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Predicting Library of Congress Classifications from Library of Congress Subject Headings

Abstract
This paper addresses the problem of automatically assigning a Library of Congress Classification (LCC) to work given its set of Library of Congress Subject Headings (LCSH). LCC are organized in a tree: the root node of this hierarchy comprises all possible topics, and leaf nodes correspond to the most specialized topic areas defined. We describe a procedure that, given a resource identified by its LCSH, automatically places that resource in the LCC hierarchy. The procedure uses machine learning techniques and training data from a large library catalog to learn a classification model mapping from sets of LCSH to nodes in the LCC tree. We present empirical results for our technique showing its accuracy on an independent collection of 50,000 LCSH/LCC pairs.
Type
Working Paper
Type of thesis
Series
Computer Science Working Papers
Citation
Frank, E. & Paynter, G. (2003). Predicting Library of Congress Classifications from Library of Congress Subject Headings. (Working paper 01/03). Hamilton, New Zealand: University of Waikato, Department of Computer Science.
Date
2003-01
Publisher
University of Waikato
Degree
Supervisors
Rights