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I don't often have to work with dates in R, but I imagine this is fairly easy. I have daily data as below for several years with some values and I want to get for each 8 days period the sum of related values.What is the best approach?

Any help you can provide will be greatly appreciated!

 str(temp)
'data.frame':648 obs. of  2 variables:
 $ Date : Factor w/ 648 levels "2001-03-24","2001-03-25",..: 1 2 3 4 5 6 7 8 9 10 ...
 $ conv2: num  -3.93 -6.44 -5.48 -6.09 -7.46 ...

head(temp)
Date              amount
24/03/2001  -3.927020472
25/03/2001  -6.4427004
26/03/2001  -5.477592528
27/03/2001  -6.09462162
28/03/2001  -7.45666902
29/03/2001  -6.731540928
30/03/2001  -6.855206184
31/03/2001  -6.807210228
1/04/2001   -5.40278802

I tried to use aggregate function but for some reasons it doesn't work and it aggregates in wrong way:

z <- aggregate(amount ~ Date, timeSequence(from =as.Date("2001-03-24"),to =as.Date("2001-03-29"), by="day"),data=temp,FUN=sum)
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3  
Please userXXXXX. First you give us str on a dataframe with columns named 'Date' and 'conv2' and then you display a different object. What gives? –  BondedDust Jan 7 '13 at 7:00

4 Answers 4

up vote 3 down vote accepted

I prefer the package xts for such manipulations.

  1. I read your data, as zoo objects. see the flexibility of format option.

    library(xts)
    ts.dat <- read.zoo(text ='Date              amount
    24/03/2001  -3.927020472
    25/03/2001  -6.4427004
    26/03/2001  -5.477592528
    27/03/2001  -6.09462162
    28/03/2001  -7.45666902
    29/03/2001  -6.731540928
    30/03/2001  -6.855206184
    31/03/2001  -6.807210228
    1/04/2001   -5.40278802',header=TRUE,format = '%d/%m/%Y')
    
  2. Then I extract the index of given period

    ep <- endpoints(ts.dat,'days',k=8)
    
  3. finally I apply my function to the time series at each index.

    period.apply(x=ts.dat,ep,FUN=sum )
    2001-03-29 2001-04-01 
    -36.13014  -19.06520 
    
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Use cut() in your aggregate() command.

Some sample data:

set.seed(1)
mydf <- data.frame(
    DATE = seq(as.Date("2000/1/1"), by="day", length.out = 365),
    VALS = runif(365, -5, 5))

Now, the aggregation. See ?cut.Date for details. You can specify the number of days you want in each group using cut:

output <- aggregate(VALS ~ cut(DATE, "8 days"), mydf, sum)
list(head(output), tail(output))
# [[1]]
#   cut(DATE, "8 days")      VALS
# 1          2000-01-01  8.242384
# 2          2000-01-09 -5.879011
# 3          2000-01-17  7.910816
# 4          2000-01-25 -6.592012
# 5          2000-02-02  2.127678
# 6          2000-02-10  6.236126
# 
# [[2]]
#    cut(DATE, "8 days")       VALS
# 41          2000-11-16 17.8199285
# 42          2000-11-24 -0.3772209
# 43          2000-12-02  2.4406024
# 44          2000-12-10 -7.6894484
# 45          2000-12-18  7.5528077
# 46          2000-12-26 -3.5631950
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Those are NOT Date classed variables. (No self-respecting program would display a date like that, not to mention the fact that these are labeled as factors.) [I later noticed these were not the same objects.] Furthermore, the timeSequence function (at least the one in the timeDate package) does not return a Date class vector either. So your expectation that there would be a "right way" for two disparate non-Date objects to be aligned in a sensible manner is ill-conceived. The irony is that just using the temp$Date column would have worked since :

> z <- aggregate(amount ~ Date, data=temp , FUN=sum)
> z
        Date    amount
1  1/04/2001 -5.402788
2 24/03/2001 -3.927020
3 25/03/2001 -6.442700
4 26/03/2001 -5.477593
5 27/03/2001 -6.094622
6 28/03/2001 -7.456669
7 29/03/2001 -6.731541
8 30/03/2001 -6.855206
9 31/03/2001 -6.807210

But to get it in 8 day intervals use cut.Date:

> z <- aggregate(temp$amount , 
                 list(Dts = cut(as.Date(temp$Date, format="%d/%m/%Y"), 
                 breaks="8 day")), FUN=sum)
> z
         Dts          x
1 2001-03-24 -49.792561
2 2001-04-01  -5.402788
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rollapply. The zoo package has a rolling apply function which can also do non-rolling aggregations. First convert the temp data frame into zoo using read.zoo like this:

library(zoo)
zz <- read.zoo(temp)

and then its just:

rollapply(zz, 8, sum, by = 8)

Drop the by = 8 if you want a rolling total instead.

(Note that the two versions of temp in your question are not the same. They have different column headings and the Date columns are in different formats. I have assumed the str(temp) output version here. For the head(temp) version one would have to add a format = "%d/%m/%Y" argument to read.zoo.)

aggregate. Here is a solution that does not use any external packages. It uses aggregate based on the original data frame.

ix <- 8 * ((1:nrow(temp) - 1) %/% 8 + 1)
aggregate(temp[2], list(period = temp[ix, 1]), sum)

Note that ix looks like this:

> ix
[1]  8  8  8  8  8  8  8  8 16

so it groups the indices of the first 8 rows, the second 8 and so on.

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