I am working on a project which incorporates a basic implementation of the vector space model. A collection of documents d1...dn form the columns of the term document matrix, the rows represent the words in the collection. I use standard tf-idf scoring with cosine similarity to calculate the distance between a query and a document.
My question is, which distance metric can "tackle" similarity between short documents. Example: A document containing a single word, which is part of the query, will score very high using cosine similarity, since the norm of such a document is very small. How can I "punish" such documents which are obviously irrelevant?