Core Faceted Subject Access Interest Group

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Purpose: Discusses the theory and applications related to subject terminology intended for faceted application, including FAST (Faceted Application of Subject Terminology), AAT (Art and Architecture Thesaurus), LCGFT (Library of Congress Genre/From terms), and others. Serves as a forum for users and others interested in the faceted approach to subject access to compare notes and discuss further developments and implementation of subject faceting for digital projects and related topics.

This interest group is part of Core's Metadata and Collection Section.

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ALA Midwinter 2020 Presentation Slides

  • 1.  ALA Midwinter 2020 Presentation Slides

    Posted Feb 03, 2020 07:37 AM
      |   view attached

    Maximizing Discovery of Datasets in the Library Catalog

    by Rowena Griem, Tachtorn Meier, & Yukari Sugiyama (Yale University Library)

    As digital scholarship evolves in academia, there are the growing importance and increasing acquisition of datasets at libraries. It is essential to ensure that this newer kind of library resource is easily discovered, identified and accessed by users. At the Yale University Library, we reviewed current cataloging practice and needs for dataset discovery and access to establish best practices.

    Highlights of our progress include:

    • Creation of dataset-related LCGFT headings
    • Documentation for MARC-based cataloging of datasets and workflow
    • Remediation for existing dataset catalog records
    • Recommendations to improve discovery user interface

    In this presentation, we will discuss challenges of cataloging and managing datasets and demonstrate how the discoverability of datasets is enhanced in our discovery system.



    ------------------------------
    Lucas Mak
    Metadata & Catalog Librarian
    Michigan State University
    ------------------------------

    Attachment(s)

    pdf
    Yale-FSAIG 2020 midwinter.pdf   1.04 MB 1 version