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I'm struggling with using lapply to recode values parsimoniously.

Let's say I have 10 survey questions with 4 answers each, in which there is always one right or wrong answer. The questions are labeled q_1 through q_10, and my dataframe is called df. I'd like to create new variables with the same sequential labels that simply code the question as "right" (1) or "wrong" (0).

If I were to make a list of the right answers, it would be:

right_answers<-c(1,2,3,4,2,3,4,1,2,4)

Then, I'm trying to write a function that simply recodes all of the variables into new variables while using the same sequential identifier, such as

lapply(1:10, function(fx) {
  df$know_[fx]<-ifelse(df$q_[fx]==right_answers[fx],1,0)
})

In a hypothetical universe where this code was remotely correct, I'd get results such that:

id   q_1    know_1   q_2   know_2
1    1      1        2     1
2    4      0        3     0
3    3      0        2     1
4    4      0        1     0

Thanks so much for your help!

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3 Answers

For the same matrix output as the other answers, I would suggest:

q_names <- paste0("q_", seq_along(right_answers))
answers <- df[q_names]
correct <- mapply(`==`, answers, right_answers)
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This should give you a matrix of whether or not each answer was correct:

t(apply(test[,grep("q_", names(test))], 1, function(X) X==right_answers))
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You are likely having trouble with this part of the codedf$q_[fx]. You could call the column names using paste. Such as:

df = read.table(text = "
id   q_1   q_2
1    1              2     
2    4              3     
3    3              2     
4    4              1", header = TRUE)  

right_answers = c(1,2,3,4,2,3,4,1,2,4)

dat2 = sapply(1:2, function(fx) {
            ifelse(df[paste("q",fx,sep = "_")]==right_answers[fx],
                      1,0)
})

This doesn't add columns to your data.frame, but instead makes a new matrix much like @SenorO's answer. You can name the columns in the matrix and then add them to the original data.frame as follows.

colnames(dat2) = paste("know", 1:2, sep = "_")

data.frame(df, dat2)
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