# Subtraction on different rows and columns and separated by group

I really hate to ask two questions in a row but this is something that I can’t wrap my head around. So let’s say I have a data frame, as follows:

``````   df
Row# User    Morning     Evening     Measure Date
1    1          NA          NA          2/18/11
2    1          50          115         2/19/11
3    1          85          128         2/20/11
4    1          62          NA          2/25/11
5    1          48          100.8        3/8/11
6    1          19          71          3/9/11
7    1          25          98          3/10/11
8    1          NA          105         3/11/11
9    2          48          105         2/18/11
10   2          28          203         2/19/11
11   2          35          80.99        2/21/11
12   2          91          78.25        2/22/11
``````

Is it possible in R to take the difference between the previous consecutive day (and only the previous day, not the previous result) evening value of 1 row and the morning value of a different row for each user group? So my desired results would be this.

``````   df
Row# User    Morning     Evening     Date        Difference
1       1      NA          NA        2/18/11        NA
2       1      50          115       2/19/11        NA
3       1      85          129       2/20/11        30
4       1      62          NA        2/25/11        NA
5       1      48          100.8     3/8/11         NA
6       1      19          71        3/9/11         81.8
7       1      25          98        3/10/11        46
8       1      10          105       3/11/11        88
9       2      48          105       2/18/11        NA
10      2      28          203       2/19/11        77
11      2      35          80.99     2/21/11        NA
12      2      91          78.25     2/22/11        -10.01
``````

All I want this to do is to take the morning value and subtract it from the evening value of the previous consecutive day for each user group. As you can see, some parts of my data frame contain NA values in the morning and evening columns, in addition, not all of the dates are in consecutive order for each different user, so naturally, NA should be assigned.

I've tried searching google but there wasn't much information on being able to apply functions to different rows for each group of rows on different columns (if that makes any sense).

My attempts include many variations of this.

``````df\$Difference<-ave((df\$Morning,df\$Evening),
df\$User,
FUN=function(x){
c('NA',diff(df\$Evening-df\$Morning)),na.rm=T
})
``````

Again, any help would be greatly appreciated. Thanks.

-
You really should note use `#` in your column names... –  juba Feb 26 '13 at 12:45

Note: The input data you show and the output data are not the same. There is a `NA` which is replaced by `10` in output and the last date is `2/14/11` in input and `2/22/11` in output.

I've assumed the output to be the original data to create this answer to match your result.

``````df\$Diff <- c(NA, head(df\$Evening, -1) - tail(df\$Morning, -1))
df\$Diff[which(c(0, diff(as.Date(as.character(df\$Measure_Date),
format="%m/%d/%Y"))) != 1)] <- NA

> df

#    Row User Morning Evening Measure_Date   Diff
# 1    1    1      NA      NA      2/18/11     NA
# 2    2    1      50  115.00      2/19/11     NA
# 3    3    1      85  128.00      2/20/11  30.00
# 4    4    1      62      NA      2/25/11     NA
# 5    5    1      48  100.80       3/8/11     NA
# 6    6    1      19   71.00       3/9/11  81.80
# 7    7    1      25   98.00      3/10/11  46.00
# 8    8    1      10  105.00      3/11/11  88.00
# 9    9    2      48  105.00      2/18/11     NA
# 10  10    2      28  203.00      2/19/11  77.00
# 11  11    2      35   80.99      2/21/11     NA
# 12  12    2      91   78.25      2/22/11 -10.01
``````

@user1342086's edit (that got rejected, but was right indeed):

``````df\$Diff[which(diff(df\$User) != 0)] <- NA
``````

seems to take care of the grouping by "User".

-
Good catch, I think I just fixed it. But yeah, I was modifying it to match to cover specific scenarios. But thanks, I'll try this solution tomorrow. –  user1342086 Feb 26 '13 at 13:19
Consider that this will only work if the dates are always in chronological order for each user, and that the data of each user is in consecutive rows. –  Oscar de León Feb 26 '13 at 13:38
As @Geektrader mentions, this doesn't take care of `User` group as well. I'll provide a modified solution later. Oscar, while it is true, a `order` on columns `User` and `Measure_Date` will be much more simpler. –  Arun Feb 26 '13 at 13:42
@user1342086, your edit dint seem to get through the peer-review process. I guess you added `df\$Diff[which(diff(df\$User) != 0)] <- NA` after the first line, right? I've reflected it in my post. If you've any suggestions (or if I did it wrong), let me know and I'll make the edit. I am not able to look at the code now. –  Arun Mar 12 '13 at 13:43

A blind first shot (untested). Relies on the data frame being already sorted by User and Date.

``````#if necessary, transform your dates from factor to Date
df\$Date <- as.Date(levels(df\$Date)[df\$Date],format="%m/%d/%y")

df <- within(df,
Difference <- ifelse(c(NA,diff(Measure_Date)) == 1 & diff(User) == 0,
)
)
``````
-
(+1) This is neat. OP will have to replace `diff(Date)` with `diff(as.Date(as.character(Measure_Date), format="%m/%d/%Y"))` because it is loaded as a `factor`. –  Arun Feb 26 '13 at 13:03
Thanks, I'll try this solution tomorrow. –  user1342086 Feb 26 '13 at 13:19
Along with diff(Date) == 1 you need to also check diff(User) == 0 –  Chinmay Patil Feb 26 '13 at 13:31

I used `plyr`, so be sure you have it installed. This solution should work even if user data are mixed (i.e. not in consecutive rows) and dates are not in chronological order.

``````# Your example data, as you should post it for us to use
df <-
structure(list(User = c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 2L, 2L,
2L, 2L), Morning = c(NA, 50L, 85L, 62L, 48L, 19L, 25L, NA, 48L,
28L, 35L, 91L), Evening = c(NA, 115, 128, NA, 100.8, 71, 98,
105, 105, 203, 80.99, 78.25), Measure_Date = structure(c(1L,
2L, 3L, 5L, 9L, 10L, 6L, 7L, 1L, 2L, 4L, 8L), .Label = c("2/18/11",
"2/19/11", "2/20/11", "2/21/11", "2/25/11", "3/10/11", "3/11/11",
"3/14/11", "3/8/11", "3/9/11"), class = "factor")), .Names = c("User",
"Morning", "Evening", "Measure_Date"), class = "data.frame", row.names = c(NA,
-12L))

# As already stated by Arun, you need the date as class Date
df\$Measure_Date <- as.Date(df\$Measure_Date, format='%m/%d/%y')

# Use plyr to procces the dataframe by user
library(package=plyr)
ddply(.data=df, .variables='User',
.fun=function(x){
# Complete sequence of dates for each user
tdf <- data.frame(Measure_Date=seq(from=min(x\$Measure_Date),
to=max(x\$Measure_Date),
by='1 day'))

# Merge to fill in NAs for unused dates
tdf <- merge(tdf, x, all=TRUE)

# Put desired values side by side
tdf\$Evening <- c(NA, tdf\$Evening[-length(tdf\$Evening)])

# Diference
tdf\$Difference  <- tdf\$Evening - tdf\$Morning

# Return desired value to original data
tdf <- tdf[,c('Measure_Date', 'Difference')]
x <- merge(x, tdf)
x
})
``````
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