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I am new to looping and R in general; and I have sent waaaay to much time on this one problem and am about a hair away from doing it manually for the next two days.

So, there is a package that while calculating the statistic creates lists (that look like matrices) in the background. Each item (there are 10 items) has one of these ‘matrix looking list’ that I need to extract data from. The list has 5 rows that represent 5 groups, and 8 columns. I need to extract 3 of the columns (‘Lo Score’=[,2], ‘Hi Score=[,3]’, and ‘Mean’=[,7]) for each of the items. I then want to turn the extracted data into 3 matrices (‘Lo Score’, ‘Hi Score’, and ‘Mean’) where the rows are the 5 groups and the columns are items 1-10.

This is how I can create the mean matrix by hand. “MDD.mean.s10” is the matrix I want in the end. (notice the first bracket after $results is the only part that changes 1-10 (to represent the 10 items) and the last bracket is [,7] to represent the mean located in column 7)

m.1a <- MC_MDD.noNA$results[[1]][[2]][,7]
m.2b <- MC_MDD.noNA$results[[2]][[2]][,7]
m.3c <- MC_MDD.noNA$results[[3]][[2]][,7]
m.4d <- MC_MDD.noNA$results[[4]][[2]][,7]
m.5e <- MC_MDD.noNA$results[[5]][[2]][,7]
m.6f <- MC_MDD.noNA$results[[6]][[2]][,7]
m.7g <- MC_MDD.noNA$results[[7]][[2]][,7]
m.8h <- MC_MDD.noNA$results[[8]][[2]][,7]
m.9i <- MC_MDD.noNA$results[[9]][[2]][,7]
m.10j <- MC_MDD.noNA$results[[10]][[2]][,7]
MDD.mean.s10 <- cbind(m.1a, m.2b, m.3c, m.4d, m.5e, m.6f, m.7g, m.8h, m.9i, m.10j)

MDD.mean.s10   

         m.1a      m.2b      m.3c      m.4d      m.5e      m.6f      m.7g      m.8h      m.9i     m.10j
[1,] 0.8707865 0.7393939 0.7769231 0.7591241 0.8533333 0.7925926 0.8258065 0.8410596 0.8843931 0.5638298
[2,] 0.8323353 0.7302632 0.5913978 0.5868263 0.6923077 0.6182796 0.6964286 0.6839080 0.7911392 0.3212121
[3,] 0.8726115 0.7159763 0.7117647 0.6163522 0.7987805 0.7105263 0.7613636 0.7674419 0.8034682 0.4011299
[4,] 0.9024390 0.7894737 0.7795276 0.6530612 0.8593750 0.7112676 0.8672566 0.8629032 0.9152542 0.4834437
[5,] 0.9861111 0.9102564 0.8452381 0.8160920 0.9726027 0.8658537 0.8352941 0.9342105 0.9466667 0.6454545

But I can’t do this by hand every time, as this comes up over and over and over again in multiple lists. I have figured out how to loop this procedure and name the vector as it goes along:

for(i in 1:10){
assign(paste("m", i, sep = ""), MC_MDD.noNA$results[[i]][[2]][,7])
}

m1
[1] 0.8707865 0.8323353 0.8726115 0.9024390 0.9861111
m2
0.7393939 0.7302632 0.7159763 0.7894737 0.9102564
m3
[1] 0.7769231 0.5913978 0.7117647 0.7795276 0.8452381
m4
[1] 0.7591241 0.5868263 0.6163522 0.6530612 0.8160920
m5
[1] 0.8533333 0.6923077 0.7987805 0.8593750 0.9726027
m6
[1] 0.7925926 0.6182796 0.7105263 0.7112676 0.8658537
m7
[1] 0.8258065 0.6964286 0.7613636 0.8672566 0.8352941
m8
[1] 0.8410596 0.6839080 0.7674419 0.8629032 0.9342105
m9
[1] 0.8843931 0.7911392 0.8034682 0.9152542 0.9466667
m10
[1] 0.5638298 0.3212121 0.4011299 0.4834437 0.6454545

Now here where I get stuck… how do I cbind these vectors without typing it out expliciity? ie. mean.MDD <- cbind(m1,m2,m3,m4,m5,m6,m7,m8,m9,10)

Everything I have tried keeps overwriting the data instead of building a matrix. Basically I, start with a matrix (5x10) of zeros. Then I wind up with a few values in the beginning, but the rest is still zeros. Examples of terrible code:

fo <- matrix(0,5,10)
colnames(fo) <- paste('f', 1:10, sep = "")
fo
      f1 f2 f3 f4 f5 f6 f7 f8 f9 f10
[1,]  0  0  0  0  0  0  0  0  0   0
[2,]  0  0  0  0  0  0  0  0  0   0
[3,]  0  0  0  0  0  0  0  0  0   0
[4,]  0  0  0  0  0  0  0  0  0   0
[5,]  0  0  0  0  0  0  0  0  0   0
for(i in 1:10){
fo <- assign(paste("f", i, sep = ""), MC_MDD.noNA$results[[i]][[2]][,7])
}
fo
[1] 0.5638298 0.3212121 0.4011299 0.4834437 0.6454545

fo <- matrix(0,5,10)
colnames(fo) <- paste('f', 1:10, sep = "")
fo
      f1 f2 f3 f4 f5 f6 f7 f8 f9 f10
[1,]  0  0  0  0  0  0  0  0  0   0
[2,]  0  0  0  0  0  0  0  0  0   0
[3,]  0  0  0  0  0  0  0  0  0   0
[4,]  0  0  0  0  0  0  0  0  0   0
[5,]  0  0  0  0  0  0  0  0  0   0
for(i in 1:10){
fo <- cbind(assign(paste("f", i, sep = ""), MC_MDD.noNA$results[[i]][[2]][,7]))
}
fo
[,1]
[1,] 0.5638298
[2,] 0.3212121
[3,] 0.4011299
[4,] 0.4834437
[5,] 0.6454545

Thanks for your help in advance!!! (c:

share|improve this question
1  
please dput your data –  Anthony Damico Dec 13 '12 at 14:11

1 Answer 1

up vote 0 down vote accepted

This should produce the correct result:

sapply(MC_MDD.noNA$results, function(x) x[[2]][ , 7])

Modify the column number to generate the matrices of high ([ , 3]) and low ([ , 2]) scores.

share|improve this answer
    
Thank you! that solved it! –  user1901111 Dec 13 '12 at 14:35

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