I need a little help in understanding the bm25 relevance ranking (im using sphinx). When there is a small index (very small lets say), does this negatively influence relevance on common words that appear alot in a document? Lets say you have 4 articles total in the index (very small, yes)....titled: "norway", "canada stocks rebound again", "canada", "vietnam". The fields specified are title, and body. Lets say the query is : "canada". Basically, "canada" appears alot in (descending order)...i. "canada" ii. "canada stocks rebound again" iii. "norway" (it does in this article). Doesn't bm25 take into account word frequency? I read that words that appear very frequently in the index and the document actually take down the ranking. By the way, when I search in sphinx using proximity_bm25....."canada stocks rebound again" is ranked slightly higher than "canada"....curious :p
1 Answer
There is some specific information on the Sphinx implementation of BM25 on their blog. Note that that explanation begins "BM25 ... depends on frequencies of the matched keywords only." The measure itself is primarily based on TF (Term Frequency) and IDF (Inverse Document Frequency); i.e. the frequency of the term across the entire corpus and the (inverse) number of documents containing that term. The formulae is given in the referenced link.