Ok so I've read this question Confusion between factor levels and factor labels. But still feel like I am missing a lot. So this is maybe not a question per se - more like a presentation of my frustration.
Sample data
sample <- dput(structure(list(Logistik_1 = structure(c(3L, 2L, 3L, 3L, 3L, 4L), .Label = c("I meget ringe grad", "I ringe grad", "I nogen grad", "I høj grad", "I meget høj grad"), class = "factor"),
Logistik_2 = structure(c(4L, 4L, 4L, 3L, 3L, 4L), .Label = c("I meget ringe grad", "I ringe grad", "I nogen grad", "I høj grad", "I meget høj grad"), class = "factor"),
Logistik_3 = structure(c(3L, 4L, 3L, 4L, 3L, 4L), .Label = c("I meget ringe grad", "I ringe grad", "I nogen grad", "I høj grad", "I meget høj grad"), class = "factor"),
Logistik_4 = structure(c(4L, 2L, 3L, 4L, 2L, 3L), .Label = c("I meget ringe grad", "I ringe grad", "I nogen grad", "I høj grad", "I meget høj grad"), class = "factor")),
.Names = c("Logistik_1","Logistik_2", "Logistik_3", "Logistik_4"), row.names = c(NA, 6L), class = "data.frame"))
The output of sample
shows me the labels.
Logistik_1 Logistik_2 Logistik_3 Logistik_4
1 I nogen grad I høj grad I nogen grad I høj grad
2 I ringe grad I høj grad I høj grad I ringe grad
3 I nogen grad I høj grad I nogen grad I nogen grad
4 I nogen grad I nogen grad I høj grad I høj grad
5 I nogen grad I nogen grad I nogen grad I ringe grad
6 I høj grad I høj grad I høj grad I nogen grad
I can not make calculations with these nominal data rowSums(sample)
:
Error in rowSums(sample) : 'x' must be numeric
I can change each and single variable to a numeric. E.g. if I want to add all the integer values I can do this: sample$test <- as.numeric(sample[[1]])+as.numeric(sample[[2]])+as.numeric(sample[[3]])+as.numeric(sample[[4]])
which will work. But its lot of typing I think?
However: If I cbind the columns, the output returns the levels: Output of with(sample, cbind(Logistik_1, Logistik_2))
:
Logistik_1 Logistik_2
[1,] 3 4
[2,] 2 4
[3,] 3 4
[4,] 3 3
[5,] 3 3
[6,] 4 4
And I can make calculations on these levelse. E.g. if I want to add all the integer values I can do this: sample$total_score <-with(sample, rowSums(cbind(Logistik_1, Logistik_2, Logistik_3, Logistik_4)))
[a]
Logistik_1 Logistik_2 Logistik_3 Logistik_4 total_score
1 I nogen grad I høj grad I nogen grad I høj grad 14
2 I ringe grad I høj grad I høj grad I ringe grad 12
3 I nogen grad I høj grad I nogen grad I nogen grad 13
4 I nogen grad I nogen grad I høj grad I høj grad 14
5 I nogen grad I nogen grad I nogen grad I ringe grad 11
6 I høj grad I høj grad I høj grad I nogen grad 15
But I am confused, and think I am doing something which is simple too complicated. Is there a canonical 'correct' way to make calculations on factor levels? Is as.numeric
more correct than cbind
? And why does cbind work like this to begin with?
My hope was something like this would work: sum(as.numeric(sample[1:4]))
- but that returns Error: (list) object cannot be coerced to type 'double'
(because I am calling as.numeric on dataframe).
[a] I am aware that most statisticians will frown upon the common practice of assigning integer values to survey responses (e.g. "Highly agree" =5, "Agree somewhat" = 4 etc.) - but please just accept that's how we do it in the social sciences :-).The labels are responses in a survey and the levels are the integer values assigned to those responses.