# obtain next N entries in xts time series with irregular spacing

I want to write a function to be applied with: lapply(new_data,ALGO)

It should take 15 entries before and after that particular entry and then make some calculation, giving back a number. Up to now, what I do is:

``````ALGO <- function(y1) {
nd.in.y1 <- .indexday(new_data) %in% .indexday(y1)
low <- last(new_data[nd.in.y1 & index(new_data) < index(y1)],15)
high <- first(new_data[nd.in.y1 & index(new_data) > index(y1)],15)
ccc <- rbind(low,high)
# ...
# Make some calculations
# ...
return(number)
}
``````

Is there a more efficient way to access to this entries? Something like accessing to the raw numeric index of the time series within the function?

I suppose that subsetting the big data is costly, on the contrary giving only the previous 15 should be very fast.

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I think `rollapply` does exactly that. – Vincent Zoonekynd May 15 '12 at 8:10
I have checked, but it's not clear to me if I can implement the check of the same day (.indexday(new_data) %in% .indexday(y1)) AND the range is expressed in time, not the previous 15 entries of the series. This is crucial in my case, since I have an irregular time serie and I don't know a priori what is the range. – Mitch76 May 15 '12 at 8:17
`rollapply` will use the past (or/and next) 15 entries: if the time series is irregular, that will not be the past 15 days (for instance, if you have a value for each week day, that will correspond to the past 3 weeks). You can choose to use the past and/or next values by setting the `align` argument. – Vincent Zoonekynd May 15 '12 at 8:29
I agree with you, I can pick the past and next 15 entries but I have problem imposing the data to be in the same day. Do you have any hint? Split function (in days) returns list of list, instead of list of xts. – Mitch76 May 15 '12 at 10:12