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I have a dataframe with duplicate column names in R, when I select specific columns from this dataframe using subset it renames the duplicates making them distinct. When I am creating a dataframe using the function data.frame() I can stop this happening by using the argument check.names = FALSE, is there a way I can also do this using subset (or any other way which selects names columns).

For example say I have the dataframe

data <- data.frame('sample' = 50, 'x_mean' = 1.5, 'Lower CI' = 1.0, 'Upper CI' = 2.0, 'sample' = 50, 'y_mean' = 0.6, 'Lower CI' = 0.3, 'Upper CI' = 0.9, check.names = FALSE)


Using the code

subset(data, select = selectVec)

renames the duplicate confidence intervals 'Lower CI.1' and 'Upper CI.1', whereas I want to keep these as 'Lower CI' and 'Upper CI'. Does anyone know a way of doing this?

Thanks in advance.

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2 Answers 2

up vote 3 down vote accepted

It looks like you will get the same behavior with [. The only way I can think of is to reassign the names afterwards:

subdata <- data[, selectVec, drop = FALSE]
names(subdata) <- names(data)[selectVec]

However, be aware that having duplicated column names is a very unnatural, complicated (obviously) and risky format for keeping your data. I would try to understand why the file or data.frame had duplicated columns in the first place and fix it there.

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Thanks, yep I'd tried with [ as well with same results. Renaming the dataframe after is probably the best way. –  user1165199 Nov 16 '12 at 13:03

This method will avoid passing it through [.data.frame which would then require reassigning the names. Dataframes are lists and logical indexing works with them the same way it works to address columns of dataframes.

    data.frame(as.list(data)[ selectVec ], check.names=FALSE )
#  sample x_mean Lower CI Upper CI y_mean Lower CI Upper CI
#1     50    1.5        1        2    0.6      0.3      0.9
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