On July 3, 2017, the Libraries, under the leadership of Director of Library Technology and Knowledge Management, David Lacy, launched the Library Search, which replaces Summon and the library catalog (known as Diamond). Based on feedback received from the university community, Temple University Libraries released an enhanced version of the Library Search on August 13th, 2018.
S List of All the New Books Issued in the United States (via EBSCO Host) American Antiquarian Society Historical Periodicals via EBSCO Host. New ex-libris database online! The Pratt Institute Libraries have launched a new phase in their initiative to provide electronic access to high-quality digital images for research and teaching. Pratt Institute: A Historical Snapshot of Campus and Area features a searchable database of images, including ex-libris, from the Libraries' Digital.
During the 2018-2019 academic year, the Libraries will continue to make further updates to the search. To learn more about work in progress, please refer to the Library Search Road Map. If you see something that you like or that doesn’t work for you, please contact the libraries.
What is the Library Search?
The Library Search is your gateway to discover library content. Use Library Search to find books, articles, newspapers, archival material, images, streaming media, and much more.
Name Explanation Mandatory; query: The query parameter is a combination of three attributes that are separated by a comma: &query=,1) field – The field to search against. Goal: Support ease of further discovery beyond Primo by adding in a new Facet with links to preferred external platforms, such as Google Scholar, PubMed, and Scopus.The links incorporate the user's initial search query in Primo, as a rebound query into the destination platform. The following code has strongly been inspired by what has been done at Purdue.
When did the Library Search launch?
New ex-libris database online! The Pratt Institute Libraries have launched a new phase in their initiative to provide electronic access to high-quality digital images for research and teaching. Pratt Institute: A Historical Snapshot of Campus and Area features a searchable database of images, including ex-libris, from the Libraries' Digital.
What does the Library Search include?
The library search includes the following collections:
Books, Journals, and More: print books and journals, DVDs, government documents, materials in the Special Collections Research Center (SCRC) and the Charles L. Blockson Afro-American Collection, etc., as well as ebooks, streaming audio and video, and other online resources.
Articles: journal articles, newspaper articles, e-books, book chapters, and other online resources
You can search everything simultaneously through the enhanced version of the Library Search or access the collections separately.
For an introduction to the site, view this short video about using Library Search.
Do I still have access to the same materials?
There are no changes to the Temple University Libraries collections. In fact, you can search all our collections in one place rather than checking through multiple systems. In addition, materials from other libraries remain available via E-ZBorrow and ILLiad interlibrary loan services, and other library databases continue to be accessible, including those for more subject-specific searching.
Where can I find books and videos (previously in Diamond)?
You will still be able to search for books and media using the search tabs on the Libraries' homepage. You can also choose to search everything in the Library Search and then limit your results to books or media.
For how-to instructions, refer to:
Where can I find articles?
You can search for articles using the Library Search or individual databases.
For how-to instructions, refer to:
Where can I find journal titles?
What features are included in the Library Search?
You can:
Save a list of items from your search results
Export search results to email and citation management tools
You also have different options for advanced searching, including new ways to filter your search results.
Do I need to update my items in Ares Course Reserves?
As part of our library services, the Temple University Libraries collects information about library transactions through Alma, also hosted by Ex Libris. This information is accessible to library staff and Ex Libris for the purposes of managing library accounts. See Temple University Libraries’ policies on the Confidentiality of Patron Records and Ex Libris’ Security and Data Policy for more information.
More questions?If you need further assistance with the Library Search or have feedback, you can Ask a Librarian or contact asktulibrary@temple.edu. Additional information can also be found in the general FAQ's for Temple University Libraries.
This article presents an analysis of the enrichment, transformation, and clustering used by vendors Casalini Libri/@CULT and Ex Libris for their respective conversions of MARC data to BIBFRAME. The analysis considers the source MARC21 data used by Alma then the enrichment and transformation of MARC21 data from Share-VDE partner libraries. The clustering of linked data into a BIBFRAME network is a key outcome of data reuse in linked data projects and fundamental to the improvement of the discovery of library collections on the web and within search systems.
by Jim Hahn
Contemporary linked data implementation has been bolstered by several novel projects that use transformation and enrichment of MARC data to BIBFRAME graphs (Xu, Hess, & Akerman, 2018). The underlying catalyst in the contemporary wave of linked data implementations in libraries was BIBFRAME data model development and subsequent experimentation at the Library of Congress and the Program for Cooperative Cataloging (Naun, 2019). The spread and refinement of the BIBFRAME data model, which takes an inclusive approach to library description on the semantic web, has ushered in a new wave of modern experimentation and implementation for linked data enrichment of traditional cataloging records (Jin, Hahn, & Croll, 2016). Alternatively, non-BIBFRAME efforts at linked data implementation used Schema.org, a vocabulary first developed by major search engines for discovery of structured data on the web (Cole, Han, Weathers, & Joyner, 2013; Lampron, Mixter, & Han, 2016). An excellent Schema.org primer, “HTML5 Microdata and Schema.org,” appeared in the code4lib journal (Ronallo, 2012) along with several exemplar implementation cases (Clark & Young, 2015, 2017; Pekala, 2018; Wallis et al., 2017).
Projects such as the Share-VDE Linked Data Catalog (Samples & Bigelow, 2020) and linked data enrichment within the ExLibris Alma product are two examples of modern linked data implementation. These new implementations offer valuable insights into the road ahead for libraries transitioning to new linked data descriptions to provide enhanced discovery of collections. The purpose of this paper is first to analyze the source MARC data transformed and enriched within Alma using the University of Pennsylvania Alma and Alma Sandbox to present a case study for data analysis; and next, to evaluate the enrichment of source MARC data transformed to BIBFRAME graphs in the Share-VDE linked data catalog. The technical work in Share-VDE progresses from enrichment and transformation of MARC21 data from UPenn to clustering of linked data into a graph BIBFRAME network. The enriched, transformed, and clustered data from the Share-VDE catalog are then made available to UPenn Libraries in the MARC21 format and in BIBFRAME/RDF graphs. The linked data graphs are encoded with BIBFRAME RDF and also provide helpful provenance information using n-quads. Labeling an RDF subject, predicate, and object is a particular strength and use of the n-quad standard (W3C, 2014).
Share-VDE provides a linked data catalog to access the clustered Works, Agents, and Subjects. While Share-VDE comprises over 20 partner libraries, members can skin a linked data catalog. The skin provides a local look and feel to the catalog. And using additional APIs, the skin can interface with local requesting and catalog account features such as placing holds or accessing local e-resources. This localization does require additional configuration and depends on the APIs available in the implementing library’s Integrated Library System. A mockup of the University of Pennsylvania Share-VDE skin is shown in Image 1.
Figure 1. Prototype screenshot for the bibliographic Work description sets by a given BIBFRAME Agent. Source: Filip Jakobsen
Alma is the data source for metadata encoded in MARC in the University of Pennsylvania Libraries. Alma provides a BIBFRAME record consisting of Work and Instance data for each MARC metadata record in the system. A grid view of the XML analyzed through Oxygen XML Editor is shown in Image 2.
Figure 2. Grid View of Alma BIBFRAME XML illustrating Work and Instance entities that are associated with an Alma MARC record.
Alma enrichment and conversion for BIBFRAME relies on the Library of Congress MARC2BIBFRAME2 code (Library of Congress, 2020a). The BIBFRAME record is shown under a linked data tab for the bibliographic record, as seen in Image 3.
Figure 3. A screenshot of the linked data tab entitled “BIBFRAME” in the University of Pennsylvania’s Alma Sandbox. Source: Alma
The resulting transformation produces Instance level data about the bibliographic record, and within the same record tab, related Work data. Work descriptions, as presented in the Alma interface, are not associated with a Superwork bibliographic description such as a BIBFRAME Hub or in Share-VDE, an Opus. An example of the emerging LC Hub entity, a type of superwork, can be seen in image 4.
Figure 4. A recent approach to modeling the Library of Congress Hub (or lc:hub), an example of a Superwork. In this case the Library of Congress Hub is a type of Work entity set.
The superwork is defined differently in various vocabularies, in much the same way that no universal work bibliographic description exists. However, “a superwork may contain any number of works as subsets, the members of which while not sharing essentially the same information content are nevertheless similar by virtue of emanating from the same ur-work“ (Svenonius, 2000, p. 38). According to Alma documentation (ExLibris, 2020a) available on the web, “Alma groups several BIB record into a single Work based on the bibliographic information,” with features available on request for clustering MARC items descriptions under a shared bibliographic Work description; however, “the work grouping logic is not implemented by default. Institutions that are interested in this functionality should contact ExLibris and ask for it. For institutions that did not ask to implement it, each BIB record will be considered as having its own Work”(Ex Libris, 2020a).
BIBFRAME records in Alma contain URIs as linked data that are not present in the source MARC stored in Alma. The URIs in Alma BIBFRAME records include:
Alma’s FAQ on standards does indicate record support for BIBFRAME: “the ‘General publishing profile’ in Alma includes an option to publish in BIBFRAME format. Alma will support the importing of catalog records in BIBFRAME format, allowing BIBRAME formatted records to be easily and seamlessly made part of the Alma catalog, regardless of the cataloging format in which it is managed” (ExLibris, 2020b).
Linked data created externally to Alma can be imported into the system. The Sinopia linked data editor is the “cloud-based environment for original metadata creation,” the work product from the LD4P2 grant project (LD4P2, 2020). The Sinopia code base continues to evolve over several iterations and was initially built upon a hard fork of code that made up the Library of Congress BIBFRAME Editor or BFE, described as “a simple tool that enables input of any BIBFRAME vocabulary element,” (Library of Congress, 2020b). Catalogers can make native RDF BIBFRAME records from this system. The Sinopia editor is not integrated into Alma. But Sinopia BIBFRAME data can be exported as JSON-LD and includes URIs for Instance and Work record descriptions, among others, which can bring in the relevant data needed to undertake transformation from BIBFRAME into MARC. The process is illustrated in image 5.
Figure 5. The data flows from Sinopia RDF through the BIBFRAME2MARC code and in the final stage imports MARC to Alma.
The Library of Congress released BIBFRAME2MARC code in May 2020 (Library of Congress, 2020c), making the transformation from a BIBFRAME record possible. However, to account for the Sinopia namespace, developers created the helpful processing code RDF2MARC while working under the LD4P2/3 grants at Stanford. After conversion to MARC21 or MARCXML, the record can then be imported to Alma. A possible output of the newly launched LD4P3 grant project led by Stanford and Cornell with funding from Mellon may make it possible to connect directly to an ILS or export MARC from Sinopia, thus obviating the need for the transformation shown in image 5.
The Share-VDE hosted Stardog database provides access to UPenn’s linked data. The implementation of Share-VDE graphs uses n-quads, which can be viewed record by record in a file archive provided to UPenn. The query shown in Image 6 for the record’s MMSID (unique identifier in Alma) will return all associated graph URIs for cluster analysis.
Figure 6. Stardog Studio retrieval from Share-VDE n-quad query of all graphs related to a bibliographic identifier. Source: Stardog Studio
The Stardog Studio offers a visual node explorer. The example graph exploration in Image 7 illustrates Work nodes related to a subject “School Sports – Fiction.” The center in this example graph is where we can see work relationships pointing to this identifier. Share-VDE clustering technologies aspire to model the deep interconnections among data in the records and among other related records in its database. Whether Alma clusters linked data among other libraries’ works is unclear and not yet observed from the Alma backend that an institution can access. Perhaps clusters do exist elsewhere in Ex Libris graph databases that power other parts of their infrastructure such as Summon or a larger index. The URIs in Share-VDE (last update Feb 2020):
Figure 7. Stardog visualization functionality. Source: Stardog Studio
Sample Share-VDE Stardog Data as XML Graph
The URIs in Share-VDE above are also found in the Share-VDE of the Penn MARC21 enriched with URIs. A sample of the UPenn Share-VDE MARC21 enrichment was loaded into the Penn Alma Sandbox. This experiment aimed to understand what, if any, discovery gains may be achieved by reuse of the Share-VDE enriched MARC21. To view MARC, MarcEdit’s mnemonic format was used in displaying human readable MARC. For more background on the mnemonic format, see the helpful documentation at The MarcEdit Field Guide (Reese, 2020).
Share-VDE Enriched MARC21(w/URIS)
=LDR 02458ngm a22004693i 4500
=001 9977142688903681
=005 20160817151618.0
=006 m o c
=007 cr n a
=007 vz za z
=008 160817s2007cau002e ov engd
=035 $a(VaAlASP)AVONASP3241241/marc
=035 $a(OCoLC)AVON957520113
=040 $aVaAlASP$beng$erda$cVaAlASP
=245 00$aDocumentation.$pEssentials of Nursing Documentation.$pHealth Care Plan $h[electronic resource] /$c[produced by MedCom, Inc.].
=264 1$a[Cypress, California] :$bMedcom,$c[2007]$9http://share-vde.org/sharevde/rdfBibframe/Publisher/1144933
=300 $a1 online resource (2 minutes)
=306 $a000143
=336 $atwo-dimensional moving image$btdi$2rdacontent$0http://rdaregistry.info/termList/RDAContentType/1023
=337 $avideo$bv$2rdamedia$0http://rdaregistry.info/termList/RDAMediaType/1008
=337 $acomputer$bc$2rdamedia$0http://rdaregistry.info/termList/RDAMediaType/1002
=338 $aother$bvz$2rdacarrier
=338 $aonline resource$bcr$2rdacarrier$0http://rdaregistry.info/termList/RDACarrierType/1018
=347 $adata file$2rda
=500 $aTitle from resource description page (viewed August 19, 2016).
=506 $aRestricted for use by site license.
=520 $aThis instructional video, from the Documentation series produced by MedCom, Inc., is about the documentation of health care plans.
=546 $aIn English.
=650 0$aNursing records.$0http://id.loc.gov/authorities/subjects/sh85093417
=650 0$aNursing care plans.$0http://id.loc.gov/authorities/subjects/sh85093387
=650 0$aMedical records$xManagement.$0http://id.loc.gov/authorities/subjects/sh85083015
=650 0$aCommunication in nursing.$0http://id.loc.gov/authorities/subjects/sh85029081
=655 7$aInstructional films.$2lcgft
=655 7$aFilm excerpts.$2lcgft
=710 2$aAlexander Street Press.$1http://isni.org/isni/0000000122177075
=710 2$aMedcom, inc.,$eproduction company.$1http://viaf.org/viaf/146569313
=740 0$aAcademic Video Online.
=758 $4http://rdaregistry.info/Elements/m/P30004$1http://worldcat.org/oclc/957520113
=856 40$uhttp://hdl.library.upenn.edu/1017.12/1929840$zConnect to streaming video
=996 10$aDocumentation. Essentials of Nursing Documentation. Health Care Plan$9http://share-vde.org/sharevde/rdfBibframe/Work/11033735-1
=997 10$aUPENN
=999 8$bweb $h-
From the enriched MARC sample loaded into the Penn Alma Sandbox, it did not appear that Alma supported a 1-to-1 import of URIs in MARC. Specifically, for the sample of records the 996-field containing a Share-VDE work ID was not imported into the Alma system. Note that the 900s are not defined in the MARC21 standard, and vendors use them for local purposes. Several important URIs such as added entries do get added to the BIBFRAME linked data record in Alma. Associating multiple work identifiers in BIBFRAME is possible, but in the version of Alma “merge on match” the Share-VDE work IDs in 996 did not merge with the Linked Data/BIBFRAME Record within Alma.
Without a corresponding discovery load into Blacklight, evaluating improvements to discovery gains using Alma imports are not possible at UPenn. The Penn Libraries discovery layer to Alma does not use Primo, but rather Blacklight as its front-end to discovery. A separate test Blacklight instance that indexed MARC entity URIs as compared to non-URI enhanced MARC could provide a comparative analysis of discovery relative to enrichment. This experiment for indexing the Work entity ID associated with an MMSID in the UPenn Blacklight/Lucene is in the planning stages.
In the early 2000s a set of now classic MARC usage evaluations from Moen and others demonstrated the “ground truth” metrics (Tennant, 2016) of MARC utilization. The Blacklight testing of Work IDs takes an inclusive approach to linked data implementation by revisiting and extending MARC studies to inform a comparative Blacklight study, evaluating retrieval within a Blacklight index using “linky”-MARC and the same corpus of MARC records encoded with “non-linky” MARC. The premise of “linky-MARC” is the transitional notion of incorporating entity URIs into MARC records (Wallis, 2018).
Moen and Benardino (2003, p. 171) demonstrated that “…less than 5% of available content designation accounts for 80% of occurrences.” This finding underscores the need for intelligent and measured indexing and discovery of MARC; namely, that not all fields must be treated with equivalent indexing importance in the process of making descriptions of bibliographic works discoverable. The present study focused on work entity URIs containing Work IDs in “linky”-MARC and contrasted the retrieval to a non-enriched MARC index of the same corpus.
The use of subfields $0 and $1 in the enriched MARC from Share-VDE were evaluated for consistency, with recent PCC guidance from the September 12, 2019 report “PCC Task Group on Linked Data Best Practices Final Report” and the corresponding MARC Object Table (Library of Congress, 2019). A baseline report of the enriched Share-VDE MARC21, which was generated with MarcEdit and then plotted with Tableau, showed the nature of MARC fields, used $0 and $1, and is shown in Image 8 and Image 9.
Figure 8. $1 URIs from Penn Share-VDE enriched MARC. Source: Author
The set of records in Table 1 uses $1 URIs primarily within 100s (Main Entry) and the 758 (Resource Identifier) fields. Regarding the added entry fields: 700 (Added Entry-Personal Name), 710 (Added Entry-Corporate Name), and 758 (Resource Identifier). PCC Guidelines for $1 in these fields recommend that the identifier in $1 must always be a URI. The occurrences in the sample conform. For the 758 fields above, proper guidance for the use of $4 was also observed. The 758 field, according to the PCC guidance, can be used for work or resource identifiers (Library of Congress, 2019, p. 18).
Figure 9. $0 URIs from Penn Share-VDE enriched MARC. Source: Author
The 650 field contains the most usage of the enriched MARC $0 subfield. Guidelines from the PCC Marc Object Table for the 650 (Subject Added Entry – Topical Term) allow for the $0 to be used here, however, guidance suggests use of “$0 only if the entire heading is established. Do not provide $0 for parts of the heading.” A meta-analysis of 650 URIs in Image 7 found that this sample conforms with PCC best practice guidelines.
A sample of 50,000 Alma MARC records available from the Penn Open Data website was used for evaluating Alma data. Benchmarks were created to understand if and where the uses of $0 and $1 exist in Alma. In a sample of 50,000 records, no $1 subfields were in use by Penn MARC records included in this evaluation. The $0 subfields did have uses in the 600s (Subject Access fields) and 880s (Alternate Geographic Field) for a total of 693 uses in the sample of 50,000. Baseline metrics are delineated in Image 10. The preponderance of $0 can be found in 650 (Subject Added Entry – Topical Term) followed by 655 (Index Term – Genre/Form) and 651 (Subject Added Entry – Geographic Name) fields.
Figure 10. $0 subfields in a selection of Alma MARC records at Penn.
Reusing linked data from Share-VDE enrichment and clustering processes, it is feasible to add linked data into the HTML elements of the Work page descriptions in Blacklight. This may result in additional discovery gains for records searched from Google and the World Wide Web. An example of a JSON-LD data implementation for HTML records follows. This example is not from an existing webpage, rather it is an implementation model verified as valid JSON-LD through Google’s Structured Data Testing tool.
Book actions (https://developers.google.com/search/docs/data-types/book) are emergent Schema.org descriptions for search engines that may provide a more optimal experience for borrowing print and e-books on the web. The book actions will appear through existing knowledge panels on the web. Libraries can register their interest to pilot book actions from the data type link above.
Large Alma publishing is resource and time intensive. It may be possible to replicate certain Alma reports that pose bottlenecks due to Alma cloud throttling of large reports. A UPenn PostgreSQL database hosted locally may be able to address these bottlenecks by setting up an indexing and query service. In such a circumstance delta imports must be made based on the progression of MMSID integers in the Alma system relative to the PostgreSQL enriched JSON database.
The enriched MARC21 from Share-VDE has been converted to JSON using MarcEdit. With some configuration to line-by-line JSON, it is possible to load the enriched data into PostgreSQL using the JSONb, the preferred, and more feature rich indexing data type for additional analysis and evaluation. The JSON output from MarcEdit was further transformed using the JQ software tool so that the JSON array would span one line. For more information on JQ see: https://formulae.brew.sh/formula/jq
Flattening a JSON record array into one line was accomplished with the following command:
The JSON can be added to a PostgreSQL table using the JSONb data type, and a modification of the csv importing command to simulate row based importing that csv commands afford.
Example table load was found here: http://adpgtech.blogspot.com/2014/09/importing-json-data.html.
Following data load, a simple index on JSON fields in PostgreSQL can be processed over the enriched library data:
Next, it is possible to query the Postgres Index on JSONb data using keyword search. The example query below is establishing a set of records that contain an 880 field.
Figure 11. Retrieval of JSONb enriched MARC records through a PostgreSQL keyword query. Source: pgAdmin 4
This workflow can provide local data persistence with indexing and retrieval in both the enriched MARC, and if desired, the n-quads from Share-VDE; both can be loaded and indexed in a persistent database under local control. Indexing n-quads under a local triple store can better achieve the goals of linked data by maintaining the enriched BIBFRAME graph in a graph database such as Blazegraph, used by Wikibase.
Wikibase docker images (https://github.com/wmde/wikibase-docker) are a promising tool for hosting enriched linked data graphs locally, within the UPenn Library data infrastructure. OCLC used this infrastructure for Project Passage (Godby et al., 2019). The OCLC infrastructure for linked data will likely continue to use Wikibase for the Mellon Funded Entity Management Project. An opportunity exists to reuse the Wikidata properties for ongoing Linked Data Research at the Libraries, offering several advantages, including avoiding vendor lock-in and ensuring local control over Penn linked data.
The Wikibase infrastructure offers the possibility to retain Share-VDE records locally and to act as a backbone for continued experimentation. A local Wikibase instance of Share-VDE n-quads alleviates concerns of possible vendor lock-in of n-quads in the Stardog Database hosted by Share-VDE. Finally, there may be ways to reuse the n-quads from Share-VDE (e.g. Superwork to Work clustering) for informing clustering of catalog data outside of Share-VDE.
Figure 12. Share-VDE Author ID property in Wikidata. Source: Wikidata
Wikibase software can support the increased production of links among UPenn scholarship, collections, and the broader web of linked data. Recent studies have pointed to the importance of Wikimedia content to search engines/discovery on the web writ large (Vincent & Hecht, 2020). The use of Wikibase knowledge graphs in recommender systems development can serve to promote library content (Tsuji, 2019). Linked data offers some advantages over big data for providing personalization/recommender services (Campbell & Cowan, 2016); e.g. recommendations are based on structured knowledge not personal data mining. Reusing existing knowledge structures is preferable to creating personalized data stores from which to derive a recommendation system, especially in libraries.
This section ties together the preceding data reuse activities within a common, overarching long-term outcome: improving discovery of Penn library collections. Using a logic model framework, Table 1 offers a delineation of the above activities that coalesce around the long-term goals focused on increased discoverability. Logic models identify the anticipated outcomes based on resources, activities, and outputs of organizations (Schryvers, 2020). As a goal like improved discovery is a difficult long-term outcome to assess, it helps to create short-term (Julian, Jones, & Deyo 1995) and mid-term outcomes of discovery improvements in which the libraries can collect measurable metrics from activities and understand if the outputs from resources and outputs are serving the intended effects.
Table 1. Liked data logic model: Penn Libraries Linked Data Short-Term, Mid-Term, and Long-Term Outcomes
Resources | Activities | Outputs | Short-term Outcomes | Mid-term Outcomes | Long-term Outcomes |
---|---|---|---|---|---|
1. Linked Data Team 2. Sinopia / BIBFRAME Editor Group 3. Discovery Team 4. LD4 Affinity Group Participation 5. Wikibase/OCLC Project Entity Management Group Participation | 1. Share-VDE Catalog Development 2. BIBFRAME Editor/ Sinopia Training, Original RDF Data Creation 3. Blacklight tests of Work Entity IDs in Franklin 4. BIBFRAME Editor + Data Flow Improvements (LD4P3 affinity groups) 5. OCLC Entity Management API testing, Wikibase PCC Project Participation | 1. Share-VDE Record Enrichment 1.a. Share-VDE Linked Data Penn Catalog 2. Original RDF Linked Data from BIBFRAME Editor 3. Work Entities in Franklin 4. Improved BIBFRAME Editors and Data Flow 5. OCLC Entities API Data 5.a. Wikidata PCC Project | 2: Professional staff familiarity with Sinopia, Linked Data, and BIBFRAME. 1, 2, 5: Local Penn Wikibase supporting RDF Data Persistence of Linked Data from Share-VDE enrichment, original RDF creation, OCLC Entities API Data | 2: Professional staff expertise with BIBFRAME Editors, Linked Data Models (LRM, RDA), and BIBFRAME. 2, 3, 4: Alma load of select MARC records transformed from BIBFRAME Editor. 1, 3, 5: Integrate Share-VDE Interface into Library Discovery; Bento Box of Share-VDE Catalog; Indexing in Blacklight to target Work Entity URIs from Share-VDE; OCLC; and/or BIBFRAME Editor Work Data. | 1, 2, 3, 4, 5: Enhance discovery of Penn Collections |
Teams involved in this work represent internal resources along with external Linked Data Projects. The internal Penn linked data team continues to evaluate the efficacy of the Share-VDE linked data catalog and shares membership with a Discovery Strategic Project team whose goals include integration of the Share-VDE linked data catalog into the Libraries’ Bento Search Layout. Integration of the linked data catalog into library search results will affect the long-term outcome of linked data implementation.
The Penn Libraries is beginning a mixed methods evaluation incorporating log studies and remote user testing of interviews and observation to understand how semantic search fits into the search process. Log studies (Jansen, 2006; Peters, 1993) are quantitative measures that provide great insights and empirical evidence. Quantitative studies (Mischo et al., 2012; Lown et al., 2013; Dougan, 2018) can inform new hypothesis development that qualitative measures of interviews (McKay et al., 2019) and observation are better able to address.
The emerging research agenda at Penn on semantic interfaces aims to evaluate user tasks as articulated in IFLA’s Library Reference Model (LRM). The LRM harmonized several ontologies (e.g. FRBR, FRAD, FRSAD) with distinct perspectives and aims. An underappreciated section developed in the reference model is the detail devoted to supporting user tasks (Riva, Le Boeuf, & Žumer, 2017). User tasks are “…the ends of any bibliographic system” (Dousa, 2018). Žumer (2017, para 9) wrote that the “…LRM defines five user tasks : Find, Identify, Select, Obtain, Explore. The tasks are listed in an order that reflects typical user behavior, which does not mean that all tasks need to be performed and that they cannot be repeated. Particularly identify and obtain often occur in parallel and in interaction.” Previous user research into discovery findings and the LRM user tasks informed semantic search hypothesis development. The hypothesis generation process necessarily involves turning LRM tasks into research questions, and understanding open questions in discovery research—a selection of which is shown in Table 2.
Table 2. Selected IFLA LRM tasks (Riva, Le Boeuf, & Žumer, 2017)
Selected LRM Exemplar Tasks | Find “… all expressions of a work that are written in a given language” (p.97) | Identify “… a personal name that corresponds to the person sought by the user, even though other people are identified by similar names” (p.98) | Explore “… relationships in order to understand the structure of a subject domain and its terminology” (p.99) |
Semantic Interface Hypothesis | Expressions of a Work in each language can be easily ascertained in a semantic interface search result page. | Name disambiguation is supported in semantic search results. | Semantic interfaces support relationship exploration in a subject domain (e.g. browsing). |
Ongoing and sustained reuse of linked data are a fundamental component of improving library discovery operations. Outside of the University of Pennsylvania Libraries, collaborative approaches to developing Wikibase-focused, persistent structured data, and future tracking of the newly funded OCLC Project Entity Management work will extend Penn Resources and Penn Linked Data with web-based knowledge graphs. An integrated linked data strategy with discovery and web strategic projects will help to further Penn Libraries’ overall goals for increasing the visibility of Penn resources on the web and within library search systems.
Jim Hahn (https://orcid.org/0000-0001-7924-5294) is the Head of Metadata Research at the University of Pennsylvania Libraries leading linked data and metadata projects and research for the Libraries. Working collaboratively across the Libraries, his work is developing a vision for the services, technologies and policies to enhance discovery of collections, following international standards and best practices for linked data and metadata.
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Clark, J. A., & Young, S. W. H. (2015). Building a better book in the browser (using semantic web technologies and HTML5). The Code4Lib Journal, 29. https://journal.code4lib.org/articles/10668
Clark, J. A., & Young, S. W. H. (2017). Linked data is people: Building a knowledge graph to reshape the library staff directory. The Code4Lib Journal, 36. https://journal.code4lib.org/articles/12320
Cole, T. W., Han, M. J., Weathers, W. F. & Joyner, E. (2013). Library MARC records into linked open data: Challenges and opportunities. Journal of Library Metadata, 13(2–3), 163–196. https://doi.org/10.1080/19386389.2013.826074
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