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I have a large data set

 dim(dt)
 [1] 422096    162

where dt is a data.table with a key of tic. I am trying to make a measure for each group of how many missing entries I have. The groups are time series, and dt contains a date column, which is an R date, and a book_lev column, my variable of interest.

This is my code so far:

dt <- dt[sumdt]
sumdt <- dt[ ,list(min.date=min(date), max.date=max(date)), by="tic"]

sublengths <- dt[,list(tslen=length(date)),by=tic, mult="last"]
bt2 <- dt[sublengths, mult="first"]
bt2[, max.year:=extractyear(max.date)]
bt2[, min.year:=extractyear(min.date)]
bt2[, data.fullness:=tslen/(max.year - min.year + 1)]

dt <- dt[bt2]

My idea was that I create this data.fullness value which should equal 1 if there are no holes in the time series. I realize that I may have some NA's in my book_lev column, so I would like to further restrict. Also, in general I am new to data.tables and I would like to see if there are better ways to write what I have just written.

A small sample of the data, which you can load using R's load command, is available here: http://econsteve.com/r/dt_sample.Robj

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Could you post a subset of your data (e.g. containing a half a dozen rows from a couple of years, and maybe 4 or 5 columns)? You'll get a better answer that way, and save us some mental energy. Also, I don't see the bl2 column referenced in your code. Should it be? –  Josh O'Brien Dec 14 '11 at 0:06
    
@Josh A subset of the data is in the following R object. econsteve.com/r/dt_sample.Robj –  stevejb Dec 14 '11 at 3:10
    
@JoshO'Brien I did not reference the bl2 column. It should actually be book_lev. I am making the edit in the original post. Thanks so much for the help. –  stevejb Dec 14 '11 at 3:11
    
Only time for a quick hint ... create your time series vector from first to last date, say daily, called ts then something like dt[CJ(unique(tic),ts), sum(is.na(book_lev)), by=tic]. See ?CJ. Then maybe add roll=TRUE to join to the prevailing observation. –  Matt Dowle Dec 14 '11 at 10:36
    
@stevejb -- First, thanks for adding a link to the data. If you change its suffix from .Robj to .Rdata, most GUI-using folks will be able to open it by simply double-clicking on the downloaded object. Second, do let me know if I'm missing some impt. piece of your question in my answer below. –  Josh O'Brien Dec 16 '11 at 2:52
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2 Answers 2

up vote 1 down vote accepted
+100

(First, a caveat. I'm not sure I correctly understood what you want your data.fullness variable to summarize. Based on the dataset you've linked to, I'm taking it to be the proportion of years with some data, in the interval from the first measured year to the last measured year.)

Here is the approach I'd take to the problem as I do understand it:

## FIRST, DEFINE A COUPLE OF FUNCTIONS

extractYear <- function(X) {
    as.numeric(format(as.Date(X, format="%m/%d/%Y"), "%Y"))
}

calcFullness <- function(YRS) {
    length(unique(YRS))/(diff(range(YRS))+1)
}

## THEN SET TO WORK ON YOUR DATA.TABLE

key(dt) <- "tic"
dt[, year:=extractYear(datadate)]

# Extract summaries for each level of tic
ticSumm <- 
    dt[, list(min.year = min(year),
              max.year = max(year),
              data.fullness = calcFullness(year)), by=tic]
ticSumm
#       tic min.year max.year data.fullness
# [1,] AMZN     1995     2010             1
# [2,]   GM     1950     2010             1
# [3,]  XOM     1950     2010             1


# Merge summary back into dt
dt <- dt[ticSumm]
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thank you for the answer. I am trying this now. I think you got it. Thanks so much for answering the question. If it works I'll accept and you get the points bounty. –  stevejb Dec 18 '11 at 4:48
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If you have a rectangular data frame and would like to restrict to complete observations, you can create a vector of booleans indicating fully observed rows of data with the complete.cases function. This is assuming you have cleaned data and consistent formatting of missing values using R's NA.

This boolean vector can be used to subset the value directly, or using the subset function.

It's not clear to me from your problem description or sample code how the dt object is formatted, but you may need to use some combination of loops to successfully get 2 dimensional slices of your data where complete.cases can be applied.

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I think that very few of my observations are truly "complete". I would like to select the ones that are a given percentage complete. Thanks anyway. –  stevejb Dec 13 '11 at 23:57
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