I'm working on an application that attempts to match an input set of potentially "messy" entity names to "clean" entity names in a reference list. I've been working with edit distance and other common fuzzy matching algorithms, but I'm wondering if there are any better approaches that allow for term weighting, such that common terms are given less weight in the fuzzy match.
Consider this example, using Python's
difflib library. I'm working with organization names, which have many standardized components in common and therefore cannot be used to differentiate among entities.
from difflib import SequenceMatcher e1a = SequenceMatcher(None, "ZOECON RESEARCH INSTITUTE", "LONDON RESEARCH INSTITUTE") print e1a.ratio() 0.88 e1b = SequenceMatcher(None, "ZOECON", "LONDON") print e1b.ratio() 0.333333333333 e2a = SequenceMatcher(None, "WORLDWIDE SEMICONDUCTOR MANUFACTURING CORP", "TAIWAN SEMICONDUCTOR MANUFACTURING CORP") print e2a.ratio() 0.83950617284 e2b = SequenceMatcher(None, "WORLDWIDE", "TAIWAN") print e2b.ratio() 0.133333333333
Both examples score highly on the full string because
CORP are high frequency, generic terms in many organization names. I'm looking for any ideas of how to integrate term frequencies into fuzzy string matching (not necessarily using
difflib), such that the scores are't as influenced by common terms, and the results might look more like the "e1b" and "e2b" examples.
I realize I could just make a big "frequent term" list and exclude those from the comparison, but I'd like to use frequencies if possible because even common words add some information, and also the cutoff point for any list would of course also be arbitrary.