Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I created a variable describing a species' group as domestic, wild or exotic based on a dataframe where each row represented the species found in unique sites (siteID). I want to insert rows into my dataframe by each siteID to report 0 for a group(s) that was not observed at that site. In other words this is the dataframe I have:

df.start <- data.frame(species = c("dog","deer","toucan","dog","deer","toucan"), 
    siteID = c("a","b","b","c","c","c"), 
    group = c("domestic", "wild", "exotic", "domestic", "wild", "exotic"), 
    value = c(2:7))

df.start
#   species siteID    group value
# 1     dog      a domestic     2
# 2    deer      b     wild     3
# 3  toucan      b   exotic     4
# 4     dog      c domestic     5
# 5    deer      c     wild     6
# 6  toucan      c   exotic     7

This is the data frame I want:

df.end <-data.frame(species=c("dog","NA","NA","NA","deer",
                              "toucan","dog","deer","toucan"),
    siteID = c("a","a","a","b","b","b","c","c","c"),
    group = rep(c("domestic", "wild", "exotic"),3), 
    value = c(2,0,0,0,3,4,5,6,7))

df.end
#   species siteID    group value
# 1     dog      a domestic     2
# 2      NA      a     wild     0
# 3      NA      a   exotic     0
# 4      NA      b domestic     0
# 5    deer      b     wild     3
# 6  toucan      b   exotic     4
# 7     dog      c domestic     5
# 8    deer      c     wild     6
# 9  toucan      c   exotic     7

This came up because I wanted to use a plyr function to summarize the mean values by group and I realized the zeros were missing for some groups site combinations and inflating my estimate. Maybe I'm missing a more obvious workaround?

share|improve this question

Using base R functions:

result <- merge(  
  with(df.start, expand.grid(siteID=unique(siteID),group=unique(group))),
  df.start,
  by=c("siteID","group"),
  all.x=TRUE
)
result$value[is.na(result$value)] <- 0

> result
  siteID    group species value
1      a domestic     dog     2
2      a   exotic    <NA>     0
3      a     wild    <NA>     0
4      b domestic    <NA>     0
5      b   exotic  toucan     4
6      b     wild    deer     3
7      c domestic     dog     5
8      c   exotic  toucan     7
9      c     wild    deer     6
share|improve this answer
 df.sg <- data.frame(xtabs(value~siteID+group, data=df.start))
 merge(df.start[-4], df.sg, by=c("siteID", "group"), all.y=TRUE)
#-------------
  siteID    group species Freq
1      a domestic     dog    2
2      a   exotic    <NA>    0
3      a     wild    <NA>    0
4      b domestic    <NA>    0
5      b   exotic  toucan    4
6      b     wild    deer    3
7      c domestic     dog    5
8      c   exotic  toucan    7
9      c     wild    deer    6 

The xtabs function returns a table which lets the as.data.frame.table method works on it. Very handy.

share|improve this answer
    
Nice answer. I feel like there has to be an aggregate solution, but it's not coming to me. – thelatemail Jul 17 '13 at 5:55
    
I don't think so. aggregate discards (or perhaps never notices) the missing cross-combinations. aggregate(df.start$value, df.start[, c("siteID", "group")], FUN=I) – 42- Jul 17 '13 at 6:01
    
I wasn't aware of xtabs. Very handy indeed - thanks! – sho Jul 17 '13 at 12:34

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.