2010
DOI: 10.1002/meet.14504701213
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Beyond size and search: Building contextual mass in digital aggregations for scholarly use

Abstract: At present there are no established collection development methods for building large-scale digital aggregations. However, to realize the potential of the collective base of digital content and advance scholarship, aggregations must do more than provide search of sizable bodies of content. Informed by empirical understanding of scholarly information practices, the IMLS Digital Collections and Content project developed an aggregation strategy for building Opening History, one of the largest digital cultural her… Show more

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Cited by 19 publications
(15 citation statements)
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“…First, the management of aggregates, groupings, sets, and collections of digital objects requires understanding the relationship between collection-and item-level representations and metadata (Wickett, in press;Wickett, Renear, & Urban, 2010;Zavalina, Palmer, Jackson, & Han, 2009). Further, management of the infrastructure used to store collections dataoften, relational databasesrequires an understanding of the complex interplay between numerous entities and representation layers: the individual records in the collection; the data schemas that pull them together; the physical hard drives they are stored on; the physical objects they represent; and the uses and users of the collection; and the ways in which digital aggregates change and grow over time (Buneman, Chapman, & Cheney, 2006;Buneman, Cheney, Tan, & Vansummeren, 2008;Codd, 1970;Palmer, Zavalina, & Fenlon, 2010;Thibodeau, 2002). Finally, best practices in data collections curation must account for the fundamental need to migrate them over time.…”
Section: Motivation: Collections Databases Data Collections and Datmentioning
confidence: 99%
“…First, the management of aggregates, groupings, sets, and collections of digital objects requires understanding the relationship between collection-and item-level representations and metadata (Wickett, in press;Wickett, Renear, & Urban, 2010;Zavalina, Palmer, Jackson, & Han, 2009). Further, management of the infrastructure used to store collections dataoften, relational databasesrequires an understanding of the complex interplay between numerous entities and representation layers: the individual records in the collection; the data schemas that pull them together; the physical hard drives they are stored on; the physical objects they represent; and the uses and users of the collection; and the ways in which digital aggregates change and grow over time (Buneman, Chapman, & Cheney, 2006;Buneman, Cheney, Tan, & Vansummeren, 2008;Codd, 1970;Palmer, Zavalina, & Fenlon, 2010;Thibodeau, 2002). Finally, best practices in data collections curation must account for the fundamental need to migrate them over time.…”
Section: Motivation: Collections Databases Data Collections and Datmentioning
confidence: 99%
“…Participation, especially with the niche, long‐tail groups, has been instrumental in defining valuable sub‐groups of photographs in existing collections, such as sets of clowns, shipwrecks, and antique vehicles. As emergent specialized strengths are identified in their collections, data providers can take advantage of the unforeseen opportunities for both collection development and collaboration for building new cross‐institutional special collections (Palmer, Zavalina, & Fenlon, 2010).…”
Section: Imls DCC Photostream Usagementioning
confidence: 99%
“…Since 2002, the DCC has gradually refined a mixed manual/automatic workflow for aggregation development, illustrated in Figure 1 and detailed in Palmer et al (2010).…”
Section: Setting: Imls DCCmentioning
confidence: 99%