# Selection from a list

I'm doing some analysis on financial time series and used the function `acf()` and applied it to the columns of a matrix containing returns for three assets (VBLTX, FMAGX, SBUX), like so:

``````ret.acf<-apply(ret.mat, 2, acf, plot=FALSE)
``````

Now, since acf returns correlation coefficients even for lag 0, I want to eliminate results at said lag. I did:

``````ret.acf\$VBLTX\$acf[1]<-NA
ret.acf\$FMAGX\$acf[1]<-NA
ret.acf\$SBUX\$acf[1]<-NA
``````

Is there an easier way to do this? Something along the lines of `ret.acf\$ALL\$acf[1]<-NA`

-
Excuse me but what does the `'['` in lapply do? Does it work as a selection function? –  Santiago Montoya Oct 16 '12 at 13:07

Another approach is using `lapply`

``````set.seed(001) # generating some data.
ts1 <- ts(rnorm(48), start=1, end=48, frequency=1)
ts2 <- ts(rnorm(48), start=1, end=48, frequency=1)
ts3 <- ts(rnorm(48), start=1, end=48, frequency=1)

DF <- data.frame(ts1, ts2, ts3)

ACF <- apply(DF, 2, acf, plot=FALSE)
lapply(ACF, function(x) replace(x\$acf, x\$acf[1], NA)) # which produces...
\$ts1
, , 1

[,1]
[1,]            NA
[2,]  0.0401834301
[3,] -0.1866931442
[4,] -0.1225960706
[5,]  0.0959013348
[6,] -0.2063631992
[7,] -0.2094716551
[8,] -0.0003712424
[9,]  0.0498757174
[10,] -0.0704899925
[11,]  0.1237808090
[12,]  0.2161029368
[13,] -0.0286315310
[14,] -0.0159506012
[15,]  0.1319491720
[16,] -0.1252024533
[17,] -0.1513954171

\$ts2
, , 1

[,1]
[1,]           NA
[2,] -0.096231670
[3,]  0.081568099
[4,] -0.087374506
[5,] -0.177902683
[6,]  0.100911018
[7,] -0.035838433
[8,]  0.127940241
[9,]  0.001778011
[10,]  0.108459764
[11,]  0.064023572
[12,] -0.219530394
[13,] -0.088579334
[14,]  0.044634396
[15,] -0.092443901
[16,]  0.109249684
[17,] -0.196140673

\$ts3
, , 1

[,1]
[1,]          NA
[2,] -0.14669482
[3,]  0.37416707
[4,]  0.11488186
[5,]  0.17975602
[6,]  0.03751673
[7,] -0.04159624
[8,]  0.13195658
[9,] -0.29795151
[10,]  0.12091659
[11,] -0.25545587
[12,] -0.04727648
[13,] -0.02498085
[14,]  0.03857024
[15,] -0.02722294
[16,] -0.02330514
[17,]  0.08765119
``````

or just leaving out the autocorrelation of order 0

``````lapply(ACF, '[', 1:16)

\$ts1

Autocorrelations of series ‘newX[, i]’, by lag

1      2      3      4      5      6      7      8      9     10     11     12     13     14     15     16
0.040 -0.187 -0.123  0.096 -0.206 -0.209  0.000  0.050 -0.070  0.124  0.216 -0.029 -0.016  0.132 -0.125 -0.151

\$ts2

Autocorrelations of series ‘newX[, i]’, by lag

1      2      3      4      5      6      7      8      9     10     11     12     13     14     15     16
-0.096  0.082 -0.087 -0.178  0.101 -0.036  0.128  0.002  0.108  0.064 -0.220 -0.089  0.045 -0.092  0.109 -0.196

\$ts3

Autocorrelations of series ‘newX[, i]’, by lag

1      2      3      4      5      6      7      8      9     10     11     12     13     14     15     16
-0.147  0.374  0.115  0.180  0.038 -0.042  0.132 -0.298  0.121 -0.255 -0.047 -0.025  0.039 -0.027 -0.023  0.088
``````
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I think you want `lapply(ACF, function(x) replace(x\$acf, 1, NA))`. The second argument to `replace` is an index vector, not a value in the vector. –  Brian Diggs Oct 8 '12 at 19:53
You can do this with a `for` loop over the elements:
``````for (col in names(ret.acf)) {