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I have uploaded a csv file to r with mostly binary data. What I want to do is manipulate data in column 'b' based on the the corresponding entry in column 'a.'

For example, I would love to loop through my entire dataset and for every row with an entry of '1' in column 2, check to see the entry in column 3 in the same row. Then, find out how many of these successful queries exist.

Similarly, I have several columns of large integers and would love to confirm one of the other binary columns by checking if one of the large numbers is greater than the other. For example, column '3' is the binary result of "Home team wins?" I then have the score of the game in Column "Home team score" and "Away team score." I would really love to create a loop that would see if the entry in 'home team wins' is confirmed by the entry in 'home team score' > 'away team score.'

Thank you

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The merge and match functions would seem be the obvious loop-free methods. You are asked to provide dput output or code to have examples. – 42- Sep 26 '13 at 19:09

1 Answer 1

up vote 1 down vote accepted

Something like this?

dataset <- data.table(
Homescore = c(2,4,8,0,3,2,3,4),
Awayscore = c(3,2,3,4,2,4,8,0),
Homewin = c(1,0,0,1,1,1,0,1)

NoOfSuccess <- dim(
dataset[Homescore > Awayscore & Homewin == 1]

NoOfFailure <- dim(
dataset[Homescore > Awayscore & Homewin == 0]

#[1] 2
#[1] 2
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dataset[,sum(Homescore > Awayscore & Homewin == 1)] is more efficient than nrow(dataset[Homescore > Awayscore & Homewin == 1]). Why create a potentially large subset result, merely to count its rows? – Matt Dowle Sep 27 '13 at 9:50
@MatthewDowle - I wast trying to be very clear in terms of explaining the thought process. In terms of coding efficiency, you're absolutely right. – Codoremifa Sep 27 '13 at 10:21
Ah I see. Reading this one again, it's actually quite neat how a new user (Dave) can be set straight so quickly with data.table syntax. No suite of 11+ functions to learn, you just stick the logic inside []. It's pretty easy really isn't it :) – Matt Dowle Sep 27 '13 at 10:45

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