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?:about
?:abstract
  • Research in Social Science is usually based on survey data where individual research questions relate to observable concepts (variables). However, due to a lack of standards for data citations a reliable identification of the variables used is often difficult. In this paper, we present a work-in-progress study that seeks to provide a solution to the variable detection task based on supervised machine learning algorithms, using a linguistic analysis pipeline to extract a rich feature set, including terminological concepts and similarity metric scores. Further, we present preliminary results on a small dataset that has been specifically designed for this task, yielding modest improvements over the baseline. (xsd:string)
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?:dateModified
  • 2017 (xsd:gyear)
?:datePublished
  • 2017 (xsd:gyear)
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  • true (xsd:boolean)
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  • en (xsd:string)
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?:name
  • Mining Social Science Publications for Survey Variables (xsd:string)
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  • Konferenzbeitrag (xsd:string)
?:reference
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  • Proceedings of the Second Workshop on NLP and Computational Social Science (xsd:string)
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  • GESIS-SSOAR (xsd:string)
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?:url
?:urn
  • urn:nbn:de:0168-ssoar-57722-7 ()