Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

In R, I am trying to use the apriori function for Association Rule Learning.

I have a data set like this:

A B C D E 

1 0 0 1 0

1 0 1 0 1

1 1 1 0 1

0 0 0 1 0

I am interested in cases where E = 1, which I can get by doing:

inspect( subset( rules.sorted, subset = rhs %pin% "E=1" ))

But I am also interested in cases only where the LHS contains '=1' conditions and not '=0'.

So, I don't want rules like:

{A=1,D=0} => {E=1}

I just want rules like

{A=1,C=1} => {E=1}

How can I achieve this in the LHS side? I could only gather how to constraint it to look for rules in specific column(s), but not for any column with specific value.

share|improve this question

2 Answers 2

up vote 0 down vote accepted

I had the same problem. The issue arises when you convert your data to a factor (like a couple people mentioned in the comments to another answer). When I converted my data.frame to a matrix and then to transactions, I had positive rules only in the output.

share|improve this answer
Thanks. I am trying that, but converting data frame to matrix would mean I lose all my variable names. How do you handle that? Because I have hundreds of variables. –  Dileep Feb 28 '14 at 20:13
Awesome. It worked like a charm. Thanks a ton :) –  Dileep Mar 3 '14 at 12:08

As you already noted, if you want E=1 on the right hand side, just filter your data.

By default, association rule mining should give you only positive rules, aka A => B.

Usually, if you wanted to have negative rules, you would have to add negated symbols to your data, i.e. ANOT=1 when A=0.

Are you sure that you aren't just misinterpreting the output?

share|improve this answer
Hi I do get negative rules as well, for example in the above case, something like: {D=0} => {E=1}. These '=0' parts on lhs are rules I would like to avoid. I am using apriori for first time but I read about it from different places. I never came across that association rules give only positive rules. Are you referring to the R function apriori? Or is it that the software/function you use excludes such negative rules by default? –  Dileep Feb 24 '14 at 22:24
Original APRIORI did not do that as far as I know. Have you checked options to your implementation? I don't use R, so I don't have the manual. It may also be part of the data transformation R does to produce itemsets... I.e. it doesn't treat "1" as present and "0" as not present, but "A=1" and "A=0" as two different items. –  Anony-Mousse Feb 24 '14 at 23:21
Yes, I checked the options. I couldn't find such an option to control the equality value. The function required my data to be of class factor. So, I too think R is treating the 0's and 1's as two different items. I never thought fixing that could fix my problem. I will try to fix it and see if it works. Thanks. –  Dileep Feb 25 '14 at 7:53
Consider using different software, too. I believe this is a good FIM software page: - I'm not a fan of R, quality varies too much. –  Anony-Mousse Feb 25 '14 at 8:43
That's a great link. Thanks. –  Dileep Feb 26 '14 at 6:22

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.