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When reading a csv file, where each cell can be strings or numerical values. Which approach should I use to read this csv file into a matrix. The tricky thing is that I may need to perform some computation on this imported matrix. If an entry is a string, I need to perform some character-based operation on this string, e.g., comparing it with another string. If an entry is an numerical value, I need to perform a add/subtract operation on it. How should I import this csv file:

testmatrix = as.character(read.csv("test.csv", sep=","))
testmatrix = as.vector(read.csv("test.csv", sep=","))

The data is like this

word1   word2   123  word3
234     456     word4  word5
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5  
your two lines look identical to me! Also, you will be reading the cvs file into R as a data.frame rather than a matrix with this approach. Data.frames are lists of single typed vectors, you can then convert your data to a matrix if you like, but then the data must all be a single type. It sounds like for each calulation/comparison you do, you will need to do something like if(!is.na(as.numeric(x))) do something – Justin Aug 7 '12 at 14:46
    
Could you add an example of your data too ? – Pop Aug 7 '12 at 15:02
    
I have shown an example of the data set. – bit-question Aug 7 '12 at 15:34
up vote 0 down vote accepted

You can read into a dataframe with one of the read.* functions but since there are no commas, read.csv doesn't make much sense. Be sure to use 'stringsAsFactors' to avoid automatic factor creation. Convert to matrix to facilitate processing with vectorized functions like sum:

 dat <- read.table(text="word1   word2   123  word3
 234     456     word4  word5", header=FALSE, stringsAsFactors=FALSE)
 mdat <- data.matrix(dat)  # you get warning but it's safe to ignore them in this case.
 sum(as.numeric(mdat)[ is.numeric(mdat) ] )
#[1] NA  left in to illustrate need to use na.rm=TRUE
 sum(as.numeric(mdat)[ is.numeric(mdat) ] , na.rm=TRUE)
#[1] 813   expected result
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