# Convert factor to integer in a data frame

I have the following code

anna.table<-data.frame (anna1,anna2)
write.table<-(anna.table, file="anna.file.txt",sep='\t', quote=FALSE)


my table in the end contains numbers such as the following

chr         start    end      score
chr2      41237927  41238801    151
chr1      36976262  36977889    226
chr8      83023623  83025129    185


and so on......

after that i am trying to to get only the values which fit some criteria such as score less than a specific value

so i am doing the following

anna3<-"data/anna/anna.file.txt"
significant.anna<-subset(anna.total,score <=0.001)

Error: In Ops.factor(score, 0.001) <= not meaningful for factors


so i guess the problem is that my table has factors and not integers

I guess that my anna.total$score is a factor and i must make it an integer If i read correctly the as.numeric might solve my problem i am reading about the as.numeric function but i cannot understand how i can use it Hence could you please give me some advices? thank you in advance best regards Anna PS : i tried the following anna3<-"data/anna/anna.file.txt" anna.total<-read.table(anna3,header=TRUE) anna.total$score.new<-as.numeric (as.character(anna.total$score)) write.table(anna.total,file="peak.list.numeric.v3.txt",append = FALSE ,quote = FALSE,col.names =TRUE,row.names=FALSE, sep="\t") anna.peaks<-subset(anna.total,fdr.new <=0.001) Warning messages: 1: In Ops.factor(score, 0.001) : <= not meaningful for factors  again i have the same problem...... - Can we see str(anna.table)? You can also work on your acceptance rate. – Roman Luštrik Feb 28 '12 at 12:14 add comment ## 2 Answers With anna.table (it is a data frame by the way, a table is something else!), the easiest way will be to just do: anna.table2 <- data.matrix(anna.table)  as data.matrix() will convert factors to their underlying numeric (integer) levels. This will work for a data frame that contains only numeric, integer, factor or other variables that can be coerced to numeric, but any character strings (character) will cause the matrix to become a character matrix. If you want anna.table2 to be a data frame, not as matrix, then you can subsequently do: anna.table2 <- data.frame(anna.table2)  Other options are to coerce all factor variables to their integer levels. Here is an example of that: ## dummy data set.seed(1) dat <- data.frame(a = factor(sample(letters[1:3], 10, replace = TRUE)), b = runif(10)) ## sapply over dat, converting factor to numeric dat2 <- sapply(dat, function(x) if(is.factor(x)) { as.numeric(x) } else { x }) dat2 <- data.frame(dat2) ## convert to a data frame  Which gives: > str(dat) 'data.frame': 10 obs. of 2 variables:$ a: Factor w/ 3 levels "a","b","c": 1 2 2 3 1 3 3 2 2 1
$b: num 0.206 0.177 0.687 0.384 0.77 ... > str(dat2) 'data.frame': 10 obs. of 2 variables:$ a: num  1 2 2 3 1 3 3 2 2 1
$b: num 0.206 0.177 0.687 0.384 0.77 ...  However, do note that the above will work only if you want the underlying numeric representation. If your factor has essentially numeric levels, then we need to be a bit cleverer in how we convert the factor to a numeric whilst preserving the "numeric" information coded in the levels. Here is an example: ## dummy data set.seed(1) dat3 <- data.frame(a = factor(sample(1:3, 10, replace = TRUE), levels = 3:1), b = runif(10)) ## sapply over dat3, converting factor to numeric dat4 <- sapply(dat3, function(x) if(is.factor(x)) { as.numeric(as.character(x)) } else { x }) dat4 <- data.frame(dat4) ## convert to a data frame  Note how we need to do as.character(x) first before we do as.numeric(). The extra call encodes the level information before we convert that to numeric. To see why this matters, note what dat3$a is

> dat3$a [1] 1 2 2 3 1 3 3 2 2 1 Levels: 3 2 1  If we just convert that to numeric, we get the wrong data as R converts the underlying level codes > as.numeric(dat3$a)
[1] 3 2 2 1 3 1 1 2 2 3


If we coerce the factor to a character vector first, then to a numeric one, we preserve the original information not R's internal representation

> as.numeric(as.character(dat3$a)) [1] 1 2 2 3 1 3 3 2 2 1  If your data are like this second example, then you can't use the simple data.matrix() trick as that is the same as applying as.numeric() directly to the factor and as this second example shows, that doesn't preserve the original information. - dear Gavin...my sincere apologies....until just now i wasn't able to see that question (it was looking like it didn't exist)....that's why i posted again the same question.....i am so sorry.....i dont have anything personal...if you can see now i have edited my question....could you please be kind and give me some advice on how to use the as.numeric? – Anna Feb 28 '12 at 13:25 @Anna Your edited question is almost the same as before. My Answer includes the use of as.numeric(). There is one more gotcha and I'll edit my Answer accordingly. – Gavin Simpson Feb 28 '12 at 13:42 thank you very much.....how can i use the as numeric to convert directly the anna.total$score? is the following correct? new.score<-as.numeric (anna.total\$score)? –  Anna Feb 28 '12 at 13:45
Depends - see my edited Answer. I don't have score or your original data. A lot will depend on what the text file looks like etc and how you are reading it in. –  Gavin Simpson Feb 28 '12 at 13:53
is it possible from here to send you a part of my file to see how it looks like? –  Anna Feb 28 '12 at 14:27
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I know this is an older question, but I just had the same problem and may be it helps:

In this case, your score column seems like it should not have become a factor column. That usually happens after read.table when it is a text column. Depending on which country you are from, may be you separate floats with a "," and not with a ".". Then R thinks that is a character column and makes it a factor. AND in that case Gavins answer won't work, because R won't make "123,456" to 123.456 . You can easily fix that in a text editor with replace "," with "." though.

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