# Frequency Count for All Possible Bins

I have a data frame. I would like a frequency table created that shows the bin frequency by "Group". If there is a bin with 0 entities, I want it to show that there are 0 entities in that bin.

If I use the `table()` function, I get a frequency count of all bins in my data frame, but not by "Group". It also does not tell me that, for example, I do not have any rows within Group 1 Bin 3. I also looked into `tabulate()` but that doesn't seem to be exactly what I need either. Somehow I need to tell it what the set of possible bins actually are.

Here is some example code.

``````    df = as.data.frame(rbind(c(1,1.2), c(1,1.4), c(1,2.1), c(1,2.5), c(1,2.7), c(1,4.1), c(2,1.6), c(2,4.5), c(2,4.3), c(2,4.8), c(2,4.9)))
colnames(df) = c("Group", "Value")
df.in = split(df, df\$Group)

FindBin = function(df){
maxbin = max(ceiling(df\$Value),na.rm=TRUE)+1 #what is the maximum bin value.
bin = seq(from=0, to=maxbin, by=1) #Specify your bins: 0 to the maximum value by increments of 1
df\$bin_index = findInterval(df\$Value, bin, all.inside = TRUE) #Determine which bin the value is in
return(df)
}

df.out = lapply(names(df.in), function(x) FindBin(df.in[[x]]))
df.out2 = do.call(rbind.data.frame, df.out) #Row bind the list of dataframes to one dataframe
``````

The output of the df.out2 looks like this:

``````        Group Value bin_index
1      1   1.2         2
2      1   1.4         2
3      1   2.1         3
4      1   2.5         3
5      1   2.7         3
6      1   4.1         5
7      2   1.6         2
8      2   4.5         5
9      2   4.3         5
10     2   4.8         5
11     2   4.9         5
``````

In addition to the output above, I'd like a summary output of my results that looks something like this:

``````    Group     Bin     Freq
1         1       0
1         2       2
1         3       3
1         4       0
1         5       1
2         1       0
2         2       1
2         3       0
2         4       0
2         5       4
``````

Any ideas?

Thank you.

-
Unrelated, why don't you just use `df\$bin_index <- ceiling(df\$Value)`? – BrodieG Feb 3 '14 at 21:59

Doesn't `table` do what you want for your first question:

``````df\$bin_index <- factor(df\$bin_index, levels=1:5)
table(df[, c("Group", "bin_index")])
#       bin_index
# Group 1 2 3 4 5
#     1 0 2 3 0 1
#     2 0 1 0 0 4
``````

It shows the `0` entry for bin 3, group 2 (I presume that's what you meant, there are rows for bin 3 in group 1). Also, by setting the factor levels I was also able to get bin_index 1 to show up. For your second question, just use `melt`:

``````library(reshape2)
melt(table(df[, c("Group", "bin_index")]))
#    Group bin_index value
# 1      1         1     0
# 2      2         1     0
# 3      1         2     2
# 4      2         2     1
# 5      1         3     3
# 6      2         3     0
# 7      1         4     0
# 8      2         4     0
# 9      1         5     1
# 10     2         5     4
``````
-
Thank you, this does what I need it to do for the most part and gets me a lot farther than where I was before. Using factor and then table is a good idea. All of my groups have different numbers of bin_indexes. For instance, group 1 might have bins that go up to 130, while group 2 has bins that go up to 105, etc. Perhaps I can then remove rows by group number where the bin_index is greater than the largest bin_index for that group. Thanks! – SC2 Feb 5 '14 at 13:56