x)) : missing values in object

To simplify, I extracted just one of the columns which I called "a" (so now I have a simple zoo object with index and data), and used:

acf(a)

but still get the same error. Can't acf be used in zoo objects?

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4 Answers 4

up vote 8 down vote accepted

Just use

acf(coredata(jan))

That should work fine. Keep in mind that you have to provide a regularly spaced time series for that to give you a meaningful answer.

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1  
thanks! It now works if I do it just for one column but not for the matrix, it gives me an error: > acf(coredata(feb)) Error in acf(coredata(feb)) : 'lag.max' must be at least 0 –  sbg Sep 7 '11 at 15:26
    
I don't think you can use acf on multivariate series. What do you want to obtain the acf of each column? Or are you interested in the cross correlation between the columns (that would be the ccf not the acf)? –  Dr G Sep 7 '11 at 16:09

The default behaviour for acf is na.action = na.fail. Try setting it to na.omit or na.pass in your call acf(..., na.action = na.omit)

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thanks but my data doesn't have NAs –  sbg Sep 5 '11 at 16:14
1  
@sbg, acf works on regularly spaced data so acf first expands the time series to a regularly spaced one inserting NAs as needed to make it regularly spaced. –  G. Grothendieck Sep 5 '11 at 17:01
    
@Grothendieck, thanks but it is monthly data so it is regularly spaced –  sbg Sep 6 '11 at 12:38

Or self made

autocorrplot <- function(x)
{
  n <- length(x)
  barplot(sapply(1:10,function(i) cor(x[-i:-1],x[(-n-1+i):-n])))
}
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I had the same problem as you when trying to use the ACF function on monthly S&P returns. Turns out the coredata function solved the problem as it stripped date information from returns in my data set from yahoo finance.

you might want to give it a shot!

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