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I use factors somewhat infrequently and generally find them comprehensible, but I often am fuzzy about the details for specific operations. Currently, I am coding/collapsing categories with few observations into "other" and am looking for a quick way to do that--I have a perhaps 20 levels of a variable, but am interested in collapsing a bunch of them to one.



Here are my levels of interest, and their labels in separate vectors.

#levels and labels
top8 <-c('621111','621210','621399','621610','621330','621310','621511','621420','621320')
top8_desc <- c('Offices of physicians',
           'Offices of dentists',
           'Offices of all other miscellaneous health practitioners',
           'Home health care services',
           'Offices of Mental Health Practitioners',
           'Offices of chiropractors',
           'Medical Laboratories',
           'Outpatient Mental Health and Substance Abuse Centers',
           'Offices of optometrists')

I could use the factor() call, enumerate them all, classifying as "other" for each time a category had few observations.

Assuming that the 'top8' and 'top8_desc' above are the actual top 8, what is the best way to declare data$naics as a factor variable and recode everything else as 'other' ?

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3 Answers 3

up vote 3 down vote accepted

I think the easiest way is to relabel all the naics not in the top 8 to a special value.

data$naics[!(data$naics %in% top8)] = -99

Then you can use the "exclude" option when turning it into a factor

factor(data$naics, exclude=-99)
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Hm, that involves actually throwing data away as opposed to changing the categorization, but that is probably what coding as a factor does anyway in the first place. I suppose it doesn't matter all that much. –  ako Mar 20 '13 at 22:24
You can always make an extra column in the dataframe with the transformed codes. –  kith Mar 20 '13 at 23:25
I tried this variation of your response: levels(data$naics)[which(!levels(data$naics)%in%top8)] <- "other" –  ako Mar 20 '13 at 23:47

A late entry

Here is a wrapper for plyr::mapvalues which allows the a remaining argument (your other)


Mapvalues <- function(x, from, to, warn_missing= TRUE, remaining = NULL){
    therest <- setdiff(x, from)
    from <- c(from, therest)
    to <- c(to, rep_len(remaining, length(therest)))
  mapvalues(x, from, to, warn_missing)
# replace the remaining values with "other"
Mapvalues(data$naics, top8, top8_desc,remaining = 'other')
# leave the remaining values alone
Mapvalues(data$naics, top8, top8_desc)
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I have writen a function to do this that can be usefull to others may be? I first check in a relative manner, if a level occures less then mp percent of the base. After that I check to limit the max number of levels to be ml.

ds is the data set at hand of type data.frame, I do this for all columns that appear in cat_var_names as factors.

cat_var_names <- names(clean_base[sapply(clean_base, is.factor)])

recodeLevels <- function (ds = clean_base, var_list = cat_var_names, mp = 0.01, ml = 25) {
  # remove less frequent levels in factor
  n <- nrow(ds)
  # keep levels with more then mp percent of cases
  for (i in var_list){
    keep <- levels(ds[[i]])[table(ds[[i]]) > mp * n]
    levels(ds[[i]])[which(!levels(ds[[i]])%in%keep)] <- "other"

  # keep top ml levels
  for (i in var_list){
    keep <- names(sort(table(ds[i]),decreasing=TRUE)[1:ml])
    levels(ds[[i]])[which(!levels(ds[[i]])%in%keep)] <- "other"
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This does not provide an answer to the question. To critique or request clarification from an author, leave a comment below their post - you can always comment on your own posts, and once you have sufficient reputation you will be able to comment on any post. –  Panique Aug 20 '13 at 14:17

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