# dplyr summarise over nested group_by [duplicate]

This question already has an answer here:

I have a data frame like this:

Date Amount Category
1  02.07.15      1        1
2  02.07.15      2        1
3  02.07.15      3        1
4  02.07.15      4        2
5  03.07.15      5        2
6  04.07.15      6        3
7  05.07.15      7        3
8  06.07.15      8        3
9  07.07.15      9        4
10 08.07.15     10        5
11 09.07.15     11        6
12 10.07.15     12        4
13 11.07.15     13        4
14 12.07.15     14        5
15 13.07.15     15        5
16 14.07.15     16        6
17 15.07.15     17        6
18 16.07.15     18        5
19 17.07.15     19        4

I would like to calculate the sum of the amount for each single day in a category. My attempts like (see the code) are both not sufficient.

summarise(group_by(testData, Category), sum(Amount))

Wrong output --> here the sum is calculated over each group

Category sum(Amount)
1        1           6
2        2           9
3        3          21
4        4          53
5        5          57
6        6          44

summarise(group_by(testData, Date), sum(Amount), categories = toString(Category))

Wrong output --> here the sum is calculated over each day but the categories are not considered

Date sum(Amount) categories
1  02.07.15          10 1, 1, 1, 2
2  03.07.15           5          2
3  04.07.15           6          3
4  05.07.15           7          3
5  06.07.15           8          3
6  07.07.15           9          4
7  08.07.15          10          5
8  09.07.15          11          6
9  10.07.15          12          4
10 11.07.15          13          4
11 12.07.15          14          5
12 13.07.15          15          5
13 14.07.15          16          6
14 15.07.15          17          6
15 16.07.15          18          5
16 17.07.15          19          4

So far I did not succeed in combining both statements. How can I nest both group_by statements to calculate the sum of the amount for each single day in each category?

Nesting the groups like:

summarise(group_by(group_by(testData, Date), Category), sum(Amount), dates = toString(Date))

Category sum(Amount)                                  dates
1        1           6           02.07.15, 02.07.15, 02.07.15
2        2           9                     02.07.15, 03.07.15
3        3          21           04.07.15, 05.07.15, 06.07.15
4        4          53 07.07.15, 10.07.15, 11.07.15, 17.07.15
5        5          57 08.07.15, 12.07.15, 13.07.15, 16.07.15
6        6          44           09.07.15, 14.07.15, 15.07.15

does not work as intended.

I have heard of dplyr - summarise weighted data summarise_each but could not get it to work:

summarise_each(testData, funs(Category))
Error could not find function Category

## marked as duplicate by Ronak Shah r StackExchange.ready(function() { if (StackExchange.options.isMobile) return; \$('.dupe-hammer-message-hover:not(.hover-bound)').each(function() { var \$hover = \$(this).addClass('hover-bound'), \$msg = \$hover.siblings('.dupe-hammer-message'); \$hover.hover( function() { \$hover.showInfoMessage('', { messageElement: \$msg.clone().show(), transient: false, position: { my: 'bottom left', at: 'top center', offsetTop: -7 }, dismissable: false, relativeToBody: true }); }, function() { StackExchange.helpers.removeMessages(); } ); }); }); Jan 12 at 3:36

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

• thank you very much your comment is the solution – Georg Heiler Jul 2 '15 at 7:35

## 1 Answer

You can try

testData %>%
group_by(Date,Category) %>%
summarise(Amount= sum(Amount))