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I was attempting to subset rows from a data frame containing missing observations and encountered behavior I do not understand. I can select rows that meet certain criteria. However, I could not select rows that did not meet those same criteria when using !. Eventually I was able to exclude rows that did not meet the desired criteria by using -. Is there a way to exclude the desired rows with !?

Here is an example data set:

df = read.table(text = "
     state  county    var1.a  var2.a  var1.b  var2.b
        1       1       10       25      20      25
        1       2       20       15      20      15
        2       1       30       NA      40      25
        2       2       40       35      10      35
        3       1       20       45      10      NA
        3       2       20       55      20      55
        4       1       NA       65      NA      NA
        4       2       80       NA      30      NA
        5       1       NA       15      NA      15
        5       2       NA       15      NA      35
", na.strings = "NA", header = TRUE)

# 1. works, selects Rows 2, 6 and 9, rows in which columns 3 and 5 are the same and
# columns 4 and 6 are the same

df[ (which( ( ((df$var1.a == df$var1.b) | (is.na(df$var1.a) & is.na(df$var1.b))) & 
              ((df$var2.a == df$var2.b) | (is.na(df$var2.a) & is.na(df$var2.b))) ) , arr.ind=TRUE)),]

# 2. does not work when excluding Rows 2, 6 and 9, does not retain Row 7

df[ (which(!( ((df$var1.a == df$var1.b) | (is.na(df$var1.a) & is.na(df$var1.b))) & 
              ((df$var2.a == df$var2.b) | (is.na(df$var2.a) & is.na(df$var2.b))) ) , arr.ind=TRUE)),]

# 3. does not work, does not select any rows

df[!(which( ( ((df$var1.a == df$var1.b) | (is.na(df$var1.a) & is.na(df$var1.b))) & 
              ((df$var2.a == df$var2.b) | (is.na(df$var2.a) & is.na(df$var2.b))) ) , arr.ind=TRUE)),]

# 4. works, selects Rows 1,3,4,5,7,8,10

df[-(which( ( ((df$var1.a == df$var1.b) | (is.na(df$var1.a) & is.na(df$var1.b))) & 
              ((df$var2.a == df$var2.b) | (is.na(df$var2.a) & is.na(df$var2.b))) ) , arr.ind=TRUE)),]

The second which statement above does not select Row 7 because:

( ((df$var1.a == df$var1.b) | (is.na(df$var1.a) & is.na(df$var1.b))) & 
  ((df$var2.a == df$var2.b) | (is.na(df$var2.a) & is.na(df$var2.b))) )

returns:

# [1] FALSE  TRUE FALSE FALSE FALSE  TRUE    NA FALSE  TRUE FALSE

So, I guess I understand why ! does not work in that case; but I cannot figure out how to obtain:

# [1] FALSE  TRUE FALSE FALSE FALSE  TRUE FALSE FALSE  TRUE FALSE

How can I modify the second which statement to also return Row 7 in addition to Rows 1,3,4,5,8,10? The second which statement does work if there are no missing observations.

The third which statement does not work even if there are no missing observations. I know that - is used to remove rows or columns. And I know that ! is for logical comparisons. I guess the third which statement does not meet the requirements of a logical comparison, but the second which statement does.

Thank you for any advice. I suppose I can use the first which statement to select rows that meet the desired criteria and use the fourth which statement to select rows that do not meet the desired criteria. However, I would like to know how to select rows that do not meet the desired criteria by using !. I have searched extensively for the solution and cannot locate it. Sorry if this is a duplicate.

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2 Answers 2

up vote 2 down vote accepted

You're missing the situation where one is NA and the other is not; it should be FALSE then because it doesn't match, but you're getting an NA. Since this is the only situation when you're getting an NA, we could just check for it afterwards. Here's one way:

> ok1 <- ((df$var1.a == df$var1.b) | (is.na(df$var1.a) & is.na(df$var1.b)))
> ok2 <- ((df$var2.a == df$var2.b) | (is.na(df$var2.a) & is.na(df$var2.b)))
> ok.both <- ok1 & !is.na(ok1) & ok2 & !is.na(ok2)
> ok.both
[1] FALSE  TRUE FALSE FALSE FALSE  TRUE FALSE FALSE  TRUE FALSE

Also, it might be useful to make a new function to do this, something like this:

eqna <- function(a, b) {
  ok <- ((a == b) | (is.na(a) & is.na(b)))
  ok & !is.na(ok)
}

You'd use it this way:

> with(df, eqna(var1.a, var1.b) & eqna(var2.a, var2.b))
 [1] FALSE  TRUE FALSE FALSE FALSE  TRUE FALSE FALSE  TRUE FALSE
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With credit to hadley's comment to this answer: stackoverflow.com/a/14903764/210673 –  Aaron Feb 22 '13 at 21:58

I could be wrong here (writing from my phone) but it looks like the reason #2 is not working is just due to parenthesis.

The ! is only negating the first half of your clause. Try adding another set of parens right after the ! and closing it right before the comma.

Also, keep in mind that ! is simply inverting logical values. ie it swaps T/F, meanwhile leaving NA as NA.

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