Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I would like to tabulate by row within a data frame. I can obtain adequate results using table within apply in the following example:

df.1 <- read.table(text = '
  state  county  city  year1  year2  year3  year4  year5
      1       2     4      0      0      0      1      2
      2       5     3     10     20     10     NA     10
      2       7     1    200    200     NA     NA    200
      3       1     1     NA     NA     NA     NA     NA
', na.strings = "NA", header=TRUE)

tdf <- t(df.1)
apply(tdf[4:nrow(tdf),1:nrow(df.1)], 2, function(x) {table(x, useNA = "ifany")})

Here are the results:

[[1]]
x
0 1 2 
3 1 1 

[[2]]
x
  10   20 <NA> 
   3    1    1 

[[3]]
x
 200 <NA> 
   3    2 

[[4]]
x
<NA> 
   5 

However, in the following example each row consists of a single value.

df.2 <- read.table(text = '
  state  county  city  year1  year2  year3  year4  year5
      1       2     4      0      0      0      0      0
      2       5     3      1      1      1      1      1
      2       7     1      2      2      2      2      2
      3       1     1     NA     NA     NA     NA     NA
', na.strings = "NA", header=TRUE)

tdf.2 <- t(df.2)
apply(tdf.2[4:nrow(tdf.2),1:nrow(df.2)], 2, function(x) {table(x, useNA = "ifany")})

The output I obtain is:

# [1] 5 5 5 5

As such, I cannot tell from this output that the first 5 is for 0, the second 5 is for 1, the third 5 is for 2 and the last 5 is for NA. Is there a way I can have R return the value represented by each 5 in the second example? Thank you for any assistance.

share|improve this question
2  
You could also look into reshaping the data (from wide to long) before using table. There are many ways to do this, I guess. Then you could create a cityid column as paste(state,county,city,sep=".") and run table(df$cityid,df$year). –  Frank May 29 '13 at 23:57

4 Answers 4

up vote 3 down vote accepted

Here's a table solution:

table(
    rep(rownames(df.1),5),
    unlist(df.1[,4:8]),
    useNA="ifany")

This gives

    0 1 2 10 20 200 <NA>
  1 3 1 1  0  0   0    0
  2 0 0 0  3  1   0    1
  3 0 0 0  0  0   3    2
  4 0 0 0  0  0   0    5

...and for your df.2:

    0 1 2 <NA>
  1 5 0 0    0
  2 0 5 0    0
  3 0 0 5    0
  4 0 0 0    5

Well, this is a solution unless you really like having a list of tables for some reason.

share|improve this answer
    
I could give the checkmark to any of the answers. However, I like this answer best even though it is least similar to the solution I had tried in my post. –  Mark Miller May 30 '13 at 17:37

You can use lapply to systematically output a list. You would have to loop over the row indices:

sub.df <- as.matrix(df.2[grepl("year", names(df.2))])
lapply(seq_len(nrow(sub.df)), 
       function(i)table(sub.df[i, ], useNA = "ifany"))
share|improve this answer

Protect the result by wrapping with list:

apply(tdf.2[4:nrow(tdf.2),1:nrow(df.2)], 2, 
              function(x) {list(table(x, useNA = "ifany")) })
share|improve this answer

I think the problem is stated in applys help:

... If n equals 1, apply returns a vector if MARGIN has length 1 and an array of dimension dim(X)[MARGIN] otherwise ...

The inconsistencies of the return values of base R's apply family is the reason why I shifted completely to plyrs **ply functions. So this works as desired:

library(plyr)
alply( df.2[ 4:8 ], 1, function(x) table( unlist(x), useNA = "ifany" ) )
share|improve this answer
    
+1 but let's not put everybody in the same basket: at least lapply and vapply provide consistent output formats. –  flodel May 30 '13 at 0:05

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.