# rolling computations in xts by month

I am familiar with the `zoo` function `rollapply` which allows you to do rolling computations on `zoo` or `xts` objects and you can specify the rolling increment via the `by` parameter. I am specifically interested in applying a function every month but using all of the past daily data in the computation. For example say my data set looks like this:

``````dte, val
1/01/2001, 10
1/02/2001, 11
...
1/31/2001, 2
2/01/2001, 54
2/02/2001, 34
...
2/30/2001, 29
``````

I would like to select the end of each month and `apply` a function that uses all the daily data. This doesn't seem like it would work with `rollapply` since the `by` argument would be 30 sometimes, 29 other months, etc. My current idea is:

``````f <- function(xts_obj) { coef(lm(a ~ b, data=as.data.frame(xts_obj)))[1] }
month_end <- endpoints(my_xts, on="months", k=1)
rslt <- apply(month_end, 1, function(idx) { my_xts[paste0("/",idx)] })
``````

Surely there is a better way to do this that would be quicker no? To clarify: I would like to use overlapping periods just the rolling should be done monthly.

-

If I understand correctly, you can get the dates of your endpoints, then for each endpoint (i.e. using `lapply` or `for`), call `rollapply` using data up to that point.

``````getSymbols("SPY", src='yahoo', from='2012-01-01', to='2012-08-01')
idx <- index(SPY)[endpoints(SPY, 'months')]
out <- lapply(idx, function(i) {
as.xts(rollapplyr(as.zoo(SPY[paste0("/", i)]), 5,
function(x) coef(lm(x[, 4] ~ x[, 1]))[2], by.column=FALSE))
})
sapply(out, NROW)
#[1]  16  36  58  78 100 121 142 143
``````

I temporarily coerce to `zoo` for the `rollapplyr` to make sure the `rollapply.zoo` method is being used (as opposed to the unexported `rollapply.xts` method), then coerce back to `xts`

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Is the zoo/xts conversion needed? I get the same result when I take them out. –  Darren Cook Aug 19 '12 at 0:57
@DarrenCook, It doesn't look like it's necessary, but I wanted to cover my bases. –  GSee Aug 19 '12 at 1:13
@DarrenCook, If you want the results to be `xts`, then the `as.xts` is required assuming you're using `rollapply.zoo` which you will be unless you have PerformanceAnalytics loaded. If you have PerformanceAnalytics loaded, then you'll be using `rollapply.xts` –  GSee Aug 19 '12 at 14:57
@Gsee, I have been wondering how to solve a similar problem, less complex because I have to calculate function for each month using monthly data i.e. calculate trend using all the data availaible upto that time. How will I modify the above method given? What will be the width specified? Can I do this without rollapply? –  Anusha Nov 5 '12 at 22:06
@Anusha, this is the last question of yours I'm answering in the comments of another answer. The next question you ask you should post as a proper question. Try this: `m <- to.monthly(SPY); m\$trend <- sapply(seq_len(NROW(m)), function(i) coef(lm(as.numeric(Ad(m[1:i])) ~ c(1:i)))[2]); m`. and as an added bonus `chartSeries(OHLC(m), TA='addTA(m\$trend)')` –  GSee Nov 6 '12 at 0:55

As an answer to "Is the zoo/xts conversion needed?": It isn't needed in this case, but rollapply won't work if you send it a dataframe, as I recently discovered from this StackOverflow answer

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`rollapply.xts` is now registered as an S3 method in the development version of xts. However, it is not yet perfect; there is at least one case where it fails, but rollapply.zoo does not. –  GSee Nov 16 '12 at 15:49

You want `period.apply()`, or its convenience helper `apply.monthly()`, both in xts.

Example:

``````R> foo <- xts(1:100, order.by=Sys.Date()+0:99)
R> apply.monthly(foo, sum)
[,1]
2012-08-31  105
2012-09-30  885
2012-10-31 1860
2012-11-25 2200
R>
``````

or equally

``````R> apply.monthly(foo, quantile)
0%   25%  50%   75% 100%
2012-08-31  1  4.25  7.5 10.75   14
2012-09-30 15 22.25 29.5 36.75   44
2012-10-31 45 52.50 60.0 67.50   75
2012-11-25 76 82.00 88.0 94.00  100
R>
``````

just to prove that functions returning more than one value can be used too.

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but won't this simply do non overlapping periods? that is the stuff passed to sum are going to be the non-overlapping data in the months. i am trying to use all of the past data so that my periods are overlapping.. –  Alex Aug 18 '12 at 18:34
Oh, I see, that would indeed be different. But as you did not in fact provide a full example, I missed that. Depending on what your aggregation function is, you could possibly still use `apply.monthly()` and aggregate afterwards. It all depends... –  Dirk Eddelbuettel Aug 18 '12 at 18:37
ok i just updated the question to make it more clear. sorry about that. –  Alex Aug 18 '12 at 18:39