# Delete a row and recalculate R^2

I have coded the following in R: User chooses a file that contains 2 columns (V1 and V2), with numerous rows (number of rows will vary depending on input file) The script calculates the rsq of the relationship between 2 the variables. There can be anything from 10 to 1000 rows of data depending on the input file.

I want to code the following: The code should loop through all rows, removing/omitting/ignoring one row at a time and calculating the new rsq with this row missing. So, for example:

There are 10 rows of data and the total rsq = 0.97 Step1: The first row of data are removed from the equation The rsq is calculated again, but this time for 9 rows, giving rsq = 0.98.
Step 2:The 1st row is re-added and the 2nd row is removed rsq is calculated again Step 3: The second row is re-added and the 3rd row is removed rsq is calculated again

After each loop the "new rsq" will be placed in a new column next to the row that was removed.

Can anyone advise how to do this? I have this coded in excel and it works well but is cumbersome and therefore not ideal.

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This sounds like a bootstrap. You do need to tell use what you understand to be the "total rsq" in this situation, preferably with code! It also sounds like a homework assignment, so if you can place a context around this it may reduce the concerns that we are participating in academic indiscretions. – 42- Mar 29 '13 at 16:40
More like a LOO estimate, no? – Gavin Simpson Mar 29 '13 at 16:43
Roughly how many rows are in your dataset? – NPE Mar 29 '13 at 16:44
In case it is homework, just a hint: `newvalue[j]<-some_func(data[-j,])` – Carl Witthoft Mar 29 '13 at 17:21
I probably should have said 'jack-knife' rather than 'bootstrap'. – 42- Mar 29 '13 at 17:24

Do you want to do something like this?

``````# Make some sample data
set.seed(1095)
data <- data.frame( V1 = 1:10 , V2 = sample.int(5 ,10 ,repl = TRUE ) )

# Use sapply to get r2 removing each row at a time
r2 <- sapply( 1:nrow(data) , function(x) ( cor( data[-x,1] , data[-x,2] ) )^2 )
# Combine into a data frame
newdata <- cbind( data , r2 )
newdata
#      V1 V2        r2
#   1   1  5 0.2526316
#   2   2  3 0.4657601
#   3   3  5 0.3204721
#   4   4  5 0.3691612
#   5   5  1 0.5405405
#   6   6  3 0.3769480
#   7   7  3 0.3840426
#   8   8  2 0.3409425
#   9   9  1 0.2725806
#   10 10  3 0.4986702
``````
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Hi Simon, Thank you for this. I think this is exactly what I need. I've modified your code to use my own data and it runs perfectly. Although, it is giving different results from my .xls, I will have a play around. I can't thank this forum enough for the input it provides, especially when I'm so poor at describing what it is I need help with! – user2224979 Apr 11 '13 at 13:24
@user2224979 you are welcome! Check the type of r2 that excel is calculating. By default `R` uses Pearsons product moment correlation coefficient. I'm not sure if Excel does the same? It could also be a rounding/display issue with Excel. Basically, I trust R because the help page describes exactly the method used, and you can check the source if you really want. Try different `cor` methods, e.g. `cor( data[-x,1] , data[-x,2] , method = "spearman" )` and see if they tally. – Simon O'Hanlon Apr 11 '13 at 13:27
Cheers Simon. Yes, this is why I'm keen to move the excel code I have to R, because with R I know exactly what I'm getting! – user2224979 Apr 11 '13 at 13:30
@user2224979 what for instance is the value you get for the first row? I see here that R^2 equals the square of Pearson so perhaps you just need to square the values? I edited the code to reflect this. – Simon O'Hanlon Apr 11 '13 at 16:41
thanks again Simon! – user2224979 Apr 11 '13 at 17:28