Steven Bethard

E857264

Steven Bethard is a computer scientist and natural language processing researcher known for his work on temporal information extraction, semantic role labeling, and clinical NLP.

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Steven Bethard canonical 1

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Predicate Object
instanceOf computer scientist
natural language processing researcher
affiliation Association for Computational Linguistics NERFINISHED
citizenship United States of America
surface form: United States
coAuthored “ClearTK: A UIMA toolkit for statistical natural language processing” NERFINISHED
“Identifying Temporal Relations in Text: Annotation Scheme and Corpus” NERFINISHED
“SEMAFOR: Semantic Frame Parsing with Machine Learning” NERFINISHED
“Temporal Annotation in the Clinical Domain” NERFINISHED
developed ClearTK NLP toolkit NERFINISHED
educatedAt University of Colorado Boulder NERFINISHED
employer University of Arizona NERFINISHED
fieldOfWork clinical natural language processing
computational linguistics
natural language processing
semantic role labeling
temporal information extraction
hasAcademicAdvisor James H. Martin NERFINISHED
Martha Palmer NERFINISHED
hasAcademicPosition associate professor at University of Arizona
hasGoogleScholarProfile https://scholar.google.com/citations?user=0sKQK1cAAAAJ
hasHIndex 40+
hasHomepage https://bethard.faculty.arizona.edu/
hasORCID 0000-0002-0795-8940
hasResearchArea clinical temporal reasoning
semantic role labeling for PropBank and FrameNet
temporal annotation standards
hasRole organizer of clinical NLP shared tasks
hasTaughtCourse machine learning
natural language processing
text mining
knownFor clinical NLP research
semantic role labeling research
temporal information extraction research
language English
memberOf University of Arizona Department of Computer Science NERFINISHED
organized SemEval shared tasks on temporal relations in text NERFINISHED
participatedIn SemEval shared tasks on temporal information processing NERFINISHED
researchInterest clinical text processing
information extraction
machine learning for NLP
semantic parsing
temporal reasoning
reviewerFor ACL conferences NERFINISHED
Computational Linguistics journal NERFINISHED
EMNLP conferences NERFINISHED
Journal of Biomedical Informatics NERFINISHED

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Nathaniel Chambers coAuthorWith Steven Bethard