1

I have data, that i want to aggregate over time steps and additionally want to calculate the max of another value within that group.

For aggregating I'm running the following code:

s_stats <- lapply(s_df_array, function(x) {
aggregate(x, by=list(unique.values=x$start), length)
})

s_df_array is a table of dataframes and the code does its job fine for counting occurrences of entries for each value in x$start. Here you can see some of the data: First data.frame in list:

alb.station alb.start alb.km
alb         2         10
alb         2         67
alb         3         23
alb         3         74
alb         3         3
alb         3         15
alb         4         23
alb         4         52

Second data.frame in list:

alt.station alt.start alt.km
alt         3         25
alt         3         45
alt         4         15
alt         4         10

Third data.frame in list: Same structure as 1st and 2nd, but with column-names beginning with "ber." This goes on for 44 data.frames in this list

Outcome should be something like this for every data.frame in a new list:

alb.unique.values alb.station alb.max_km
2                 2           67
3                 4           74
4                 2           52

alt.unique.values alt.station alt.max_km
3                 2           45
4                 2           15

and so on for all 44 data.frames

edit: added more examples for list

  • You said the column names are starting with 'ber', but in the input tit is 'alb' or 'alt'. It is confusing – akrun Mar 4 '18 at 12:48
0

We can do

library(dplyr)
df1 %>% 
   group_by(alb.station, alb.start) %>% 
   summarise(station = n(), max.km = max(alb.km))
# A tibble: 3 x 4
# Groups: alb.station [?]
#    alb.station alb.start station max.km
#   <chr>           <int>   <int>  <dbl>
#1 alb                 2       2   67.0
#2 alb                 3       4   74.0
#3 alb                 4       2   52.0

For a list of data.frames

map(lst, ~ .x %>%
            group_by(alb.station, alb.start) %>%
            summarise(station = n(), max.km = max(alb.km)))

Update

If we have a nested list of elements, either create a recursive function or use if/else

map(lst, ~ if(is.data.frame(.x)) .x %>%
        rename_all(funs(sub("^[^.]*\\.", "", .))) %>% 
        group_by(station, start) %>% 
        summarise(n = n(), max.km = max(km)) else map_df(.x, ~ .x %>%
        rename_all(funs(sub("^[^.]*\\.", "", .))) %>%
        group_by(station, start) %>%
        summarise(n = n(), max.km = max(km))))

data

lst <- list(df1, df2, list(df1, df2))
  • 1
    Thank you so much! Works fine – Testificator Mar 4 '18 at 10:53
  • Maybe you can help me once more. The data.frames inside the list have different column names, that i need for further analysis. Is it possible to run the group_by and summarise functions with somethin like column index? – Testificator Mar 4 '18 at 12:19
  • @Testificator Sure, let me know – akrun Mar 4 '18 at 12:19
  • second data.frame in list: alt.station alt.start alt.km This goes on with alternating columnnames 44 times – Testificator Mar 4 '18 at 12:35
  • @Testificator Ok, could you update your post with a small example and expected output – akrun Mar 4 '18 at 12:37

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