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I am trying to isolate those columns of a dataframe for which all observations have the same value (ignoring NAs). See below for a hypothetical example:

ForestName <- rep("Planige", 4)
TreeNumber <- c(1:4)
Height <- c(2.3, 2, 2.1, 2.9)
Type <- c("AA", "AA", NA, "AA")
df <- data.frame(ForestName, TreeNumber, Height, Type)

The new dataframe should contain ForestName and Type. The columns with unequal values (TreeNumber and Height) should be contained in another dataframe.

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3 Answers 3

You can use unique and check if this reduces to a single element:

df[sapply(df,function(x) length(unique(x[!is.na(x)])))==1]
  ForestName Type
1    Planige   AA
2    Planige   AA
3    Planige <NA>
4    Planige   AA

Or test that all elements are equal to the first non-NA:

df[sapply(df, function(x) all(x==na.omit(x)[1],na.rm=T))]
  ForestName Type
1    Planige   AA
2    Planige   AA
3    Planige <NA>
4    Planige   AA
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This works great, too. Thanks! –  Robert West Sep 21 '12 at 14:57

Among many other ways, I'm sure:

df[,sapply(df,function(x) {length(unique(x[!is.na(x)])) > 1})]

   TreeNumber Height
1          1    2.3
2          2    2.0
3          3    2.1
4          4    2.9

And you can negate the sapply expression to get the other columns.

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This works! Thanks! –  Robert West Sep 21 '12 at 14:57
@RobertWest please mark correct solutions as the accepted answer. –  Superbest Sep 25 '12 at 6:30

A slightly more compact approach using the same basic principle

 Filter(function(x){length(unique(x[!is.na(x)])) <=1}, df)
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