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BIBFRAME extension ontologies for modeling bibliographic metadata in the art and rare materials domains.

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Art and Rare Materials (ARM) BIBFRAME Ontology Extensions

NOTE: this work is continued/forked from work hosted on: https://github.com/LD4P/arm

The ontology housed in this repository is being developed as an extension of the BIBFRAME ontology for generalized bibliographic description to provide specialized modeling in the archives, art and rare materials domains. This work was originally created under the LD4P 2016-2018 project; those ontologies are located on the LD4P project's GitHub repository.

Work in this repository replaces work posted in the grant-funded LD4P repository: https://github.com/LD4P/arm

Work on ARM is under the auspices of the Art Libraries Society of North America's Cataloging Advisory Committee, the Association of College and Research Library's Rare Books and Manuscript Section's Bibliographic Committee and the Society of American Archivists' Standards Committee.

Members

Robin Desmeules, McGill University
Christine DeZelar-Tiedman, University of Minnesota
Marie-Chantal L'Écuyer-Coelho, Bibliothèque et Archives nationales du Québec (ARLIS lead)
Meredith Hale, University of Tennessee Knoxville
Regine Heberlein, Princeton University
Linda Isaac, Harvard University
Jason Kovari, Cornell University (ACRL-RBMS lead)
Jonathan Lill, Museum of Modern Art
Mark Matienzo, Stanford University
Danijela Matkovic, Yale University
Jennifer Page, National Museum of Women in the Arts
Elizabeth Russey Roke, Emory University (SAA lead)
Timothy Thompson, Yale University
Ruth Kitchin Tillman, Pennsylvania State University
Melanie Wacker, Columbia University
Jessica Zieman, Library of Congress

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BIBFRAME extension ontologies for modeling bibliographic metadata in the art and rare materials domains.

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