I have a data frame named "mydata" that looks like this this:

   A  B  C   D 
1. 5  4  4   4 
2. 5  4  4   4 
3. 5  4  4   4 
4. 5  4  4   4 
5. 5  4  4   4 
6. 5  4  4   4 
7. 5  4  4   4 

I'd like to delete row 2,4,6. For example, like this:

   A  B  C   D
1. 5  4  4  4 
3. 5  4  4  4 
5. 5  4  4  4 
7. 5  4  4  4 
  • 18
    Also, you might want to become familiar with some common terminology for working with data. This is usually referred to as subsetting, which, if you searched in Google for "r subset data frame" you would get to the very helpful UCLA R FAQ page. Welcome to Stackoverflow, by the way! Commented Sep 8, 2012 at 4:55
  • Added some additional ways of subsetting using boolean vectors, in addition to @mrdwab's excellent answer. Commented Sep 8, 2012 at 10:57
  • 2
    @A5C1D2H2I1M1N2O1R2T1: The UCLA FAQ for R subsetting has moved. Now it's here. Commented Jun 13, 2017 at 13:10

11 Answers 11


The key idea is you form a set of the rows you want to remove, and keep the complement of that set.

In R, the complement of a set is given by the '-' operator.

So, assuming the data.frame is called myData:

myData[-c(2, 4, 6), ]   # notice the -

Of course, don't forget to "reassign" myData if you wanted to drop those rows entirely---otherwise, R just prints the results.

myData <- myData[-c(2, 4, 6), ]
  • 81
    Don't forget to note the , in there! ;) Commented Jan 22, 2015 at 20:59
  • 7
    what if your dataframe is only one column. It seems to drop the whole structure and outputs a vector of the values Commented Mar 19, 2015 at 18:37
  • 10
    @road_to_quantdom, add a drop = FALSE in there. Commented Mar 20, 2015 at 1:26
  • 8
    "In R, the complement of a set is given by the '-' operator" -> This is a very misleading wording. Negative indexes are removed and that's it, there is no notion of complement. If you work with logical and try using - it won't work, because the complement operator for logicals is !. The complement of c(2,4,6) in the rows would rather be setdiff(c(2,4,6),1:nrow(myData)), which is not c(-2, -4, -6), although both would yield the same rows when used with [.
    – asachet
    Commented Dec 4, 2015 at 11:14
  • 4
    @Speldosa, myData[-c(2, 4, 6),,drop=F]. In fact, I would suggest that you always insert ,drop=F just before the ] in any matrix access. Commented Apr 22, 2016 at 12:20

You can also work with a so called boolean vector, aka logical:

myData = myData[row_to_keep,]

Note that the ! operator acts as a NOT, i.e. !TRUE == FALSE:

myData = myData[!row_to_keep,]

This seems a bit cumbersome in comparison to @mrwab's answer (+1 btw :)), but a logical vector can be generated on the fly, e.g. where a column value exceeds a certain value:

myData = myData[myData$A > 4,]
myData = myData[!myData$A > 4,] # equal to myData[myData$A <= 4,]

You can transform a boolean vector to a vector of indices:

row_to_keep = which(myData$A > 4)

Finally, a very neat trick is that you can use this kind of subsetting not only for extraction, but also for assignment:

myData$A[myData$A > 4,] <- NA

where column A is assigned NA (not a number) where A exceeds 4.

  • What if you want to exclude them? In your example number 3, if you wane Commented Sep 15, 2016 at 16:52

Problems with deleting by row number

For quick and dirty analyses, you can delete rows of a data.frame by number as per the top answer. I.e.,

newdata <- myData[-c(2, 4, 6), ] 

However, if you are trying to write a robust data analysis script, you should generally avoid deleting rows by numeric position. This is because the order of the rows in your data may change in the future. A general principle of a data.frame or database tables is that the order of the rows should not matter. If the order does matter, this should be encoded in an actual variable in the data.frame.

For example, imagine you imported a dataset and deleted rows by numeric position after inspecting the data and identifying the row numbers of the rows that you wanted to delete. However, at some later point, you go into the raw data and have a look around and reorder the data. Your row deletion code will now delete the wrong rows, and worse, you are unlikely to get any errors warning you that this has occurred.

Better strategy

A better strategy is to delete rows based on substantive and stable properties of the row. For example, if you had an id column variable that uniquely identifies each case, you could use that.

newdata <- myData[ !(myData$id %in% c(2,4,6)), ]

Other times, you will have a formal exclusion criteria that could be specified, and you could use one of the many subsetting tools in R to exclude cases based on that rule.


Create id column in your data frame or use any column name to identify the row. Using index is not fair to delete.

Use subset function to create new frame.

updated_myData <- subset(myData, id!= 6)
print (updated_myData)

updated_myData <- subset(myData, id %in% c(1, 3, 5, 7))
print (updated_myData)

For completeness, I'll add that this can be done with dplyr as well using slice. The advantage of using this is that it can be part of a piped workflow.

df <- df %>%
  slice(-c(2, 4, 6)) %>%

Of course, you can also use it without pipes.

df <- slice(df, -c(2, 4, 6))

The "not vector" format, -c(2, 4, 6) means to get everything that is not at rows 2, 4 and 6. For an example using a range, let's say you wanted to remove the first 5 rows, you could do slice(df, 6:n()). For more examples, see the docs.


By simplified sequence :

mydata[-(1:3 * 2), ]

By sequence :

mydata[seq(1, nrow(mydata), by = 2) , ]

By negative sequence :

mydata[-seq(2, nrow(mydata), by = 2) , ]

Or if you want to subset by selecting odd numbers:

mydata[which(1:nrow(mydata) %% 2 == 1) , ]

Or if you want to subset by selecting odd numbers, version 2:

mydata[which(1:nrow(mydata) %% 2 != 0) , ]

Or if you want to subset by filtering even numbers out:

mydata[!which(1:nrow(mydata) %% 2 == 0) , ]

Or if you want to subset by filtering even numbers out, version 2:

mydata[!which(1:nrow(mydata) %% 2 != 1) , ]

Delete Dan from employee.data - No need to manage a new data.frame.

employee.data <- subset(employee.data, name!="Dan")

Subset a dataframe with dplyr package

As we all know, in R there are plenty ways to solve one task. Below are some examples how to use the available dplyr functions to subset a dataframe.

  1. Using slice() function as explained in a previous answer by Ryan H.

  2. Using the filter-based solution with the row_number():

    X<-rep(4,7) data.frame(A=rep(5,7), B=X, C=X, D=X) %>% filter(!row_number() %in% c(2,4,6))

This will output the 1st, 3rd, 5th and 7th rows but also the row numbers will be changed to 1-4:

  A B C D
1 5 4 4 4
2 5 4 4 4
3 5 4 4 4
4 5 4 4 4

To keep the row numbers you can add rowid_to_column() and then use the id-column for the subsetting:

data.frame(A=rep(5,7), B=X, C=X, D=X) %>%
rowid_to_column("N") %>%
filter(!N %in% c(2,4,6))

  N A B C D
1 1 5 4 4 4
2 3 5 4 4 4
3 5 5 4 4 4
4 7 5 4 4 4
  1. Using anti_join().

anti_join is applied to two datasets and removes the rows which they both have in common. So, to remove the rows [2, 4, 6] from your dataset you can do the following:

DF %>% rowid_to_column("N") %>%
anti_join(data.frame(N=c(2,4,6)), by="N")
  • slice() seems like the more straight-forward dplyr way to do this, as shown in Ryan H's answer from 4 years ago. Commented May 22 at 19:18
  • 2
    @GregorThomas slice() is possibly more straightforward but filter() is more universal, pick up what you like! Commented May 22 at 19:39

Here's a quick and dirty function to remove a row by index.

removeRowByIndex <- function(x, row_index) {
  nr <- nrow(x)
  if (nr < row_index) {
    print('row_index exceeds number of rows')
  } else if (row_index == 1)
    return(x[2:nr, ])
  } else if (row_index == nr) {
    return(x[1:(nr - 1), ])
  } else {
    return (x[c(1:(row_index - 1), (row_index + 1):nr), ])

It's main flaw is it the row_index argument doesn't follow the R pattern of being a vector of values. There may be other problems as I only spent a couple of minutes writing and testing it, and have only started using R in the last few weeks. Any comments and improvements on this would be very welcome!

  • A simpler function that handles more than one row at a time would be removeRowByIndex(x, row_index) x[-row_index, ]. But the operation itself is so simple that it seems pointless to create a function for it... (Also print() statements inside functions are good for debugging and bad for general use. Use message() or warning() or stop() as appropriate.) Commented May 22 at 19:16

To identify by a name:

  1. Call out the unique ID and identify the location in your data frame (DF).
  2. Mark to delete. If the unique ID applies to multiple rows, all these rows will be removed.


Rows<-which(grepl("unique ID", DF$Column))

Another approach when working with Unique IDs is to subset data: *This came from an actual report where I wanted to remove the chemical standard

Chem.Report<-subset(Chem.Report, Chem_ID!="Standard")

Chem_ID is the column name. The ! is important for excluding

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