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I have a data frame set up with one column as a factor with several levels. I'd like to extract rows that do not have a unique value for that column (i.e. the level is present in multiple rows).

So for some simple test data:

factor dat1 dat2 dat3
     a  1.0  1.0  1.0
     a  1.0  0.9  1.0
     b  0.9  0.8  0.6
     c  0.9  1.0  0.0

I'd like to retain only the first two rows. What is the best way to do this? Preferrably I'd like to make more general queries, i.e. extract rows for levels of the factor present in at least 3 rows, exactly 2 rows, etc.

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3 Answers 3

up vote 3 down vote accepted

Here's a solution with table (assuming the data frame's name is df):

nRows <- 2 # minimum number of occurrences

tab <- table(df$factor) # count

df[df$factor %in% names(tab)[tab >= nRows], ] # extract rows

If you want to use an exact criterion instead, change >= to ==.

The result:

  factor dat1 dat2 dat3
1      a    1  1.0    1
2      a    1  0.9    1
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Thanks! I'd only gotten as far as table() –  wds Jan 21 '13 at 13:59

For these types of problems, I like to use ave() to generate a vector of the same length as the number of rows in my dataset to match against. I find it a little bit more direct than having to refer to names() as is required with the table() approach:

## Your data
mydf <- read.table(header = TRUE, 
          stringsAsFactors = FALSE, 
          text = "factor dat1 dat2 dat3
                  a  1.0  1.0  1.0
                  a  1.0  0.9  1.0
                  b  0.9  0.8  0.6
                  c  0.9  1.0  0.0")

## Your vector to match against
factorlengths <- ave(as.numeric(mydf$factor), 
                     mydf$factor, FUN = length)
factorlengths
# [1] 2 2 1 1

## The subsetting
mydf[factorlengths > 1, ]
#   factor dat1 dat2 dat3
# 1      a    1  1.0    1
# 2      a    1  0.9    1
mydf[factorlengths == 1, ]
#   factor dat1 dat2 dat3
# 3      b  0.9  0.8  0.6
# 4      c  0.9  1.0  0.0

If the values of mydf$factor are actually factors, you'll have to use ave(as.numeric(as.character(mydf$factor... instead.

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Here's a different approach for your consideration:

mydf <- data.frame(fac = c("a", "a", "b", "c", "d", "d", "e"),
dat1 = rnorm(7), dat2 = rnorm(7), dat3 = rnorm(7))

library("plyr")

cts <- count(mydf, vars = "fac")
keep <- as.character(subset(cts, freq > 1)$fac)
keep2 <- mydf$fac %in% keep
mydf2 <- mydf[keep2,]

Which converts:

  fac        dat1       dat2       dat3
1   a  0.83565861  0.2293744 -1.2932864
2   a -0.05509087  0.1995655 -1.7961443
3   b -0.82794260  1.6314641 -0.3622872
4   c  0.13907037 -0.4560306 -0.3751849
5   d -0.30057042  0.8347340  0.4798789
6   d -1.15576099 -0.5945094 -0.3124572
7   e  1.17671034  0.1453544 -2.6906382

to:

  fac        dat1       dat2       dat3
1   a  0.83565861  0.2293744 -1.2932864
2   a -0.05509087  0.1995655 -1.7961443
5   d -0.30057042  0.8347340  0.4798789
6   d -1.15576099 -0.5945094 -0.3124572

I thought there might be a one-liner using duplicated but that doesn't quite return what is needed in this case.

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