# Cumulative count of unique values in R

A simplified version of my data set would look like:

``````depth value
1     a
1     b
2     a
2     b
2     b
3     c
``````

I would like to make a new data set where, for each value of "depth", I would have the cumulative number of unique values, starting from the top. e.g.

``````depth cumsum
1      2
2      2
3      3
``````

Any ideas as to how to do this? I am relatively new to R.

-

Here is another attempt:

``````numvals <- cummax(as.numeric(factor(mydf\$value)))
aggregate(numvals, list(depth=mydf\$depth), max)
``````

Which gives:

``````  depth x
1     1 2
2     2 2
3     3 3
``````

It seems to work with @Arun's example, too:

``````  depth x
1     1 2
2     2 4
3     3 4
4     4 5
5     5 6
6     6 6
``````
-

This can be written in a relatively clean fashion with a single SQL statement using the sqldf package. Assume `DF` is the original data frame:

``````library(sqldf)

sqldf("select b.depth, count(distinct a.value) as cumsum
from DF a join DF b
on a.depth <= b.depth
group by b.depth"
)
``````
-

I find this a perfect case of using `factor` and setting `levels` carefully. I'll use `data.table` here with this idea. Make sure your `value` column is `character` (not an absolute requirement).

• step 1: Get your `data.frame` converted to `data.table` by taking just `unique` rows.

``````require(data.table)
dt <- as.data.table(unique(df))
setkey(dt, "depth") # just to be sure before factoring "value"
``````
• step 2: Convert `value` to a `factor` and coerce to `numeric`. Make sure to set the levels yourself (it is important).

``````dt[, id := as.numeric(factor(value, levels = unique(value)))]
``````
• step 3: Set key column to `depth` for subsetting and just pick the last value

`````` setkey(dt, "depth", "id")
dt.out <- dt[J(unique(depth)), mult="last"][, value := NULL]

#    depth id
# 1:     1  2
# 2:     2  2
# 3:     3  3
``````
• step 4: Since all values in the rows with increasing depth should have at least the value of the previous row, you should use `cummax` to get the final output.

``````dt.out[, id := cummax(id)]
``````

Edit: The above code was for illustrative purposes. In reality you don't need a 3rd column at all. This is how I'd write the final code.

``````require(data.table)
dt <- as.data.table(unique(df))
setkey(dt, "depth")
dt[, value := as.numeric(factor(value, levels = unique(value)))]
setkey(dt, "depth", "value")
dt.out <- dt[J(unique(depth)), mult="last"]
dt.out[, value := cummax(value)]
``````

Here's a more tricky example and the output from the code:

``````df <- structure(list(depth = c(1, 1, 2, 2, 3, 3, 3, 4, 5, 5, 6),
value = structure(c(1L, 2L, 3L, 4L, 1L, 3L, 4L, 5L, 6L, 1L, 1L),
.Label = c("a", "b", "c", "d", "f", "g"), class = "factor")),
.Names = c("depth", "value"), row.names = c(NA, -11L),
class = "data.frame")
#    depth value
# 1:     1     2
# 2:     2     4
# 3:     3     4
# 4:     4     5
# 5:     5     6
# 6:     6     6
``````
-
Here's a `dplyr` version: `df %>% arrange(depth) %>% mutate(value = cummax(as.numeric(factor(value, levels = unique(value))))) %>% arrange(depth, desc(value)) %>% distinct(depth)`. –  Jake Fisher Mar 24 at 1:46

Here is another solution using `lapply()`. With `unique(df\$depth)` make vector of unique `depth` values and then for each such value subset only those `value` values where `depth` is equal or less than particular `depth` value. Then calculate length of unique `value` values. This length value is stored in `cumsum`, then `depth=x` will give value of particular depth level. With `do.call(rbind,...)` make it as one data frame.

``````do.call(rbind,lapply(unique(df\$depth),
function(x)
data.frame(depth=x,cumsum=length(unique(df\$value[df\$depth<=x])))))
depth cumsum
1     1      2
2     2      2
3     3      3
``````
-

A good first step would be to create a column of `TRUE` or `FALSE`, where it is `TRUE` for the first of each value and `FALSE` for later appearances of that value. This can be done easily using `duplicated`:

``````mydata\$first.appearance = !duplicated(mydata\$value)
``````

Reshaping the data is best done using `aggregate`. In this case, it says to sum over the `first.appearance` column within each subset of `depth`:

``````newdata = aggregate(first.appearance ~ depth, data=mydata, FUN=sum)
``````

The result will look like:

``````  depth first.appearance
1     1  2
2     2  0
3     3  1
``````

This is still not a cumulative sum, though. For that you can use the `cumsum` function (and then get rid of your old column):

``````newdata\$cumsum = cumsum(newdata\$first.appearance)
newdata\$first.appearance = NULL
``````

So to recap:

``````mydata\$first.appearance = !duplicated(mydata\$value)
newdata = aggregate(first.appearance ~ depth, data=mydata, FUN=sum)
newdata\$cumsum = cumsum(newdata\$first.appearance)
newdata\$first.appearance = NULL
``````

Output:

``````  depth cumsum
1     1      2
2     2      2
3     3      3
``````
-