Data:
Cross-Context News Corpus for Protest Event-Related Knowledge Base Construction

dc.contributor.authorHürriyetog˘Lu, Ali
dc.contributor.authorYörük, Erdem
dc.contributor.authorMutlu, Osman
dc.contributor.authorFırat Durus¸An
dc.contributor.authorÇag˘Rı Yoltar
dc.contributor.authorYüret, Deniz
dc.contributor.authorGürel, Burak
dc.date.accessioned2025-10-24T11:05:08Z
dc.date.issued2021-04-23
dc.description.abstractWe describe a gold standard corpus of protest events that comprise various local and international Englishlanguage sources from various countries. The corpus contains document-, sentence-, and token-levelannotations. This corpus facilitates creating machine learning models that automatically classify news articlesand extract protest event-related information, constructing knowledge bases that enable comparative socialand political science studies. For each news source, the annotation starts with random samples of newsarticles and continues with samples drawn using active learning. Each batch of samples is annotated by twosocial and political scientists, adjudicated by an annotation supervisor, and improved by identifyingannotation errors semi-automatically. We found that the corpus possesses the variety and quality that arenecessary to develop and benchmark text classification and event extraction systems in a cross-contextsetting, contributing to the generalizability and robustness of automated text processing systems. This corpusand the reported results will establish a common foundation in automated protest event collection studies,which is currently lacking in the literature.
dc.description.abstractWe describe a gold standard corpus of protest events that comprise various local and international Englishlanguage sources from various countries. The corpus contains document-, sentence-, and token-levelannotations. This corpus facilitates creating machine learning models that automatically classify news articlesand extract protest event-related information, constructing knowledge bases that enable comparative socialand political science studies. For each news source, the annotation starts with random samples of newsarticles and continues with samples drawn using active learning. Each batch of samples is annotated by twosocial and political scientists, adjudicated by an annotation supervisor, and improved by identifyingannotation errors semi-automatically. We found that the corpus possesses the variety and quality that arenecessary to develop and benchmark text classification and event extraction systems in a cross-contextsetting, contributing to the generalizability and robustness of automated text processing systems. This corpusand the reported results will establish a common foundation in automated protest event collection studies,which is currently lacking in the literature.
dc.description.urihttps://dx.doi.org/10.57760/sciencedb.j00104.00092
dc.identifier.doi10.57760/sciencedb.j00104.00092
dc.identifier.openairedoi_________::93ea5c93a67be9bb046e5ead10a9d9b8
dc.identifier.urihttps://hdl.handle.net/20.500.14288/31143
dc.language.isoeng
dc.publisherScience Data Bank
dc.subjectEvent coreference resolution
dc.subjectContentious politics
dc.subjectFOS: Political science
dc.subjectText classification
dc.subjectNews
dc.subjectSocial science
dc.subjectProtests
dc.subjectPolitical science
dc.subjectEvent extraction
dc.subjectComputer science and technology
dc.subject.sdg16. Peace & justice
dc.titleCross-Context News Corpus for Protest Event-Related Knowledge Base Construction
dc.typeDataset
dspace.entity.typeData
local.import.sourceOpenAire

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