7

I have the following sample file:

"id";"PCA0";"PCA1";"PCA2"
1;6.142741644872954;1.2075898020608253;1.8946959360032403   
2;-0.5329026419681557;-8.586870627925729;4.510113575138726

When I try to read it with:

d <- read.table("file.csv", sep=";", header=T)

id is a integer column, PCA0 a numeric an all subsequent columns are factors

class(d$iid)
[1] "integer"
class(d$PCA0)
[1] "numeric"
class(d$PCA1)
[1] "factor"
class(d$PCA2)
[1] "factor"

Why aren't the other columns numeric as well?

I know how to convert the columns, but I want my script to work without manually casting the types. Why doesn't R recognize the numeric columns?

8

This was a change make in R 3.1. There as been much discussion on the R-devel list about this. Basically if a number has too many digits, it's converted to a factor. This behavior is supposted be be reverted in 3.1.1 but no release date has been set as far as I know.

10

as @MrFlick says: too many digits.

you can force what you want by specifying colClasses argument:

read.table("test.csv",
                sep=";",
                header=TRUE,
                colClasses=c("integer","numeric","numeric","numeric"))

if you really need as much precision as possible:

require(data.table)
d <- fread("test.csv")

Then modify to maximum precision stored:

d[,PCA0 := sprintf("%.15E",PCA0)]
d[,PCA1 := sprintf("%.15E",PCA1)]
d[,PCA2 := sprintf("%.15E",PCA2)]

gives:

> d
   id                   PCA0                   PCA1                  PCA2
1:  1  6.142741644872954E+00  1.207589802060825E+00    1.8946959360032403   
2:  2 -5.329026419681557E-01 -8.586870627925729E+00     4.510113575138726

note: fread should be smater + faster.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.