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Using R, I'm trying to trim NA values from the start and end of a data frame that contains multiple time series. I have achieved my goal using a for loop and the zoo package, but as expected it is extremely inefficient on large data frames.

My data frame look like this and contains 3 columns with each time series identified by it's unique id. In this case AAA, B and CCC.

id   date          value
AAA  2010/01/01    NA
AAA  2010/02/01    34
AAA  2010/03/01    35
AAA  2010/04/01    30
AAA  2010/05/01    NA
AAA  2010/06/01    28
B    2010/01/01    NA
B    2010/02/01    0
B    2010/03/01    1
B    2010/04/01    2
B    2010/05/01    3
B    2010/06/01    NA
B    2010/07/01    NA
B    2010/07/01    NA
CCC  2010/01/01    0
CCC  2010/02/01    400
CCC  2010/03/01    300
CCC  2010/04/01    200
CCC  2010/05/01    NA

I would like to know, how can I efficiently remove the NA values from the start and end of each time series, in this case AAA, B and CCC. So it should look like this.

id   date          value
AAA  2010/02/01    34
AAA  2010/03/01    35
AAA  2010/04/01    30
AAA  2010/05/01    NA
AAA  2010/06/01    28
B    2010/02/01    0
B    2010/03/01    1
B    2010/04/01    2
B    2010/05/01    3
CCC  2010/01/01    0
CCC  2010/02/01    400
CCC  2010/03/01    300
CCC  2010/04/01    200
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What have you tried? –  Andrie May 30 '12 at 7:05
    
I have identified the unique id's (60,000 of them) Then used a for loop to loop through them, each time then creating a subset for the code and creating a zoo object Then using zoo packages trim function to strip leading and trailing missing values Then rbinding each to a new data frame that will contain the trimmed time series data in the end. As expected, this is very ineficient. –  sizeight May 30 '12 at 7:11

2 Answers 2

up vote 7 down vote accepted

I would do it like this, which should be very fast :

require(data.table)
DT = as.data.table(your data)   # please provide something pastable

DT2 = DT[!is.na(value)]
setkey(DT,id,date)
setkey(DT2,id,date)
tokeep = DT2[DT,!is.na(value),rolltolast=TRUE,mult="last"]
DT = DT[tokeep]

This works by rolling forward the prevailing non-NA, but not past the last one, within each group.

The mult="last" is optional. It should speed it up if v1.8.0 (on CRAN) is used. Interested in timings with and without it. By default data.table joins to groups (mult="all"), but in this case we're joining to all columns of the key, and, we know the key is unique; i.e., no dups in key. In v1.8.1 (in dev) there isn't a need to know about this and it looks after you more.

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I was preparing an answer with data.table, too, but it's good that Matthew beat me to it. However, one alternative would be to use the na.trim function from the zoo package. Something like DT[, na.trim(.SD), by = id, since that function accepts objects other than zoo objects. –  BenBarnes May 30 '12 at 10:07
    
@BenBarnes Sounds good, and shorter. Interesting to see which is faster. –  Matt Dowle May 30 '12 at 10:26
    
@Matthew Dowle Works perfectly and extremely fast. Does exactly what I was interested in and I can prove to the die hard SAS coders at my office once again that R is a viable alternative. I think this executed way faster that their SAS alternative. –  sizeight May 30 '12 at 11:59
    
@BenBarnes I'm going to look into your suggestion about using na.trim as well. –  sizeight May 30 '12 at 12:00
    
@sizeight, Matthew's answer is much faster than mine (especially with a large amount of data). Trust the person who made the tools to know how to use them best! –  BenBarnes May 30 '12 at 12:56

If your data is in data frame data

fun <- function(x)
{
    x$value[is.na(x$value)] <- "NA"
    tmp <- rle(x$value)
    values <- tmp$values
    lengths <- tmp$lengths
    n <- length(values)

    nr <- nrow(x)
    id <- c()
    if(values[1] == "NA") id <- c(id, 1:lengths[1])
    if(values[n] == "NA") id <- c(id, (nr-lengths[n]+1):nr)
    if(length(id) == 0)return(x)
    x[-id,]
}

do.call(rbind,
        by(data, INDICES=data$id,
           FUN=fun))

Not the most elegant solution I guess. In the mood of this post.

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