# loop on subgroups in dataframe

I received answer yesterday but there is one thing which is not working 100% correct. My dataframe SHORT:

ID  IDaxis  Y   Date-Time               Tdiff
1   1       5   2012-06-11  13:10:30    0.00
1   1       10  2012-06-11  15:10:30    2.00
1   1       20  2012-06-11  17:10:30    2.00
1   3       15  2012-06-11  13:20:30    0.00
1   3       30  2012-06-11  14:20:30    1.00
1   3       45  2012-06-11  17:20:30    3.00
1   6       9   2012-06-11  13:35:30    0.00
1   6       15  2012-06-11  15:35:30    2.00
1   6       30  2012-06-11  18:35:30    3.00
3   2       8   2012-06-11  13:50:30    0.00
3   2       14  2012-06-11  14:55:30    1.083
3   2       20  2012-06-11  16:55:30    2.00
3   2       30  2012-06-11  19:00:30    2.083
3   5       10  2012-06-11  13:40:30    0.00
3   5       15  2012-06-11  16:45:30    3.083


ID - plant
IDaxis - plant leaf
Y - length of leaf
Date - Time - date and time of measurement
Tdiff - time(h) interval between measurement

I want to do:

1. sum up Tdiff for IDaxis in column SHORT$Ttot 2. calculate difference between row in Y for IDaxis in column SHORT$Ydiff
3. sum up Ydiff for IDaxis in column SHORT$Ytot Code for: 1. SHORT$Ttot <- ave(SHORT$Tdiff, SHORT$IDaxis, FUN = cumsum)works great
2. SHORT$Ydiff <- ave(SHORT$Y, SHORT$IDaxis, FUN = diff) Here I have a problem. Ydiff should looks like that (each first row for new IDxais is equal=0) : ID IDaxis Y Ydiff 1 1 5 0 1 1 10 5 1 1 20 10 1 3 15 0 1 3 30 15 1 3 45 15 1 6 9 0  But Ydiff looks like that: ID IDaxis Y Ydiff 1 1 5 5 1 1 10 10 1 1 20 -5 1 3 15 15 1 3 30 15 1 3 45 15 1 6 9 -36  This mess up all with code: 3.SHORT$Ytot <- ave(SHORT$Ydiff, SHORT$IDaxis, FUN = cumsum)

If you could answer with a piece of code that would be very helpful.
I have just start my work with R, but this is a simplified version of my dataframe - just to show the problem. I have three dataframes each 700 ID, each have 100 IDaxis and 25 variables.

-
please always ?dput your data :) – Anthony Damico Dec 17 '12 at 10:57

You have to change the function in the second ave command to:

function(x) c(0, diff(x))


This is necessary since the length of the output of diff is shorter than the original vector (difference of 1). Just add zeros to the vectors created by diff. This ensures that the first value of each subgroup is zero.

The complete code:

SHORT$Ttot <- ave(SHORT$Tdiff, SHORT$IDaxis, FUN = cumsum) SHORT$Ydiff <- ave(SHORT$Y, SHORT$IDaxis, FUN = function(x) c(0, diff(x)))
SHORT$Ytot <- ave(SHORT$Ydiff, SHORT\$IDaxis, FUN = cumsum)


The result:

   ID IDaxis  Y            Date.Time Tdiff  Ttot Ydiff Ytot
1   1      1  5 2012-06-11  13:10:30 0.000 0.000     0    0
2   1      1 10 2012-06-11  15:10:30 2.000 2.000     5    5
3   1      1 20 2012-06-11  17:10:30 2.000 4.000    10   15
4   1      3 15 2012-06-11  13:20:30 0.000 0.000     0    0
5   1      3 30 2012-06-11  14:20:30 1.000 1.000    15   15
6   1      3 45 2012-06-11  17:20:30 3.000 4.000    15   30
7   1      6  9 2012-06-11  13:35:30 0.000 0.000     0    0
8   1      6 15 2012-06-11  15:35:30 2.000 2.000     6    6
9   1      6 30 2012-06-11  18:35:30 3.000 5.000    15   21
10  3      2  8 2012-06-11  13:50:30 0.000 0.000     0    0
11  3      2 14 2012-06-11  14:55:30 1.083 1.083     6    6
12  3      2 20 2012-06-11  16:55:30 2.000 3.083     6   12
13  3      2 30 2012-06-11  19:00:30 2.083 5.166    10   22
14  3      5 10 2012-06-11  13:40:30 0.000 0.000     0    0
15  3      5 15 2012-06-11  16:45:30 3.083 3.083     5    5

-
Thank You very much. – barley81 Dec 18 '12 at 8:27
This is short and clear answer. – barley81 Dec 18 '12 at 8:41