Has anybody here played with any clustering techniques for normalizing 
bibliographic data?

My bibliographic data is fraught with inconsistencies. For example, a 
publisher’s name may be recorded one way, another way, or a third way. The same 
goes for things like publisher place: South Bend; South Bend, IN; South Bend, 
Ind. And then there is the ISBD punctuation that is sometimes applied and 
sometimes not. All of these inconsistencies make indexing & faceted browsing 
more difficult than it needs to be.

OpenRefine is a really good program for finding these inconsistencies and then 
normalizing them. OpenRefine calls this process “clustering”, and it points to 
a nice page describing the various clustering processes. [1] Some of the 
techniques included “fingerprinting” and calculating “nearest neighbors”. 
Unfortunately, OpenRefine is not really programable, and I’d like to automate 
much of this process. 

Does anybody here have any experience automating the process of normalize 
bibliographic (MARC) data?

[1] about clustering - http://bit.ly/2izQarE

—
Eric Morgan

Reply via email to