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How do I select the first row of an R data frame that meets certain criteria?

Here is the context:

I have a data frame with five columns:

"pixel", "year","propvar", "component", "cumsum." 

There are 1,225 combinations of pixel and year, because the data was computed from the annual time series of 49 geographic pixels for each of 25 study years. Within each pixel-year, I have computed propvar, the proportion of total variance explained by a given component of the fast Fourier transform for the time series of a given pixel-year. I then computed cumsum, which is the cumulative sum of propvar for each frequency component within a pixel-year. The component column just gives you an index for the Fourier series component (plus 1) from which propvar was calculated.

I want to determine the number of components required to explain greater than 99% of the variance. I figure one way to do this is to find the first row within each pixel-year where cumsum > 0.99, and create a data frame from it with three columns, pixel, year, and numbercomps, where numbercomps is the number of components required within a given pixel-year to explain greater than 99% of the variance. I do not know how to do this in R. Does anyone have a solution?

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1 Answer 1

up vote 16 down vote accepted

Sure. Something like this should do the trick:

# CREATE A REPRODUCIBLE EXAMPLE!
df <- data.frame(year = c("2001", "2003", "2001", "2003", "2003"),
                 pixel = c("a", "b", "a", "b", "a"), 
                 cumsum = c(99, 99, 98, 99, 99),
                 numbercomps=1:5)
df
#   year pixel cumsum numbercomps
# 1 2001     a     99           1
# 2 2003     b     99           2 
# 3 2001     a     98           3
# 4 2003     b     99           4
# 5 2003     a     99           5

# EXTRACT THE SUBSET YOU'D LIKE.
res <- subset(df, cumsum>=99)
res <- subset(res, 
              subset = !duplicated(res[c("year", "pixel")]),
              select = c("pixel", "year", "numbercomps"))
#   pixel year numbercomps
# 1     a 2001           1
# 2     b 2003           2
# 5     a 2003           5

EDIT Also, for those interested in data.table, there is this:

library(data.table)
dt <- data.table(df, key="pixel, year")    
dt[cumsum>=99, .SD[1], by=key(dt)]
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2  
Holy crap. Now I know why you have racked up 2,157 points in only 43 days of StackOverflow membership. Thanks, man! I have this response in the StackOverflow folder of my email client. I will acknowledge you in whatever publications result from this assistance. I LOVE the duplicated function, BTW. It is like...exactly what I needed. (BTW, the publications would, of course, result from much more work than this particular issue, LOL.) Have a good night. –  Brash Equilibrium Nov 16 '11 at 2:24
    
Cool. Do send me a copy of whatever pub comes of the project (though no acknowlegement necessary of course)! –  Josh O'Brien Nov 16 '11 at 2:29
    
Will do! And I have checked your answer. Thanks again. –  Brash Equilibrium Nov 16 '11 at 3:45
    
good to see happy people on stackoverflow :) –  Paul Hiemstra Dec 13 '11 at 22:28
    
@PaulHiemstra -- Right on. Thanks for bringing me back here, as that's gotta be one of the funnest comments I've seen in my time on SO. Made me smile then; makes me smile now. (And Brash -- don't forget to send me that publication/manuscript when you've got it!) –  Josh O'Brien Dec 13 '11 at 22:35

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