glam/data/instances/publications/citation_relationships.yaml
2025-11-19 23:25:22 +01:00

357 lines
19 KiB
YAML

---
# Citation Relationships Between Semantic Web Publications
# Demonstrates citation linking patterns using CiTO (Citation Typing Ontology)
# Links publications through different types of citation relationships
- citation_id: https://w3id.org/heritage/citation/kg-2021-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
Uses Wikidata as a prominent example of a large-scale collaborative
knowledge graph to illustrate key concepts in knowledge graph construction
and evolution.
citation_context: >-
"Wikidata (Vrandečić and Krötzsch, 2014) is a free, collaborative knowledge
base that serves as central storage for structured data of Wikimedia projects.
It demonstrates how community-driven approaches can build comprehensive
knowledge graphs at scale."
page_number: "23"
- citation_id: https://w3id.org/heritage/citation/lokg-2024-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
References the comprehensive knowledge graph survey to establish theoretical
foundations for cultural heritage knowledge graph construction.
citation_context: >-
"Following the taxonomy proposed by Hogan et al. (2021), we structure the
LOKG using established knowledge graph design patterns, adapting them for
the specific requirements of cultural heritage domain modeling."
page_number: "3"
- citation_id: https://w3id.org/heritage/citation/lokg-2024-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: CITES_AS_EVIDENCE
citation_intent: >-
Uses Wikidata as evidence of successful collaborative knowledge base
construction, informing the LOKG's crowdsourcing strategy.
citation_context: >-
"The success of Wikidata in enabling collaborative knowledge base construction
(Vrandečić and Krötzsch, 2014) demonstrates the viability of community-driven
approaches for cultural heritage metadata aggregation."
page_number: "15"
- citation_id: https://w3id.org/heritage/citation/iswc2024-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/iswc-2024-best-paper
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: DISCUSSES
citation_intent: >-
Discusses knowledge graph relationship modeling challenges identified in
the survey, extending the analysis to dataset-level relationships.
citation_context: >-
"Hogan et al. (2021) identify relationship complexity as a fundamental
challenge in knowledge graph design. Our work extends this analysis to
the meta-level, examining relationships between datasets themselves rather
than entities within datasets."
page_number: "2"
- citation_id: https://w3id.org/heritage/citation/iswc2024-cites-iswc2023
citing_work: https://w3id.org/heritage/publication/iswc-2024-best-paper
cited_work: https://w3id.org/heritage/publication/iswc-2023-best-paper
citation_type: EXTENDS
citation_intent: >-
Extends spatial link prediction techniques to dataset relationship prediction,
adapting embedding-based methods for a new domain.
citation_context: >-
"Building on recent advances in spatial link prediction with semantic
embeddings (Chen et al., 2023), we adapt these techniques to predict
relationships between datasets, treating dataset metadata as spatial features."
- citation_id: https://w3id.org/heritage/citation/lokg-2024-cites-iswc2023
citing_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
cited_work: https://w3id.org/heritage/publication/iswc-2023-best-paper
citation_type: CITES_AS_EVIDENCE
citation_intent: >-
Cites spatial link prediction methods as evidence for geographic entity
linking approaches used in LOKG.
citation_context: >-
"For geographic entity resolution and linking, we employ spatial embedding
techniques similar to those proposed by Chen et al. (2023), combining
coordinate-based distance metrics with semantic similarity."
page_number: "28"
- citation_id: https://w3id.org/heritage/citation/kg-2021-self-cite-intro
citing_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: CITES_AS_METADATA
citation_intent: >-
Internal cross-reference between survey sections for navigation.
citation_context: >-
"As discussed in Section 4.2, knowledge graph construction involves multiple
stages from data extraction to schema alignment."
page_number: "45"
# Citations from Heritage-Linked Publications
- citation_id: https://w3id.org/heritage/citation/brazilian-lokg-cites-lokg-2024
citing_work: https://w3id.org/heritage/publication/lokg-brazilian-subset-2024
cited_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
citation_type: EXTENDS
citation_intent: >-
Extends the LOKG framework by providing a comprehensive Brazilian cultural
heritage subset with enhanced metadata and geographic coverage.
citation_context: >-
"Building upon the LOKG architecture described by Rossi and Meghini (2024),
we present a specialized Brazilian subset that integrates 304 heritage institutions
with enriched Portuguese-language metadata and linkage to Brazilian geographic
identifiers from IBGE."
page_number: "2"
- citation_id: https://w3id.org/heritage/citation/dutch-consortium-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/dutch-glam-consortium-2023
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
References comprehensive knowledge graph survey to establish theoretical
foundations for federated heritage knowledge graph architecture.
citation_context: >-
"Following the knowledge graph design patterns outlined by Hogan et al. (2021),
the Dutch GLAM Consortium implements a federated architecture that preserves
institutional autonomy while enabling unified semantic queries across heterogeneous
collections."
page_number: "4"
- citation_id: https://w3id.org/heritage/citation/dutch-consortium-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/dutch-glam-consortium-2023
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: CITES_AS_EVIDENCE
citation_intent: >-
Cites Wikidata's collaborative editing model as evidence for community-driven
metadata enrichment strategies in the consortium.
citation_context: >-
"The consortium adopts collaborative metadata enrichment strategies inspired
by Wikidata's community-driven approach (Vrandečić and Krötzsch, 2014), enabling
curators, researchers, and volunteers to contribute structured annotations
within institutional governance frameworks."
page_number: "12"
- citation_id: https://w3id.org/heritage/citation/rembrandt-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/rijksmuseum-rembrandt-2024
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: USES_DATA_FROM
citation_intent: >-
Uses Wikidata as a source for Rembrandt biographical metadata, provenance
information, and artwork identifiers to link analysis results.
citation_context: >-
"We enriched our dataset with Rembrandt biographical data and artwork provenance
from Wikidata (Vrandečić and Krötzsch, 2014), enabling temporal correlation
of brushwork patterns with documented life events and known commission dates."
page_number: "8"
- citation_id: https://w3id.org/heritage/citation/nha-cites-lokg-2024
citing_work: https://w3id.org/heritage/publication/noord-hollands-archief-digital-2023
cited_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
citation_type: DISCUSSES
citation_intent: >-
Discusses LOKG's metadata integration strategies in the context of archival
digital transformation and cross-institutional discovery.
citation_context: >-
"Large-scale heritage knowledge graphs like LOKG (Rossi and Meghini, 2024)
demonstrate the potential for unified discovery across institutional boundaries.
Our digital transformation strategy positions the Noord-Hollands Archief to
participate in similar federated heritage infrastructures."
page_number: "24"
- citation_id: https://w3id.org/heritage/citation/cms-study-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/collection-management-systems-2024
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
References Wikidata as an authoritative example of structured knowledge
representation for entity reconciliation in library collection management systems.
citation_context: >-
"Many surveyed libraries now integrate Wikidata identifiers (Vrandečić and
Krötzsch, 2014) into their collection management workflows for author
disambiguation, subject heading reconciliation, and authority control,
reflecting a broader trend toward Linked Open Data adoption."
page_number: "18"
- citation_id: https://w3id.org/heritage/citation/cms-study-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/collection-management-systems-2024
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
Cites knowledge graph design principles to analyze collection management
system architectures and metadata modeling approaches.
citation_context: >-
"We evaluate each system's metadata architecture using the knowledge graph
design patterns identified by Hogan et al. (2021), assessing schema expressiveness,
query capabilities, and interoperability with external knowledge bases."
page_number: "9"
# ============================================================================
# Citations from Diverse Heritage Publications (Books, Chapters, Reports, Preprints)
# ============================================================================
- citation_id: https://w3id.org/heritage/citation/linked-data-museums-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/linked-data-museums-2022
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
References comprehensive knowledge graph survey to establish theoretical
foundations for museum Linked Data implementation.
citation_context: >-
"Following the knowledge graph design patterns outlined by Hogan et al. (2021),
museums can structure collection metadata using established semantic web principles
adapted for the unique requirements of cultural heritage objects and their complex
provenance histories."
page_number: "45"
- citation_id: https://w3id.org/heritage/citation/linked-data-museums-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/linked-data-museums-2022
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: CITES_AS_EVIDENCE
citation_intent: >-
Uses Wikidata as a successful example of collaborative knowledge base construction
for museums to follow.
citation_context: >-
"Wikidata (Vrandečić and Krötzsch, 2014) demonstrates how collaborative editing
can build comprehensive art historical knowledge bases. Museums like the Van Gogh
Museum now systematically align their collection records with Wikidata identifiers,
enabling global discoverability and cross-institutional research."
page_number: "127"
- citation_id: https://w3id.org/heritage/citation/kb-3d-report-cites-lokg-2024
citing_work: https://w3id.org/heritage/publication/kb-3d-digitization-report-2024
cited_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
citation_type: DISCUSSES
citation_intent: >-
Discusses LOKG metadata aggregation strategies in the context of 3D digitization
metadata sharing and preservation planning.
citation_context: >-
"Large-scale heritage knowledge graphs like LOKG (Rossi and Meghini, 2024) provide
infrastructure for sharing rich metadata across institutions. Our 3D digitization
workflow generates IIIF 3D manifests compatible with LOKG aggregation patterns,
enabling future integration of volumetric heritage data."
page_number: "72"
- citation_id: https://w3id.org/heritage/citation/europeana-qa-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/europeana-aggregation-quality-2023
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
References knowledge graph quality assessment methods to inform Europeana
metadata quality framework.
citation_context: >-
"Knowledge graph quality assessment (Hogan et al., 2021) encompasses syntactic
validation, semantic consistency checking, and completeness metrics. We adapt
these principles for cultural heritage metadata, where domain-specific quality
dimensions include rights statement validity, multilingual completeness, and
alignment with controlled vocabularies (AAT, TGN, ULAN)."
page_number: "18"
- citation_id: https://w3id.org/heritage/citation/europeana-qa-cites-lokg-2024
citing_work: https://w3id.org/heritage/publication/europeana-aggregation-quality-2023
cited_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
citation_type: CITES_AS_EVIDENCE
citation_intent: >-
Uses LOKG as evidence of successful heritage metadata aggregation requiring
robust quality assessment.
citation_context: >-
"Recent heritage aggregation initiatives like LOKG (Rossi and Meghini, 2024)
demonstrate that federated knowledge graphs require tiered quality assessment
to balance inclusivity (accepting diverse metadata standards) with usability
(ensuring minimum quality thresholds for search and discovery)."
page_number: "35"
- citation_id: https://w3id.org/heritage/citation/crowdsourcing-chapter-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/crowdsourcing-metadata-enrichment-2023
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
Cites Wikidata as authoritative model for crowdsourced cultural heritage metadata.
citation_context: >-
"Wikidata's collaborative editing model (Vrandečić and Krötzsch, 2014) provides
a proven framework for museums implementing crowdsourcing initiatives. The
Rijksmuseum Challenge adapted Wikidata's quality control mechanisms—including
edit history tracking, volunteer reputation scoring, and curator review workflows—
to balance volunteer autonomy with professional curatorial authority."
page_number: "210"
- citation_id: https://w3id.org/heritage/citation/arxiv-provenance-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/arxiv-gnn-provenance-2024
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: CITES_AS_AUTHORITY
citation_intent: >-
References knowledge graph construction methods for modeling artwork provenance
as a graph structure.
citation_context: >-
"Art provenance networks are naturally represented as knowledge graphs (Hogan
et al., 2021), where artworks, collectors, galleries, and auctions form entities
connected by ownership, exhibition, and transaction relationships. Graph neural
networks can exploit this structure to predict missing provenance links from
incomplete historical records."
page_number: "3"
- citation_id: https://w3id.org/heritage/citation/arxiv-provenance-cites-wikidata-2018
citing_work: https://w3id.org/heritage/publication/arxiv-gnn-provenance-2024
cited_work: https://w3id.org/heritage/publication/jows-wikidata-2018
citation_type: USES_DATA_FROM
citation_intent: >-
Uses Wikidata as training data source for graph neural network provenance model.
citation_context: >-
"We train our GNN model on 180,000 artworks with documented provenance from
the Getty Provenance Index and Wikidata (Vrandečić and Krötzsch, 2014). Wikidata
provides structured provenance chains (P127 'owned by', P195 'collection', P156
'followed by') linking artworks to collectors, museums, and auction houses across
centuries."
page_number: "8"
- citation_id: https://w3id.org/heritage/citation/llm-cataloging-preprint-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/osf-automated-cataloging-2024
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: DISCUSSES
citation_intent: >-
Discusses knowledge graph representation challenges in the context of LLM-generated
museum metadata.
citation_context: >-
"Knowledge graphs enable museums to represent complex object relationships
(Hogan et al., 2021), but LLM-generated metadata may produce taxonomic inconsistencies
when classification schemas encode colonial power structures. We propose hybrid
workflows where LLMs suggest metadata values constrained by culturally appropriate
controlled vocabularies co-created with source communities."
page_number: "15"
- citation_id: https://w3id.org/heritage/citation/digital-preservation-book-cites-lokg-2024
citing_work: https://w3id.org/heritage/publication/digital-preservation-handbook-2023
cited_work: https://w3id.org/heritage/publication/tgdk-lokg-2024
citation_type: CITES_AS_EVIDENCE
citation_intent: >-
Cites LOKG as evidence for importance of metadata aggregation in digital preservation
planning.
citation_context: >-
"Federated heritage knowledge graphs like LOKG (Rossi and Meghini, 2024) enable
coordinated digital preservation strategies across institutions. When preservation
metadata (PREMIS events, fixity checks, format migrations) is aggregated via
knowledge graphs, institutions can identify at-risk formats, share migration tools,
and coordinate distributed preservation responsibilities."
page_number: "328"
- citation_id: https://w3id.org/heritage/citation/archival-appraisal-chapter-cites-kg-2021
citing_work: https://w3id.org/heritage/publication/archival-appraisal-digital-age-2024
cited_work: https://w3id.org/heritage/publication/swj-knowledge-graphs-2021
citation_type: DISCUSSES
citation_intent: >-
Discusses knowledge graph representation of archival relationships to inform
machine learning-assisted appraisal.
citation_context: >-
"Archival relationships (provenance, original order, custodial history) can be
modeled as knowledge graphs (Hogan et al., 2021), enabling machine learning
algorithms to learn contextual appraisal patterns. Noord-Hollands Archief's
ML-assisted workflow represents records as graph nodes with archival context
edges, allowing GNN models to propagate appraisal decisions through hierarchical
fonds structures."
page_number: "156"