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I've searched through previous answered questions and haven't been able to construct a functioning solution yet. Here's my situation with demo data:

Say I have subjects complete a computer task where they give a response on each trial. I end up with data from each trial regarding whether they gave the accurate response and what their reaction time was:

sub1 <- data.frame(acc = round(rnorm(10, mean=.65, sd=.25), 0), RT = round(rnorm(10, mean=270, sd=30), 0))
sub2 <- data.frame(acc = round(rnorm(10, mean=.65, sd=.25), 0), RT = round(rnorm(10, mean=270, sd=30), 0))
sub3 <- data.frame(acc = round(rnorm(10, mean=.65, sd=.25), 0), RT = round(rnorm(10, mean=270, sd=30), 0))

sub.list <- list(sub1, sub2, sub3)

I've created a list where each element is a subject's data.

> sub.list
[[1]]
   acc  RT
1    1 259
2    0 187
3    1 256
4    1 288
5    1 304
6    1 265
7    1 312
8    1 196
9    1 335
10   0 276

[[2]]
   acc  RT
1    1 215
2    0 325
3    1 290
4    0 297
5    0 281
6    1 294
7    0 289
8    1 252
9    0 364
10   0 241

[[3]]
   acc  RT
1    0 292
2    0 267
3    0 240
4    1 321
5    1 292
6    0 269
7    1 241
8    1 206
9    1 250
10   1 283

Now comes my issue. I want to create another column for each subject that only has the RTs for accurate trials that were also preceded by an accurate response. Here's a non-working for-loop and an example of what I'm trying to end up with.

for(i in 1:length(sub.list)){
  for(j in 2:nrow(sub.list[[i]])){
    if(sub.list[[i]][(j-1), "acc"]==1 & sub.list[[i]][j, "acc"]==1){
      sub.list[[i]][j,]$correct.RT <- sub.list[[i]][j, "RT"]
    } else {
      sub.list[[i]][j,]$correct.RT <- NA
    }
  }
}

> sub.list
[[1]]
   acc  RT correctRT
1    1 259        NA
2    0 187        NA
3    1 256        NA
4    1 288       288
5    1 304       304
6    1 265       265
7    1 312       312
8    1 196       196
9    1 335       335
10   0 276        NA

[[2]]
   acc  RT correctRT
1    1 215        NA
2    0 325        NA
3    1 290        NA
4    0 297        NA
5    0 281        NA
6    1 294        NA
7    0 289        NA
8    1 252        NA
9    0 364        NA
10   0 241        NA

[[3]]
   acc  RT correctRT
1    0 292        NA
2    0 267        NA
3    0 240        NA
4    1 321        NA
5    1 292       292
6    0 269        NA
7    1 241        NA
8    1 206       206
9    1 250       250
10   1 283       283

My reason for doing this is so that I can perform functions on these trials alone. For example:

> sapply(sub.list, function(x) mean(x$correctRT, na.rm=TRUE))
[1] 283.3333      NaN 257.7500

I know there must be a way to accomplish this with mapply or one of the other apply functions rather than a clumsy, slow for loop, but my hang up is how to reference sequential rows.

Any help is much appreciated!

share|improve this question
    
so, the correctRT column should be NA only where acc is 0? –  6pool Jun 2 '13 at 18:52
    
Not quite, correctRT should be NA when sub.list[N, "acc"] == 0 OR sub.list[(N-1), "acc"] == 0. Hope that's more clear. I want RTs from trials with acc = 1 that do not come after an error has been made (acc = 0 on the immediately above row). –  YTD Jun 2 '13 at 18:58
    
To make your data reproducible, please start with something like set.seed(123) if you are going to use random samples. –  flodel Jun 2 '13 at 19:31
    
Oops sorry. Not too familiar with generating random samples in R but that's very useful to know. I will do this in the future. –  YTD Jun 2 '13 at 20:06

3 Answers 3

up vote 4 down vote accepted
sub.list <- lapply(sub.list, transform,
                   correctRT = ifelse(acc & c(0, head(acc, -1)), RT, NA))

But given your final goal, I would rather create a flag (TRUE/FALSE) variable:

sub.list <- lapply(sub.list, transform,
                   is.valid = acc & c(0, head(acc, -1)))

Then to compute the means for example:

sapply(sub.list, with, mean(RT[is.valid]))
share|improve this answer
    
+1 for mentioning that another is.valid column would be useful. –  Thilo Jun 2 '13 at 19:57
    
Thanks everyone for your help and great suggestions! I learned from each of your posts. I ended up going with something along these lines. –  YTD Jun 2 '13 at 20:20
1  
The Hmisc package has a Lag convenience function which can replace the c(0, ...) construction. –  krlmlr Jun 2 '13 at 20:40
    
@krlmlr, Hmisc::Lag prepends with NA which would be counter-productive here. –  flodel Jun 4 '13 at 0:31
lapply(sub.list,
       function(x) {
         a <- x$acc
         # Choose elements which are true, and previous is also true:
         b <- a & c(0, a[-length(a)])
         x$correctRT <- ifelse(b, x$RT, NA)
         x
       })
share|improve this answer

You can use the mutate function in the plyr package to achieve this task

Let's first recreate the data and set the seeed to make this example reproductible.

set.seed(123)
sub1 <- data.frame(acc = round(rnorm(10, mean=.65, sd=.25), 0), 
                   RT = round(rnorm(10, mean=270, sd=30), 0))
sub2 <- data.frame(acc = round(rnorm(10, mean=.65, sd=.25), 0), 
                   RT = round(rnorm(10, mean=270, sd=30), 0))
sub3 <- data.frame(acc = round(rnorm(10, mean=.65, sd=.25), 0), 
                   RT = round(rnorm(10, mean=270, sd=30), 0))

sub_list <- list(sub1, sub2, sub3)

Now we can apply the mutate function to each dataframe in your list

require(plyr)
lapply(sub_list, mutate, acclag = c(NA, head(acc, -1)), 
                    correctRT = ifelse((acc == 0 | acclag == 0), NA, RT))

## [[1]]
##    acc  RT acclag correctRT
## 1    1 307     NA        NA
## 2    1 281      1       281
## 3    1 282      1       282
## 4    1 273      1       273
## 5    1 253      1       253
## 6    1 324      1       324
## 7    1 285      1       285
## 8    0 211      1        NA
## 9    0 291      0        NA
## 10   1 256      0        NA

## [[2]]
##    acc  RT acclag correctRT
## 1    0 283     NA        NA
## 2    1 261      0        NA
## 3    0 297      1        NA
## 4    0 296      0        NA
## 5    0 295      0        NA
## 6    0 291      0        NA
## 7    1 287      0        NA
## 8    1 268      1       268
## 9    0 261      1        NA
## 10   1 259      0        NA

## [[3]]
##    acc  RT acclag correctRT
## 1    0 278     NA        NA
## 2    1 269      0        NA
## 3    0 269      1        NA
## 4    1 311      0        NA
## 5    1 263      1       263
## 6    0 315      1        NA
## 7    1 224      0        NA
## 8    1 288      1       288
## 9    1 274      1       274
## 10   1 276      1       276
share|improve this answer
    
Thanks, You are right...will correct it –  dickoa Jun 2 '13 at 19:26
    
+1 for the use of mutate. –  Thilo Jun 2 '13 at 19:57

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