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I have a problem to solve how to remove rows with a Zero value in R. In others hand, i can use na.omit() to delete all the NA values or use complete.cases() to delete rows that contains NA values.

Is there anyone know how to remove rows with a Zero Values in R?

For example :

Before

|    DateTime      | Mac1  | Mac2  | Mac3  | Mac4  |
----------------------------------------------------
| 2011-04-02 06:00 | 20    | 0     | 20    | 20    |  
| 2011-04-02 06:05 | 21    | 21    | 21    | 21    |  
| 2011-04-02 06:10 | 22    | 22    | 22    | 22    |  
| 2011-04-02 06:15 | 23    | 23    | 0     | 23    |  
| 2011-04-02 06:20 | 24    | 24    | 24    | 24    | 
| 2011-04-02 06:25 | 0     | 25    | 25    | 0     | 

After

|    DateTime      | Mac1  | Mac2  | Mac3  | Mac4  |
----------------------------------------------------
| 2011-04-02 06:05 | 21    | 21    | 21    | 21    |  
| 2011-04-02 06:10 | 22    | 22    | 22    | 22    |  
| 2011-04-02 06:20 | 24    | 24    | 24    | 24    |  

Thanks before for your help...

Regards,

Yougyz

share|improve this question
    
One route: reduce this to a problem you've already solved by replacing the zeros with NAs. –  joran Apr 2 '12 at 13:55
    
Thanks Joran, for your reply.. But, i dont understand, what mean of replacing the zeros with NAs? Because before i get the table i have deleted NAs values before. But there is still 0's values. Could you tell me how to do it? –  YougyZ Apr 2 '12 at 14:01
    
Ok i think i must use this code to replace 0 with NAs.. data[which(data==0)] = NA –  YougyZ Apr 2 '12 at 14:04

3 Answers 3

up vote 9 down vote accepted

There are a few different ways of doing this. I prefer using apply, since it's easily extendable:

##Generate some data
dd = data.frame(a = 1:4, b= 1:0, c=0:3)

##Go through each row and determine if a value is zero
row_sub = apply(dd, 1, function(row) all(row !=0 ))
##Subset as usual
dd[row_sub,]
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2  
@YougyZ Then you should probably post a reproducible example. –  Dason Apr 2 '12 at 14:22

I would probably go with Joran's suggestion of replacing 0's with NAs and then using the built in functions you mentioned. If you can't/don't want to do that, one approach is to use any() to find rows that contain 0's and subset those out:

set.seed(42)
#Fake data
x <- data.frame(a = sample(0:2, 5, TRUE), b = sample(0:2, 5, TRUE))
> x
  a b
1 2 1
2 2 2
3 0 0
4 2 1
5 1 2
#Subset out any rows with a 0 in them
#Note the negation with ! around the apply function
x[!(apply(x, 1, function(y) any(y == 0))),]
  a b
1 2 1
2 2 2
4 2 1
5 1 2

To implement Joran's method, something like this should get you started:

x[x==0] <- NA
share|improve this answer
    
thanks anyway, but i have done it with csgillespie solution.. ;) –  YougyZ Apr 2 '12 at 14:26

Well, you could swap your 0's for NA and then use one of those solutions, but for sake of a difference, you could notice that a number will only have a finite logarithm if it is greater than 0, so that rowSums of the log will only be finite if there are no zeros in a row.

dfr[is.finite(rowSums(log(dfr[-1]))),]
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1  
+1 for clever, but I would certainly prefer an all/any solution in practice ... –  Ben Bolker Apr 2 '12 at 14:44

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