Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a data frame with 3 groups and 3 days:

set.seed(10)
dat <- data.frame(group=rep(c("g1","g2","g3"),each=3), day=rep(c(0,2,4),3), value=runif(9))
#   group day    value
# 1    g1   0 0.507478
# 2    g1   2 0.306769
# 3    g1   4 0.426908
# 4    g2   0 0.693102
# 5    g2   2 0.085136
# 6    g2   4 0.225437
# 7    g3   0 0.274531
# 8    g3   2 0.272305
# 9    g3   4 0.615829

I want to take the log2 and divide each value with the day 0 value within each group. The way I'm doing it now is by calculating each day group in an intermediate step:

day_0 <- dat[dat$day==0, "value"]
day_2 <- dat[dat$day==2, "value"]
day_4 <- dat[dat$day==4, "value"]
res <- cbind(0, log2(day_2/day_0), log2(day_4/day_0))
rownames(res) <- c("g1","g2","g3")
colnames(res) <- c("day_0","log_ratio_day_2_day_0","log_ratio_day_4_day_0")
#    day_0 log_ratio_day_2_day_0 log_ratio_day_4_day_0
# g1     0            -0.7261955             -0.249422
# g2     0            -3.0252272             -1.620346
# g3     0            -0.0117427              1.165564

What's the proper way of calculating res without an intermediate step?

share|improve this question
add comment

4 Answers 4

up vote 4 down vote accepted

Your friend is ddply from the plyr package:

require(plyr)
> ddply(dat, .(group), mutate, new_value = log2(value / value[1]))
  group day      value   new_value
1    g1   0 0.50747820  0.00000000
2    g1   2 0.30676851 -0.72619548
3    g1   4 0.42690767 -0.24942179
4    g2   0 0.69310208  0.00000000
5    g2   2 0.08513597 -3.02522716
6    g2   4 0.22543662 -1.62034599
7    g3   0 0.27453052  0.00000000
8    g3   2 0.27230507 -0.01174274
9    g3   4 0.61582931  1.16556397
share|improve this answer
    
You just set me off on a mutate-arrange-summarise-unrowname-str_replace-count chain of learning and discovery :) Thanks –  nachocab Nov 4 '12 at 18:04
    
plyris pretty awesome :) –  Paul Hiemstra Nov 4 '12 at 18:39
add comment

A data.table solution for coding elegance and memory efficiency

library(data.table)

DT <- data.table(dat)

# assign within DT by reference

DT[, new_value := log2(value / value[day == 0]), by = group]

Or you could use joins and keys and by-without-by

DTb <- data.table(dat)

setkey(DTb, group)

# val0 contains just those records for day 0
val0 <- DTb[day==0]

 # the i.value refers to value from the i argument 
 # which is in this case `val0` and thus the value for 
 # day = 0 
 DTb[val0, value := log2(value / i.value)]

Both these solution do not require you to sort by day to ensure that value will the first (or any particular) element.


EDIT

Docuementation for i. syntax

    **********************************************
    **                                          **
    **   CHANGES IN DATA.TABLE VERSION 1.7.10   **
    **                                          **
    **********************************************
     NEW FEATURES

o   New function setcolorder() reorders the columns by name
    or by number, by reference with no copy. This is (almost)
    infinitely faster than DT[,neworder,with=FALSE].

o   The prefix i. can now be used in j to refer to join inherited
    columns of i that are otherwise masked by columns in x with
    the same name.
share|improve this answer
    
I am not familiar with i.value. Can you explain, or point me to the relevant docs? –  GSee Nov 4 '12 at 23:14
    
@GSee, i've explained it. Now looking for the relevant docs. –  mnel Nov 5 '12 at 0:01
2  
@GSee, and added the link to the NEWS announcement of the i.value syntax. –  mnel Nov 5 '12 at 0:16
    
Thank you @mnel –  GSee Nov 5 '12 at 0:18
add comment

Base solution:

> res <- do.call(rbind,by(dat,dat$group,function(x) log2(x$value/x$value[x$day==0])))
> res

   [,1]       [,2]       [,3]
g1    0 -1.6496538 -2.3673937
g2    0  0.3549090  0.4537402
g3    0 -0.9423506  1.4603706

> colnames(res) <- c("day_0","log_ratio_day_2_day_0","log_ratio_day_4_day_0")
> res

   day_0 log_ratio_day_2_day_0 log_ratio_day_4_day_0
g1     0            -1.6496538            -2.3673937
g2     0             0.3549090             0.4537402
g3     0            -0.9423506             1.4603706
share|improve this answer
add comment

This uses ave in the core of R:

transform(dat, value0 = ave(value, group, FUN = function(x) log2(x / x[1])))
share|improve this answer
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.