# R: Doing calculations on multiple factors/levels (Dummy variables)

I have two equally long matching vectors of time series data: Price (x) and hour (h). Hour goes from 0-23. My hour variable is my dummy variable (or factor/level variable I guess it is called in R).

Right now i've defined 24 different dummy variables, and for each hour I type my dummy variable. So for example generating 24 plots to look at or calculate 24 means etc I would type: plot.ts(hour1) # and so on for all 24.

I would like to do this for all 24 variables as easily as possible? So I can run a lot of different calculations. For example, how could I just compute the mean for all 24 dummy variables without making 24 lines of code, changing each dummy variable?

EDIT: Sorry, thought it was clear with the two vectors. Example:

`````` 1. Price Hour
2. 8     0
3. 12    1
4. 14    2
5. 16    3
6. 18    4
7. 20    5
8. 22    6
9. 24    7
10. 26   8
11. 28   9
12. 24   10
13. 26   11
14. 23   12
15. 23   13
16. 23   14
17. 14   15
18. 19   16
19. 25   17
20. 26   18
21. 28   19
22. 30   20
23. 33   21
24. 24   22
25. 10   23
26. 14   0
27. 12   1
28. 13   2
29. x    ect.
``````
-
Even if you're perfectly clear with words the reproducible example is expected. Often a solution is arrived at by using the tools we have and "tinkering" with the data you've got. Often the structure of data may appear clear until you closely examine it. –  Tyler Rinker May 27 '13 at 14:23

## 1 Answer

It is not clear how your data are stored since you don't give a reproducible example. I assume you have separate variables for each hour1.

Generally, It is better to put your `hourxx` variable in a list to perform calculations.

For example, this will compute mean for all hours:

``````    lapply(lapply(ls(pattern='hour.*'),get),mean)
``````

EDIT after OP clarification:

You shuld create a new variable to distinguish between Hours intervals. Something like :

``````dat <- data.frame(Price=rnorm(24*5),Hour=rep(0:23,5))
dat\$id <- cumsum(c(0,diff(dat\$Hour)==-23))
``````

Then using `ply` package for example , you can compute mean by id:

``````library(plyr)
ddply(dat,.(id),summarise,mPrice=mean(Price))

id     mPrice
1  0  0.2999602
2  1 -0.2201148
3  2  0.2400192
4  3 -0.2087594
5  4  0.1666915
``````
-