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I have a matrix 'mat' with two rows of the following form:

mat:

1  0
1  2
1  3
1  5
1  9 
1  4
1  7
1  11
1  8
2  3
2  4
2  2
3  9
3  0
4  0
5  0
5  13
6  22
6  0

I define a variale called 'neg' which only includes the number 0.

neg <- 0

I would like to select those elements in the first column of the matrix that have ONLY 'neg' in their second column.

So instead of saying mat[mat[,1]%in%0,1] which would select every number in the first row that has at least one 0 in the second, I would like to get only those that have ONLY 0, in this example only 4 would be selected.

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2 Answers 2

up vote 3 down vote accepted

I would use plyr for this. But first read your data:

dat = read.csv(textConnection("1  0
1  2
1  3
1  5
1  9 
1  4
1  7
1  11
1  8
2  3
2  4
2  2
3  9
3  0
4  0
5  0
5  13
6  22
6  0"), header = FALSE, sep = "")

And after loading plyr, I want to find the unique categories in V1 which have only values equal to neg in column V2, resulting in a list: true_values.

require(plyr)
neg = 0
test = ddply(dat, .(V1), summarise, bool = all(V2 == neg))
>     test
  V1  bool
1  1 FALSE                                                                  
2  2 FALSE                                                                  
3  3 FALSE                                                                  
4  4  TRUE                                                                  
5  5 FALSE                                                                  
6  6 FALSE 
true_values = test[["V1"]][test[["bool"]]]
> true_values
[1] 4

Once we have this list, we can subset the original dataset:

> dat[dat[["V1"]] %in% true_values,]
   V1 V2
15  4  0

Or alternatively, we could generate a boolean vector directly specifying which elements to select from dat:

test = ddply(dat, .(V1), mutate, bool = all(V2 == neg))

...and perform the subset:

> dat[test[["bool"]],]
   V1 V2
15  4  0 
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this doesn't work when neg has more than one value –  user1723765 Jan 10 '13 at 11:05
    
Which was also not specified in your question. Add more detail if you need a more specific answer. –  Paul Hiemstra Jan 10 '13 at 11:07
    
well neg can be a vector say neg=0,1,3,5,7 then I would like to test for all values of neg –  user1723765 Jan 10 '13 at 11:09
4  
then just replace V2 == neg with V2 %in% neg. (If you needed neg to be a vector why give neg = 0 as an example...) –  flodel Jan 10 '13 at 11:43

this works only for your specific case, but you could use tapply:

as.numeric(names(which(tapply(a[,2],a[,1],sum)==0)))

If you think of the first column as factors, then tapply computes the sum in the second column for each level of the factor in the first.

and for the multiple value case, something like this -- admittedly ugly -- should work:

as.numeric(names(which(tapply(dat[,2],dat[,1],FUN=function(x){all(unique(x)%in%neg & length(x)==length(neg))}))))
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