# How to aggregate data in timeSequence?

I have a problem and would really need your help? My data (let's name it "date") looks like this:

``````location       date  value
1 2010-01-01    6.4
1 2010-01-02    5.7
.
.
2 2010-01-01    0.8
2 2010-01-02    2.5
2 2010-01-03    5.5
``````

I would like to aggregate data (value) on location and on 3 weeks period? I have already try to use package timeSeries but it is not working?

``````by1 <- timeSequence(from = "2009-12-30", to = "2010-12-29", by= "4 week")
by1
aggregate(date, by=list(by1, date\$location), sum)
``````
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Hello MtS. If Andrie's response solved your problem, you can/should 'accept' it, by clicking the checkmark next to it. Thanks. – Josh O'Brien Nov 1 '11 at 16:19

Here is an approach using `seq.Date` to generate the break points, `cut` to bin your data, and `ddply` to summarize:

``````# Create sample data
set.seed(1)
dat <- data.frame(
location = rep(1:3, each=30),
date = rep(seq(as.Date("2010-01-01"), by="3 day", length.out=30), 3),
value=rnorm(90)
)

# Create a sequence of dates in period of 3 weeks ot serve as cut points
dateCuts <- seq(from=min(dat\$date), to=max(dat\$date)+31, by="3 week")

# Use cut to separate dates into periods
dat\$period <- cut(dat\$date, breaks=dateCuts)

# Summarise data
library(plyr)
ddply(dat, .(location, period), summarize, value=mean(value))
``````

The results:

``````   location     period       value
1         1 2010-01-01  0.04475859
2         1 2010-01-22  0.01062880
3         1 2010-02-12  0.62024902
4         1 2010-03-05 -0.31364304
5         1 2010-03-26 -0.03010425
6         2 2010-01-01 -0.08522653
7         2 2010-01-22  0.37708986
8         2 2010-02-12  0.12910449
9         2 2010-03-05  0.08597110
10        2 2010-03-26  0.21733251
11        3 2010-01-01  0.10295425
12        3 2010-01-22  0.46194453
13        3 2010-02-12 -0.35546029
14        3 2010-03-05  0.17216486
15        3 2010-03-26  0.31855880
``````
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Thank you for the solution! – Eco06 Nov 1 '11 at 9:19

Using `lubridate`, you can write this with a one-liner.

``````ddply(dat, .(location, ceiling(week(date)/3)), summarize, value = mean(value))
``````
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Very neat usage of `ceiling` and `week`, but are you sure this does the same thing? `week` seems to return the week in the month - it doesn't bin into periods of n weeks. Perhaps this is what the OP wanted (i.e. compare week 1 of Jan with week 1 of Feb), but my reading was compare weeks 1-3 with weeks 4-6 with weeks 7-9, etc. – Andrie Nov 1 '11 at 14:11
@Andrie you are right. your solution takes care of the binning without this restriction. – Ramnath Nov 1 '11 at 16:28