There is a great work done by Shaul Markovitch and Evgeniy Gabrilovich, described in their article: Wikipedia-based Semantic Interpretation for Natural Language Processing.

The idea is as follows: Index wikipedia (or other context source).

Creating a mapping for each term (word): `term -> articles in which the term appears in`

.

Each term is basically represented by a *vector* - for simplicity, let's say it is a binary vector - so for the term `t`

the entry `d`

will be '1' if and only if the term `t`

appears in the document `d`

.

Now, given these vectors - to find if two terms `t1`

, `t2`

are similar - all you have to do it take the *vector similarity* of the two vectors that represent `t1`

and `t2`

.

Note: The binary vector is a simplification, in fact the article uses the tf-idf score, that the term `t`

has in a document `d`

.