Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm having some issues trying to understand what a non-boolean search (if that makes sense) is. As far as I've figured out, a boolean search allows the use of AND, OR and NOT in the query. But what about the non-boolean search? I've read somewhere that that means you can search substrings, not just complete words, but I wanted to make sure I fully understand what each of one means. Also, maybe an example would help, like, is Google boolean or non-boolean? What about Oracle Text or Apahe Solr?

share|improve this question

1 Answer 1

up vote 2 down vote accepted

Non boolean search includes approaches that are not purely boolean model techniques1.

Probably the most common example of such a method is the vector-space model.
In this model, each document is a vector, represented by the words (or bi-grams,...) it contains. The dimension of each document is the number of terms in the vocabulary.

The similarity in this model is done by creating a 'fake' document - which is the query, and comparing this fake document to any other document in the corpus. The more similar the document is to the query - the better the result is.

A common similarity measure is cosine-similarity.
This model goes well with the tf-idf model (The td-idf determines what is the value in each entry of each vector).

Note that this is NOT boolean model. You do not oporate on 'sets', you compare similarity of vectors - this is entirely different model.
In addition, this method has an important advantage - it returns a score associated to each document, and not only a boolean answer "relevant" or "not relevant".

As-is vector-space does not allow AND,OR oporations, however this is easily solveable by doing 2-phase search. The first is using a boolean model to get candidates, and the 2nd is using vector-space to get a score for each document.

Other models are building a language model out of a document - a language model is described as P(word|M) = the probability of the model M to generate the word.

A common language model is P(word|document) = #occurances(word,document)/|document|
To avoid having probability zero - we usually add smoothing technique. a common technique is:

P(word|document) =  alpha*#occurances(word,document)/|document| + (1-alpha)*#occurances(word,corpus)/|corpus|

Now - when we have a query of more than one term: q=t1 t2 ... tn, we calculate:

P(q|d) = P(t1|d)*P(t2|d)*...*P(tn|d)

Note that this model actually allows AND semantics by setting alpha=1, and OR semantics by alpha!=1.

(1) Boolean search is basically set terminology:

Each term is associated with a set that contains all the documents that have this term in them. Now, you simply do set oporations on bunch of sets. AND is intersection, OR is union.

share|improve this answer
Thanks, think I have it clearer now. So, would it be right to simplify it by saying that a non-boolean search sort of counts how many times a given term is found inside a document to see how relevant it is to the search? –  carcaret Feb 27 '14 at 15:09
@carcaret Usually yes, but it doesn't have to be the case. Once can use vector-space model with binary vectors. I personally see no benefit to it (as it is less informative than the alternative) - but it is possible. –  amit Feb 27 '14 at 15:43

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.