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In R, I am attempting to condense a factorized column into smaller subsets so I can later reference these subsets in one shot. There are many instances where the naming of these factors needs to be collapsed into one. I have been able to create my subsets with the following approach..

fact1 <- as.vector(grep(x=levels(ds$mycol), value=TRUE, pattern="mystring1"))

However, I need to be able to exclude results that also have mystring2 as part of the factor level. EDIT - ie, there are results that have mystring1-mystring2, etc

Here is an example vector

ds$mycol <- as.factor(ds$mycol)
levels(mycol)
 [1] "Level1"  "Level2"  "Level3" "Level1:Level2"                     
 [5] "Level1:Level3" 

I want to reshape the data so that only 3 levels are needed to cover the existing 5. I was hoping to do this by junking the hybrid :Level2 and :Level3 factors for a unified Level1. The problem is that using the above function indexes the hybrid factors into Level1, Level2, and Level3 vectors.

How can I add this additional != criteria to the existing pattern="mystring1" argument?

I know that there is info out there for this type question (using escapes, |, etc), but I am having trouble applying it correctly. Also, I am using RStudio on Windows 7, and most of the answers to my specific question seem to be tailored to Unix.

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pattern="mystring1|mystring2" (or) pattern="mystring" if there's no other mystring other than mystring1 and mystring2. –  Arun Mar 18 '13 at 21:48
    
You talk about mystring2 not being part of the factor name. I suspect you meant not in the factor levels? It's also kind of weird to be working on the factor levels since they will all be the same within a particular column. You really, really, really need to post a complete example. –  BondedDust Mar 18 '13 at 21:49
    
@Arun Option 1 makes sense, but I think I need the equivalent of ==mystring1 & !=mystring2. I'm not sure if the (or) operator will cover this. –  wesmantooth Mar 18 '13 at 21:58
    
@DWin - essentially, its bad data and I am rejecting the mystring2 classification and classifying it as mystring1. But yes, I believe level is more accurate. –  wesmantooth Mar 18 '13 at 21:59
3  
Still need example since under the current specification any column will either be all TRUE or all FALSE with the test based on levels(factor). –  BondedDust Mar 18 '13 at 22:00
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closed as not a real question by mnel, GSee, Arun, Roman Luštrik, juba Mar 19 '13 at 7:55

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3 Answers

up vote 0 down vote accepted

R has a grepl function which is better suited to this situation. (much easier than wringing together a positive/negative regex)

grepl will give you a logical vector, the output of which you can combine using &, ! and any other logic. eg:

  # find rows containing mystring1 and not containing mystring2 
  ds[grepl(mystring1, ds$mycol) & !grepl(mystring2, ds$mycol),  mycol]

grep in contrast will give you the actual indices to your searches.


also, from what you describe, it sounds like you do not want to search the levels, but rather the actual values. But I am perhaps wrong on that point

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Ok so I am liking this elegant approach, but I should clarify the reason I am going for the indices method. When indexing ds[] I will need to be able to index a variable length vector. Originally, I did this using the following - mylevels < c("Level1", "Level2", "Level3", "Level1:Level2", "Level1:Level3"). Then I referenced the rows with myvar <- mycol2[c(ds$mycol==mylevels[1], ds$mycol==mylevels[3])]. I was looking for a way to input those indices in one shot which would allow me to adjust the factors at the beginning of my script, and allow the myvar assignment to be more flexible –  wesmantooth Mar 18 '13 at 22:42
    
Logical vectors are indecies too, you should have a look at ?'[' Also, if you need to convert a logical vector to a numerical index, you can wrap it in which() -- just be careful of NA's ;) –  Ricardo Saporta Mar 18 '13 at 22:47
    
Thanks so much Ricardo. Using your method and adding which() did the trick. A quick aside (forgive me as I am still very new to R). Assuming that I have the variable fact1 <- grepl(x=levels(ds$mycol), pattern="mystring1") & !grepl(x=levels(ds$mycol), pattern="mystring2") Is the correct way to reference this subset - myvar <- mycol2[fact1] –  wesmantooth Mar 18 '13 at 23:13
    
Syntactically Yes, but that won't give you what you are after. Print out fact1 and look at its length relative to mycol2. You are getting an index to the levels not the column itself. There is no need for the use of levels here, you will get all (non) matching results for the whole vector/column –  Ricardo Saporta Mar 19 '13 at 2:45
    
Also, please take the comments by @mnel, @ arun, @ dwin and others to heart. Examples are really key for questions like these –  Ricardo Saporta Mar 19 '13 at 2:47
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If I understand correctly you could use grepl to select those with mystring1 and NOT those with mystring2 like this (in the second grepl the bit between the ?! and ). will be the invalidated match)...

ds <- data.frame( mycol = as.factor( c( paste0( "not" , 1:5) , paste0( "keep" , 1:5 ) , paste0( "not-keep" , 1:5 ) ) ) )

fact1 <- grepl(ds$mycol, pattern="keep") & grepl( ds$mycol , pattern = "^((?!not).)*$" , perl = TRUE )

#          mycol
#   1       not1
#   2       not2
#   3       not3
#   4       not4
#   5       not5
#   6      keep1
#   7      keep2
#   8      keep3
#   9      keep4
#   10     keep5
#   11 not-keep1
#   12 not-keep2
#   13 not-keep3
#   14 not-keep4
#   15 not-keep5

fact1
#[1] FALSE FALSE FALSE FALSE FALSE  TRUE  TRUE  TRUE  TRUE  TRUE FALSE FALSE FALSE FALSE FALSE

Using the example given by the OP

ds <- data.frame( mycol = c("Level1" , "Level2" , "Level3" , "Level1:Level2" , "Level1:Level3" ) )
fact1 <- grepl(ds$mycol, pattern="Level") & grepl( ds$mycol , pattern = "^((?!:).)*$" , perl = TRUE )
ds[ !fact1 , ] <- levels( ds$mycol)[1]

#Or more simple and elegant NOT grepl as in Ricardo's answer
fact1 <- grepl(ds$mycol, pattern="Level") & !grepl( ds$mycol , pattern = ":" )
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Thank you for the response SimonO. Although I find it a little harder to understand, I can see where your example might be useful in complex character searches. –  wesmantooth Mar 18 '13 at 23:15
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How about just splitting on : and retaining the first component

sapply(strsplit(x, ':'), head, n=1)

Or using regex and `gsub1

gsub(':([[:print:]])+', "", x)

these assume that you want to retain the first definition of level, prior to the :

For a more general punctuation character

sapply(strsplit(x, '[[:punct:]]'), head, n=1)

or

gsub('[[:punct:]]([[:print:]])+', "", x)
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+1 for creative thinking, however, is it always the case that the OP's mystring1 appears before mystring2? –  Ricardo Saporta Mar 18 '13 at 22:23
    
@RicardoSaporta - I would presume so, it look like he is trying to do some kind of deparsing of an interaction of factor terms\ –  mnel Mar 18 '13 at 22:24
    
Thanks for the reply mnel, but Ricardo was correct the : was an arbitrary assignment. In reality my dataset is not that clean and the classification(mistakes) will vary quite a bit. I want to generalize the script to be able to account for these variances. –  wesmantooth Mar 18 '13 at 22:29
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@wesmantooth - I have no idea what you mean regarding : being an arbitrary assignment. You need to post a more complete example. –  mnel Mar 18 '13 at 22:34
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@wesmantooth POST A REASONABLE EXAMPLE THEN!!!!!!!!!!! –  mnel Mar 18 '13 at 23:03
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