# Calculating time spent on categories

I have a category string as follows:

``````categoryVector <- c("1_100_1_2_3")
``````

I also have the time corresponding to each category:

``````timeVector <- c("2013-03-07 05:16:50,617_2013-03-07 05:19:24,984_2013-03-07 05:21:06,002_2013-03-07 05:21:06,833_2013-03-07 05:21:10,713")
``````

I would like to calculate the time spent on categories 1 and 2

``````Time spent in category 1: (Time in 100 - Time in 1) + (Time on 2 - Time on 1)
Time spent in category 2: Time on 3 - Time on 2
``````

I need to repeat these calculations for 200K+records. Is there an efficient way to do this in R?

-
See `?strsplit`, `?as.POSIXct` for some more information. –  Paul Hiemstra Apr 18 '13 at 13:23

`````` inp <- read.table(text=gsub("_", "\n", timeVector), sep=",")
inp\$V1 <- as.POSIXct(inp\$V1)

inp\$diffs <- c( difftime(inp\$V1[-1], inp\$V1[-nrow(inp)]), NA)
inp <- cbind(inp,inp2)
V1  V2 diffs  V1
1 2013-03-07 05:16:50 617   154   1
2 2013-03-07 05:19:24 984   102 100
3 2013-03-07 05:21:06   2     0   1
4 2013-03-07 05:21:06 833     4   2
5 2013-03-07 05:21:10 713    NA   3
# should probably rename those columns
tapply(inp\$diffs, inp[,4], sum, na.rm=TRUE)
#  1   2   3 100
#154   4   0 102
``````
-