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I have a txt file (data5.txt):

1   0   1   0   0

1   1   1   0   0

0   0   1   0   0

1   1   1   0   1

0   0   0   0   1

0   0   1   1   1

1   0   0   0   0

1   1   1   1   1

0   1   0   0   1

1   1   0   0   0

I need to count the frequency of one's and zero's in each column

if the frequency of ones >= frequency of zero's then I will print 1 after the last row for that Colum

I'm new in R, but I tried this, and I got error:

Error in if (z >= d) data[n, i] = 1 else data[n, i] = 0 : 

  missing value where TRUE/FALSE needed

my code:

data<-read.table("data5.txt", sep="")

m =length(data)

d=length(data[,1])/2

n=length(data[,1])+1

for(i in 1:m)
{

    z=sum(data[,i])

    if (z>=d) data[n,i]=1 else data[n,i]=0
}
share|improve this question
    
+1 for providing a minimal, reproducible example, the code you have tried and what went wrong in your first question on SO. Cheers! –  Henrik Nov 10 '13 at 10:50
    
Howver, as you see in the comments following my answer, you can try to be even more explicit about your desired output next time. Well, everything that makes it easier to answer your question will increase the chance that you receive a rapid, helpful answer. And I will promise to read more carefully...;) Thanks! –  Henrik Nov 10 '13 at 11:12
    
I'm so grateful, thanks a lot sir. I’m really sorry, for not being clear; English is not my first language, and I tried my best. What do you mean by my first question? You mean this: stackoverflow.com/questions/19848676/… Actually, this was a different question. I was asking for clustering some transactions (data mining: clustering + association rules mining) . –  Meem Nov 10 '13 at 23:14
    
For example, I have several transactions (each row represents transaction): <br/> 1,2,5,8 <br/> 1,3,5,9 <br/> 2,5,9,11 <br/> 2,4,5,8 <br/> 2,4,5,9 <br/> So, what I did is: I applied clustering method (I used: pam), where the number of clusters =2, and the similarity function is jaccard. After clustering: I got in txt file: <br/> “x” <br/> “1” 1 <br/> “2” 1 <br/> “3” 2 <br/> “4” 2 <br/> “5” 2 <br/> Which means: the 1st , and 2nd transactions are in cluster number 1, where the 3rd, 4th, and 5th transactions are in cluster 2 –  Meem Nov 10 '13 at 23:22
    
But I want to save the itemsets (item on each transaction) within its cluster in txt file. I mean I want the output file like: <br/> C1, 1,2,5,8 <br/> C1, 1,3,5,9 <br/> C2, 2,5,9,11 <br/> C2, 2,4,5,8 <br/> C2, 2,4,5,9 <br/> –  Meem Nov 10 '13 at 23:24
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1 Answer 1

up vote 2 down vote accepted

You may try this:

rbind(df, ifelse(colSums(df == 1) >= colSums(df == 0), 1, NA))
#    V1 V2 V3 V4 V5
# 1   1  0  1  0  0
# 2   1  1  1  0  0
# 3   0  0  1  0  0
# 4   1  1  1  0  1
# 5   0  0  0  0  1
# 6   0  0  1  1  1
# 7   1  0  0  0  0
# 8   1  1  1  1  1
# 9   0  1  0  0  1
# 10  1  1  0  0  0
# 11  1  1  1 NA  1

Update, thanks to a nice suggestion from @Arun:

rbind(df, ifelse(colSums(df == 1) >= ceiling(nrow(df)/2), 1, NA)

or even:

rbind(df, ifelse(colSums(df == 1) >= nrow(df)/2, 1, NA)

Thanks to @SvenHohenstein.

Possibly I misinterpreted your intended results. If you want 0 when frequency of ones is not equal or larger than frequency of zero, then this suffice:

rbind(df, colSums(df) >= nrow(df) / 2)

Again, thanks to @SvenHohenstein for his useful comments!

share|improve this answer
    
@Arun, thanks a lot for your suggetion. I was thinking along these lines to start with... I add it to my answer. Cheers! –  Henrik Nov 10 '13 at 10:52
1  
@Arun You don't need ceiling here. –  Sven Hohenstein Nov 10 '13 at 10:52
2  
If I understand the OP correctly, the generated values should be 0 and 1, not NA. Hence, rbind(dat, colSums(dat) >= nrow(dat) / 2) is sufficient. –  Sven Hohenstein Nov 10 '13 at 10:55
    
@SvenHohenstein, I only read the then I will print 1, but looking at the else statement you are probably right. Cheers. –  Henrik Nov 10 '13 at 10:59
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