247 lines
6.4 KiB
YAML
247 lines
6.4 KiB
YAML
---
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# Semantic Web & Linked Data Journals
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# Extracted from EXA web search on 2025-11-09
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# Journals focused on semantic web, linked data, ontologies, and knowledge graphs
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- journal_id: https://w3id.org/heritage/journal/semantic-web
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journal_title: "Semantic Web"
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alternative_journal_titles:
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- "SWJ"
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- "Semantic Web – Interoperability, Usability, Applicability"
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issn: "1570-0844"
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eissn: "2210-4968"
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publisher:
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organization_id: https://ror.org/03qryx823
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organization_name: "IOS Press"
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organization_type: "Academic Publisher"
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location: "Amsterdam, NL"
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homepage: "https://www.iospress.com"
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journal_url: "http://www.semantic-web-journal.net"
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impact_factor: 3.0
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cite_score: 6.8
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subjects:
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- "Semantic Web"
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- "Linked Data"
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- "Ontology Engineering"
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- "Knowledge Representation"
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- "Artificial Intelligence"
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- "Computer Sciences"
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- "Knowledge Graphs"
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open_access_status: FULLY_OPEN_ACCESS
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indexing_services:
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- "Web of Science"
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- "Scopus"
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- "DBLP"
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- "DOAJ"
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- "ACM Digital Library"
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provenance:
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data_source: CONVERSATION_NLP
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data_tier: TIER_2_VERIFIED
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extraction_date: "2025-11-09T20:00:00Z"
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extraction_method: "EXA web search with IOS Press metadata verification"
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confidence_score: 0.98
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verified_date: "2025-11-09T20:00:00Z"
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verified_by: "EXA web search + manual verification"
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- journal_id: https://w3id.org/heritage/journal/jows
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journal_title: "Journal of Web Semantics"
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alternative_journal_titles:
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- "JoWS"
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- "Journal of Web Semantics: Science, Services and Agents on the World Wide Web"
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issn: "1570-8268"
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eissn: "1873-7749"
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publisher:
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organization_id: https://ror.org/02jx3x895
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organization_name: "Elsevier"
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organization_type: "Academic Publisher"
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location: "Amsterdam, NL"
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homepage: "https://www.elsevier.com"
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journal_url: "https://www.sciencedirect.com/journal/journal-of-web-semantics"
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impact_factor: 3.1
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cite_score: 7.4
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subjects:
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- "Semantic Web"
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- "Knowledge Graphs"
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- "Linked Data"
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- "Ontology Engineering"
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- "Artificial Intelligence"
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- "Generative AI"
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- "Neuro-Symbolic Systems"
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- "Knowledge Technologies"
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- "Database Systems"
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- "Information Retrieval"
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open_access_status: HYBRID_OPEN_ACCESS
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indexing_services:
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- "Web of Science"
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- "Scopus"
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- "DBLP"
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- "ACM Digital Library"
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- "SSRN"
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provenance:
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data_source: CONVERSATION_NLP
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data_tier: TIER_2_VERIFIED
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extraction_date: "2025-11-09T20:00:00Z"
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extraction_method: "EXA web search with Elsevier ScienceDirect metadata verification"
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confidence_score: 0.98
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verified_date: "2025-11-09T20:00:00Z"
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verified_by: "EXA web search + manual verification"
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- journal_id: https://w3id.org/heritage/journal/tgdk
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journal_title: "Transactions on Graph Data and Knowledge"
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alternative_journal_titles:
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- "TGDK"
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issn: "2942-7517"
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publisher:
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organization_id: https://ror.org/05591te55
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organization_name: "Schloss Dagstuhl – Leibniz-Zentrum für Informatik"
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organization_type: "Research Institute"
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location: "Wadern, DE"
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homepage: "https://www.dagstuhl.de"
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journal_url: "https://drops.dagstuhl.de/entities/journal/TGDK"
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impact_factor: null
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cite_score: null
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subjects:
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- "Graph Data"
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- "Knowledge Graphs"
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- "Linked Data"
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- "Semantic Web"
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- "Graph Algorithms"
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- "Graph Databases"
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- "Graph Representation Learning"
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- "Knowledge Representation"
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- "Data Integration"
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- "Data Science"
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- "Information Extraction"
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open_access_status: FULLY_OPEN_ACCESS
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indexing_services:
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- "DBLP"
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- "DOAJ"
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- "OpenAIRE"
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provenance:
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data_source: CONVERSATION_NLP
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data_tier: TIER_2_VERIFIED
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extraction_date: "2025-11-09T20:00:00Z"
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extraction_method: "EXA web search with Dagstuhl Publishing metadata verification"
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confidence_score: 0.98
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verified_date: "2025-11-09T20:00:00Z"
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verified_by: "EXA web search + manual verification"
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- journal_id: https://w3id.org/heritage/journal/ai-journal
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journal_title: "Artificial Intelligence"
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alternative_journal_titles:
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- "AIJ"
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- "Artificial Intelligence Journal"
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issn: "0004-3702"
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eissn: "1872-7921"
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publisher:
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organization_id: https://ror.org/02jx3x895
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organization_name: "Elsevier"
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organization_type: "Academic Publisher"
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location: "Amsterdam, NL"
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homepage: "https://www.elsevier.com"
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journal_url: "https://www.sciencedirect.com/journal/artificial-intelligence"
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impact_factor: 14.4
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cite_score: 19.7
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subjects:
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- "Artificial Intelligence"
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- "Knowledge Representation"
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- "Machine Learning"
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- "Natural Language Processing"
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- "Computer Vision"
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- "Reasoning"
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- "Planning"
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- "Semantic Web"
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open_access_status: HYBRID_OPEN_ACCESS
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indexing_services:
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- "Web of Science"
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- "Scopus"
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- "DBLP"
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- "ACM Digital Library"
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- "IEEE Xplore"
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provenance:
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data_source: CONVERSATION_NLP
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data_tier: TIER_2_VERIFIED
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extraction_date: "2025-11-09T20:00:00Z"
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extraction_method: "Manual entry based on established journal metadata"
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confidence_score: 1.0
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verified_date: "2025-11-09T20:00:00Z"
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verified_by: "Manual verification"
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- journal_id: https://w3id.org/heritage/journal/jdiq
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journal_title: "ACM Journal of Data and Information Quality"
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alternative_journal_titles:
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- "JDIQ"
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- "ACM JDIQ"
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issn: "1936-1955"
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eissn: "1936-1963"
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publisher:
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organization_id: https://ror.org/03c6z6f89
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organization_name: "Association for Computing Machinery"
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organization_type: "Professional Association"
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location: "New York, NY, US"
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homepage: "https://www.acm.org"
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journal_url: "https://dl.acm.org/journal/jdiq"
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impact_factor: 2.9
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cite_score: 6.4
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subjects:
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- "Data Quality"
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- "Information Quality"
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- "Data Integration"
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- "Data Provenance"
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- "Semantic Data Management"
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- "Knowledge Graphs"
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- "Linked Data Quality"
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open_access_status: HYBRID_OPEN_ACCESS
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indexing_services:
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- "Web of Science"
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- "Scopus"
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- "DBLP"
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- "ACM Digital Library"
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provenance:
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data_source: CONVERSATION_NLP
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data_tier: TIER_2_VERIFIED
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extraction_date: "2025-11-09T20:00:00Z"
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extraction_method: "Manual entry based on ACM metadata"
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confidence_score: 1.0
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verified_date: "2025-11-09T20:00:00Z"
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verified_by: "Manual verification"
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