aggregate date and calculate mean

I have this a dataframe with a long list of dates in one column and values in another column, that looks like this:

``````set.seed(1234)
df <- data.frame(date= as.Date(c('2010-09-05', '2011-09-06', '2010-09-13',
'2011-09-14', '2010-09-23', '2011-09-24',
'2010-10-05', '2011-10-06', '2010-10-13',
'2011-10-14', '2010-10-23', '2011-10-24')),
value= rnorm(12))
``````

I need to calculate the mean value in each 10 day period of each month, but irrespective of year, like this:

``````dfNeeded <- data.frame(datePeriod=c('period.Sept0.10', 'period.Sept11.20', 'period.Sept21.30',
'period.Oct0.10', 'period.Oct11.20', 'period.Oct21.31'),
meanValue=c(mean(df\$value[c(1,2)]),
mean(df\$value[c(3,4)]),
mean(df\$value[c(5,6)]),
mean(df\$value[c(7,8)]),
mean(df\$value[c(9,10)]),
mean(df\$value[c(11,12)])))
``````

Is there a fast way of doing this?

-

Here is a way to do it, which uses the `lubridate` package for month and day extraction, but you can do it with base R date functions :

``````library(lubridate)
df\$period <- paste(month(df\$date),cut(day(df\$date),breaks=c(0,10,20,31)),sep="-")
aggregate(df\$value, list(period=df\$period), mean)
``````

Which gives :

``````      period          x
1  10-(0,10] -0.5606859
2 10-(10,20] -0.7272449
3 10-(20,31] -0.7377896
4   9-(0,10] -0.4648183
5  9-(10,20] -0.6306283
6  9-(20,31]  0.4675903
``````
-
(+1) maybe a call to `month(.)` as: `month(df\$date, label = TRUE)` will get closer to OP's "exact" answer. `cut` is such a handy function! –  Arun Mar 10 '13 at 0:27
Brilliant, many thanks. I'm trying to limit learning of aggregation functions to `plyr` functions, so this is code I went for: `df\$period <- paste(month(df\$date,label=T),cut(day(df\$date),breaks=c(0,10,20,31)),sep="-") library(plyr) ddply(df, .(period), summarise, meanValue=mean(value))` –  luciano Mar 10 '13 at 10:03

This approach with format.Date and modulo arithmetic should be reasonably fast:

``````tapply(df\$value, list( format(df\$date, "%b"), as.POSIXlt(df\$date)\$mday %/% 10), mean)
0         1        2
Oct -0.560686 -0.727245 -0.73779
Sep -0.464818 -0.630628  0.46759
``````

I'm not sure how it would compare to the aggregate approach:

``````aggregate(df\$value, list( format(df\$date, "%b"), as.POSIXlt(df\$date)\$mday %/% 10), mean)
Group.1 Group.2         x
1     Oct       0 -0.560686
2     Sep       0 -0.464818
3     Oct       1 -0.727245
4     Sep       1 -0.630628
5     Oct       2 -0.737790
6     Sep       2  0.467590
``````
-