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# Transform a data.frame, while filling missing values

I have the data frame

``````data<-data.frame(id=c("A","A","B","B"), day=c(5,6,1,2), duration=c(12,1440,5,6), obs.period=c(60, 60,100,100))
``````

showing Subject ID, day of event, duration of event, and observation period of Subject

I want to transform the data set to that it will show the whole observation period for each subject (all days of observation), while adding zero as duration values for the days where no event was observed

For the above dataset this would be something like this:

``````id  day duration    obs.period
A   1   0   60
A   2   0   60
A   3   0   60
A   4   0   60
A   5   12  60
A   6   1440    60
A   7   0   60
A   8   0   60
.
.
.
A   60  0   60
B   1   5   100
B   2   6   100
B   3   0   100
B   4   0   100
.
.
.
.
B   100 0   100
``````

Any ideas?

-

Here's one approach using the `plyr` package. First, create a function to expand the data into the appropriate number of rows. Then, index into that new data.frame with the duration info from the original data. Finally, call this function with `ddply()` and group on the id variable.

``````require(plyr)
FUN <- function(x){
dat <- data.frame(
id = x[1,1]
, day = seq_len(x[1,4])
, duration = 0
, obs.period = x[1,4]
)

dat[dat\$id == x\$id & dat\$day == x\$day, "duration"] <- x\$duration
return(dat)
}

ddply(data, "id", FUN)

id day duration obs.period
1    A   1        0         60
2    A   2        0         60
3    A   3        0         60
4    A   4        0         60
5    A   5       12         60
6    A   6     1440         60
...
61   B   1        5        100
62   B   2        6        100
63   B   3        0        100
...
160  B 100        0        100
``````
-

Create an empty data frame with the proper index columns, but no value columns, then merge it with your data and replace the NA's in the value columns with zeros.

``````data<-data.frame(id=c("A","A","B","B"), day=c(5,6,1,2), duration=c(12,1440,5,6), obs.period=c(60, 60,100,100))
zilch=data.frame(id=rep(c("A","B"),each=60),day=1:60)
all=merge(zilch,data, all=T)
all[is.na(all\$duration),"duration"]<-0
all[is.na(all\$obs.period),"obs.period"]<-0
``````
-

I would first create a data frame to contain the results.

``````ob.period <- with(data, tapply(obs.period, id, max))

n <- sum(ob.period)
result <- data.frame(id=rep(names(ob.period), ob.period),
day=unlist(lapply(ob.period, function(a) 1:a)),
duration=rep(0, n),
obs.period=rep(ob.period,ob.period))
``````

Then I would paste `id` and `day` together, use `match` to find the relevant rows in the larger data frame, and plug in the duration values.

``````idday.sm <- paste(data\$id, data\$day, sep=":")
idday.lg <- paste(result\$id, result\$day, sep=":")

result\$duration[match(idday.sm, idday.lg)] <- data\$duration
``````
-

Here is an approach with `plyr`

``````fill1 <- function(df) {
full_period <- 1:100
to_fill <- setdiff(full_period, df\$day)
fill_id <- df[1,"id"]
fill_dur <- 0
fill_obs.p <- df[1,"obs.period"]
rows_to_add <- data.frame(id=fill_id, day=to_fill, duration=fill_dur, obs.period=fill_obs.p)