Litcius/Paper detail

Refining and modifying the EFCAMDAT

Itamar Shatz

2020International Journal of Learner Corpus Research19 citationsDOI

Abstract

Abstract This report outlines the development of a new corpus, which was created by refining and modifying the largest open-access L2 English learner database – the EFCAMDAT. The extensive data-curation process, which can inform the development and use of other corpora, included procedures such as converting the database from XML to a tabular format, and removing problematic markup tags and non-English texts. The final dataset contains two corresponding samples, written by similar learners in response to different prompts, which represents a unique research opportunity when it comes to analyzing task effects and conducting replication studies. Overall, the resulting corpus contains ~406,000 texts in the first sample and ~317,000 texts in the second sample, written by learners representing diverse L1s and a large range of L2 proficiency levels.

Topics & Concepts

Computer scienceMarkup languageXMLTask (project management)Sample (material)Natural language processingProcess (computing)Replication (statistics)World Wide WebInformation retrievalArtificial intelligenceProgramming languageStatisticsManagementChromatographyEconomicsMathematicsChemistryNatural Language Processing TechniquesSecond Language Acquisition and LearningLexicography and Language Studies