I have a data frame as follows:

structure(list(`104` = c(NA, NA, NA, NA, NA, NA, NA, NA, NA, 
NA, NA, NA, NA, NA, NA, "yes", NA, NA, NA, NA), `15` = c(NA, 
NA, NA, NA, ">= 4.0", ">= 4.0", NA, "~ 2", "~ 2", "~ 2", "~ 2", 
"~ 2", "~ 2", "< 2.2", "~2.75", NA, "~2.75", "~2.75", "~2.75", 
"~2.75")), .Names = c("104", "15"), row.names = 45:64, class = "data.frame")

I know that it is not best practices to have numeric column names, however it is necessary in this circumstance. I have been manipulating my data frame through retrieving columns with a backtick `

Unfortunately, I found something funny in the above data frame.

> table(testtest$`10`)


However there is no column with a name of 10, so it looks like it is retrieving

> table(testtest$`104`)


I am nervous now, and do not trust that this may pop up again without my knowing for other columns such as 41 and 4100.

Any explanation would be helpful! Thanks

  • 2
    It is better to use [[ instead of $ as there is partial matching – akrun Sep 2 '16 at 19:42

This is due to the partial matching. To avoid it, use [[ to extract the columns


while the correct column name gives the output

 #[1] NA    NA    NA    NA    NA    NA    NA    NA    NA    NA    NA  
 #[12] NA    NA    NA    NA    "yes" NA    NA    NA    NA 

According to ?"$"

Both [[ and $ select a single element of the list. The main difference is that $ does not allow computed indices, whereas [[ does. x$name is equivalent to x[["name", exact = FALSE]]. Also, the partial matching behavior of [[ can be controlled using the exact argument.

In general, it is better not to have a numeric column name or names that start with numbers. We can append with a non-numeric character "X" with the convenient function make.names

names(testtest) <- make.names(names(testtest))
#[1] "X104" "X15" 

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