This question perhaps has been answered earlier, but I did not see an answer.
I have a data set that consists of numbers and missing values. One row is a percentage. Below is a small set of fake data where AA, BB and CC are the column names. The third row in this data set is the percentage.
AA BB CC 234 432 78 1980 3452 2323 91.1 90 93.3 34 123 45
In this case, when I read the data set AA and CC are numeric and BB is integer. I guess somewhere 90.0 was rounded to 90. If I do not specify that BB is numeric could this cause problems with basic arithmetic?
I believe that if dd = 1 and ee = 2 and both are integer then the C language says dd / ee = 0, while R says dd / ee = 0.5.
Below is a series of simple mathematical operations that all seem to suggest answers in R are not changed regardless of whether the data are numeric or integer. Nevertheless, I keep thinking that it would be smart to specify that all variables are numeric when reading the data. Using Google I have found an example or two where the data type did seem to make a difference, but not below.
aa <- c(1,2,3,4,5,6,7) bb <- 2 str(aa) str(bb) cc <- as.integer(aa) dd <- as.integer(bb) str(cc) str(dd) aa/bb cc/dd aa/dd cc/bb ee <- aa * aa str(ee) sum(ee/2) ff <- cc * cc str(ff) sum(ff/2) gg <- 4.14 hh <- ((aa * aa) * gg) / 2 hh ii <- ((cc * cc) * gg) / 2 ii jj <- (aa * aa) / gg jj kk <- (cc * cc) / gg kk jj == kk mm <- as.integer(1) nn <- as.integer(2) mm/nn
I guess I am hoping for reassurance that this is not likely an issue with simple math, but I suspect it can. I keep thinking there is a fundamental rule of programming here, but I am not sure what that is. (I am aware of the concept of double precision.)
Thanks for any advice with what is surely a basic issue.