I am trying to extract columns from a DT to a new DT using select{dplyr}

extract_Data <- select(.data = master_merge, subjectID, activity_ID,
                           contains("mean\\(\\)"), contains("std\\(\\)"))

There are 563 columns so I am asking to extract the first and second column (subject, activity) and all other columns where mean() or std() is present.

There are NO duplicate columns that can be created here. so stumped as to the why. I have tried every variation of select but always Error: Duplicated Column name.

How can I troubleshoot this - I have gone through all 563 columns names and there are no duplicates.

  • 1
    What if you do matches("(mean|std)\\(.*\\)") instead of the two current contains statements? ... edited to use matches instead of contains
    – talat
    Feb 16, 2015 at 19:42
  • same error "Error: found duplicated column name"
    – scopa
    Feb 16, 2015 at 19:45
  • With matches as well?
    – talat
    Feb 16, 2015 at 19:46
  • 2
    Can you reduce the problem to a size where the error still occurs and you can provide the column names of your data set?
    – talat
    Feb 16, 2015 at 19:46
  • 2
    No sense in continuing in the comments and under possible answers. Provide a reproducible example and ambiguity will disappear. Feb 17, 2015 at 12:31

7 Answers 7


The root of the problem is invalid characters in the original column names. The discussion in Variable Name Restrictions in R applies to column names, too. Try forcing unique column names with valid characters, with make.names() .

valid_column_names <- make.names(names=names(master_merge), unique=TRUE, allow_ = TRUE)
names(master_merge) <- valid_column_names
  • 1
    Excellent solution. Very concise and generalizable.
    – Mikuana
    Sep 7, 2016 at 2:32

Here is the solution I have found :

data <- data[ , !duplicated(colnames(data))]

This subsets the dataset without all the duplicated columns.

Hope it helps.


Duplicates out of match filter can cause "duplicated name" error. Example:

x <- data.frame(1, 2, 3)
names(x) <- c("a", "a", "b")

x %>%

If you don't need those columns, eliminate them with

x <- x[ !duplicated(names(x)) ]
  • 1
    That is clear - what I do not understand is why this is being returned as a duplicate - fBodyAcc-bandsEnergy()-1,8" "fBodyAcc-bandsEnergy()-9,16" and "fBodyGyro-bandsEnergy()-1,24" "fBodyGyro-bandsEnergy()-25,48"
    – scopa
    Feb 16, 2015 at 20:36
  • but they are not duplicates!
    – scopa
    Feb 16, 2015 at 20:38
  • duplicated function doesn't return the first occurence of the duplicate. Try which(names(master_merge) == "fBodyAcc-bandsEnergy()-1,8")
    – bergant
    Feb 16, 2015 at 20:40
  • it does return duplicates. sorry.
    – scopa
    Feb 16, 2015 at 20:43
  • I've seen this error, too. When I checked which column names were considered duplicates with the duplicated() function, it looks like the numeric characters after the "-" (possibly including "-",) are ignored. The functions seem to be treating the column names as if they were multiple copies of "fBodyAcc-bandsEnergy()" , multiple copies of "fBodyGyro-bandsEnergy()", etc. without the "-1,8" and "-9,16" that do make the column names unique. I don't have an answer yet to how to fix the issue, just offering this clue why you're seeing that error when there are no actual duplicated columns.
    – Lantana
    Feb 18, 2015 at 4:57

Not a direct answer, but this will help a lot of people.

For all you Coursera students facing this problem with this dataset: there are duplicate column names. For example, 'fBodyAccJerk-bandsEnergy()-1,16' is found twice. Check:


I'd love to show the output, but my browser won't support the 'code' button nor the ctrl-K shortcut and there's too much data to indent by hand. Try this code for yourself and carefully check the 'Variables not shown'!

I am working on a solution right now myself, possibly using the above answers, or the course forum.


Based on Lantana great answer, here is a function for a pure dplyr solution with pipe integration :

validate.names = function(df){
  rtn = df
  valid_column_names = make.names(names=names(df), unique=TRUE, allow_ = TRUE)
  names(rtn) = valid_column_names

You can then use it like this :

extract_Data %>% validate.names

I was puzzled by the same error. Avoid using select. If meanStdcolumns is the list of columns containing mean or std (which you can get using grep), then master_merge[,meanStdcolumns] seems to work.


Before you assign the column names filter out the columns by getting a list of indices using

meanStdColumns <- grep("mean|std", features$V2, value = FALSE)

and then assign the columns names using

meanStdColumnsNames <- grep("mean|std", features$V2, value = TRUE)

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