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I have 100s of columns in my database as factors. They actually contains numbers, but R considers them as factors. For my project requirement, I want to convert them to numeric.

I can do that in bulk using sapply / for loop. However i am not sure how to check that variable contains numbers? I cannot just check is.factor(var_name) as the data base also contains character variables which are considered as factors.

is there some other way to execute the below check:

if (is.numeric(var_name)) {
    convert the variable to numeric
}

I am looking for something similar to "stringasfactors= FALSE" which is used for retaining character variable as a character variable instead of converting to factors.

Any help/pointer would be really helpful.

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One way would be to use type.convert after converting all the columns to character

df1[] <- lapply(df1, function(x) type.convert(as.character(x)))

Now, the non-numeric character columns will be converted to factor class. We can reconvert those columns back to character

df1[] <- lapply(df1, function(x) if(is.factor(x)) as.character(x) else x)
  • Thanks for the reply. I want to retain the variables which is having the numbers as numeric instead of getting that converted to factors by R. – Arun Nov 19 '15 at 13:38
  • @Arun The code does that. Here, I am assuming that you started with a dataset that have numeric values got converted to factor by some ways. It shouldn't happen with the column contains only numeric values using read.csv/read.table. – akrun Nov 19 '15 at 13:40
  • thanks a lot akrun. I will try this and keep you posted – Arun Nov 19 '15 at 13:43
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    they must have non-numeric values in them somewhere. – Ben Bolker Nov 19 '15 at 13:54
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    @akrun - Thanks for the answer. It worked as always as any other answer from you :) – Arun Nov 24 '15 at 7:12

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