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I am trying to alter the acf plot produced in R and am having no luck. My goal is to plot several autocorrelations in one plot and, instead of using the standard histogram, I would like to plot the autocorrelations as lines using different colors, so it is easy to distinguish between the different autocorrelations. The plot should also include the 95% confidence interval (similar as in the picture).

My goal would look something like this:

Example picture

Edit: As you can see, the acf result for the 0 day are also excluded.

So far my code looks like the following:

ACFdata <- merge(returns$companyA, returns$companyB)
ACF <- acf(ACFdata, na.action=na.pass, plot=FALSE)

So basically I only have the acf results and no clear idea of how to plot the acf results in a combined plot with colored lines.

Edit:

dput(ACF)
structure(list(acf = structure(c(1, 0.145125809377954, 0.142861039994255, 
0.0290589250361852, 0.124017821439246, 0.143011895498405, 0.105734336151885, 
0.0788661257638103, 0.0273805239429181, -0.118479508798021, 0.101475240804517, 
0.107529091607734, 0.0325071547524698, 0.15248825917752, 0.0345632600693495, 
0.105214927797195, 0.121820119834598, 0.106869630726315, 0.0957839598194307, 
-0.0908719122532893, -0.00734593289915199, 0.0178894474261508, 
0.0499571905134495, 0.0780855846282789, 0.0493591013094398, -0.0749535131984232, 
0.357086608389703, 0.246585751931129, -0.0629762920537067, 0.0395286467626801, 
0.0419665673763051, 0.00328571836147342, -0.00519232466623128, 
0.00483533922926756, -0.0250664920310689, -0.0876036092345946, 
0.0627421774389966, 0.135479194083771, 0.0626078698366847, 0.101742576940549, 
0.168581486338436, 0.0471250703324634, 0.0340518458280056, 0.0758087712436733, 
0.0124645208996951, -0.0277606211509939, -0.0341158520505214, 
-0.0644578776612549, -0.045110487814526, -0.0623504592674428, 
-0.0351696262152127, 0.058995956134521, 0.357086608389703, 0.0252501548107572, 
0.0611739122500323, 0.215137916544862, 0.183625254355587, 0.124460309708319, 
0.138507997600327, 0.040228791497421, 0.0140766070862445, -0.0799271843641712, 
0.017348973311441, 0.0952746355608701, 0.0404310918206657, 0.0632714503581609, 
-0.0257358208892062, 0.0599565925085307, 0.0384859490239319, 
0.0886012309614729, 0.0596889523276417, 0.0533055470088723, 0.0770419303845914, 
0.0840758532202191, 0.0518662906637178, 0.0399131621778747, 0.0202505502465014, 
-0.0105112241804381, 1, 0.12202126664333, -0.0380896874570601, 
0.171699455089945, 0.0921701048038319, -0.107621049165039, 0.0206611931650316, 
-0.00519190992729939, -0.0631090559052638, -0.0978803261385059, 
-0.0277111483321292, 0.064129198291785, -0.0932937679361303, 
0.0798459519613646, 0.0889483107174154, -0.0116665547060194, 
0.00663627461258374, 0.135982611207688, -0.0258901243417071, 
0.11835604048827, 0.100938356006999, 0.0132499377804722, 0.0534896127278462, 
0.00128064337860851, -0.0690617100695171, 0.0814839944828229), .Dim = c(26L, 
2L, 2L)), type = "correlation", n.used = 778L, lag = structure(c(0, 
1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 
19, 20, 21, 22, 23, 24, 25, 0, -1, -2, -3, -4, -5, -6, -7, -8, 
-9, -10, -11, -12, -13, -14, -15, -16, -17, -18, -19, -20, -21, 
-22, -23, -24, -25, 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 
13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 0, 1, 2, 
3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 
20, 21, 22, 23, 24, 25), .Dim = c(26L, 2L, 2L)), series = "test", 
    snames = c("returns$companyA", "returns$companyB"
    )), .Names = c("acf", "type", "n.used", "lag", "series", 
"snames"), class = "acf")
share|improve this question
    
No example visible. Need you to post output from dput(returns) –  BondedDust May 31 '14 at 3:48
    
Yeah that's way too much data to be able to paste it into here. My returns are time series of several hundred companies, i.e. a time-indexed data frame which contains (log)returns. I'll post the output of dput(ACF) instead, since it's considerable less data. –  Olorun May 31 '14 at 4:02
    
So how did you make the plot above? What code did you run? Is all the data needed to plot included in the posted data? –  MrFlick May 31 '14 at 5:27
    
I didn't make the plot - that plot is used in a paper and I would like to create a similar plot with my data. The code I run (see my code excerpt above) results in the data which I've also listed above (the dput part). What I would like to do now is transform my data into that plot. –  Olorun May 31 '14 at 5:30
    
So you want a plot with lag on the x-axis, acf on the y-axis, and one line for companyA and a different color for companyB with 95% confidence intervals for both. A horizontal line at y=0. (Not sure what those other red lines are.) –  MrFlick May 31 '14 at 5:46

1 Answer 1

up vote 1 down vote accepted

First you look at str(ACF):

> str(ACF)
List of 6
 $ acf   : num [1:26, 1:2, 1:2] 1 0.1451 0.1429 0.0291 0.124 ...
 $ type  : chr "correlation"
 $ n.used: int 778
 $ lag   : num [1:26, 1:2, 1:2] 0 1 2 3 4 5 6 7 8 9 ...
 $ series: chr "test"
 $ snames: chr [1:2] "returns$companyA" "returns$companyB"
 - attr(*, "class")= chr "acf"

You see that the $acf element is an array with the last two dimensions controlling which series acf or ccf result is being referenced. Then plot(ACF) which shows you that the default plotting mechanism puts multiple plots on the same page (which you are trying to avoid.) So run:

> plot(ACF, type="l", max.mfrow=1, ylim=c(-.2,.4))
Hit <Return> to see next plot: 
Hit <Return> to see next plot: 
Hit <Return> to see next plot: 
Hit <Return> to see next plot: 

So "back up" to the first plot using your user interface for the interactive plot device, and then add the data from the otehr series using whatever colors and line widths you choose:

> lines(ACF$acf[-1, 2,1], lty=3, col="red", lwd=3)
> lines(ACF$acf[-1, 2,2], lty=2, col="orange", lwd=3)
> lines(ACF$acf[-1, 1,2], lty=2, col="blue", lwd=2)

I did not omit the first period but rather limited the y-range for plotting. That was simpler and allowed me to accept the default plot.acf function's choice of confidence bands rather than trying to construct them myself. You will need to change the title and probably put in a legend, but that should be trivial if you understand the base-graphic commands.

enter image description here

share|improve this answer
    
Thanks, that was exactly what I was looking for. –  Olorun Jun 1 '14 at 0:15

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