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I saw here that you should use drop when passing a (single-column) XTS object to the ccf (cross-correlation) function. (The sample data is quite big, so I put it in a gist)

library(xts)
gist="https://gist.github.com/raw/3291932"
tmp1=dget(file.path(gist,"e620647218626929b4ee370a05aa7748b2f9a32b/tmp1.txt"))
tmp2=dget(file.path(gist,"49b732db3eafa52f96006e3b1bb0be28380f5df0/tmp2.txt"))
ccf(drop(tmp1),drop(tmp2)) #Weird?

I expected a small peak around lag=0, with mostly noise either side. Instead I got a straight line:

ccf on all 400 bars

That was 400 bars. I got the same kind of line on my full data of thousands of bars. But if I use just the tail-end 100 bars of that data I get something closer to what I expected: (50 bars looks even more plausible)

ccf for just the last 100 bars

I'm a bit stumped if this is a ccf bug, a problem with the way I use xts objects, my misunderstanding of what ccf is doing, or I've magically discovered the formula to beat the stock market...

share|improve this question
    
@JoshuaUlrich Thanks for editing the code to link it directly to gist; I didn't know that was possible. However I get "cannot open the connection" because of "unsupported URL scheme"; do I need to configure something, or load another package? – Darren Cook Aug 8 '12 at 23:12
    
That's odd. It just worked for me. I'm using R-2.15.1. Perhaps you're using an older version? – Joshua Ulrich Aug 9 '12 at 0:36
    
@JoshuaUlrich That is strange, as I'm also using 2.15.1. I also started R with --vanilla, and get same complaint. – Darren Cook Aug 9 '12 at 0:49
    
This explains it. – Joshua Ulrich Aug 9 '12 at 4:13
    
@JoshuaUlrich Actually I had looked at that, but wasn't sure if it was relevant. Are you on Windows then? (I'm on Linux) – Darren Cook Aug 9 '12 at 5:24
up vote 4 down vote accepted

Your results aren't surprising, since you're looking at the cross-correlations between stock prices. Prices usually have high serial auto-correlation at several lags.

acf(tmp1)
acf(tmp2)

Most correlation analysis is done on returns, which creates something more like what you seemed to expect:

ccf(drop(diff(tmp1,na.pad=FALSE)),drop(diff(tmp2,na.pad=FALSE)))
share|improve this answer
    
Thanks Joshua, that does indeed create the kind of noisy chart I was expecting. I don't, internally, get why using raw prices gives the regular-looking chart yet... I think I might have to poke around in the source. – Darren Cook Aug 8 '12 at 23:21

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