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Assessing L2 English speaking using automated scoring technology: examining automarker reliability

Jing Xu, Edmund Jones, Victoria Laxton, Evelina D. Galaczi

2021Assessment in Education Principles Policy and Practice32 citationsDOI

Abstract

Recent advances in machine learning have made automated scoring of learner speech widespread, and yet validation research that provides support for applying automated scoring technology to assessment is still in its infancy. Both the educational measurement and language assessment communities have called for greater transparency in describing scoring algorithms and research evidence about the reliability of automated scoring. This paper reports on a study that investigated the reliability of an automarker using candidate responses produced in an online oral English test. Based on ‘limits of agreement’ and multi-faceted Rasch analyses on automarker scores and individual examiner scores, the study found that the automarker, while exhibiting excellent internal consistency, was slightly more lenient than examiner fair average scores, particularly for low-proficiency speakers. Additionally, it was found that an automarker uncertainty measure termed Language Quality, which indicates the confidence of speech recognition, was useful for predicting automarker reliability and flagging abnormal speech.

Topics & Concepts

Reliability (semiconductor)Computer scienceFlaggingRasch modelNatural language processingArtificial intelligenceConsistency (knowledge bases)Quality (philosophy)Test (biology)Machine learningPsychologyPower (physics)ArchaeologyBiologyQuantum mechanicsEpistemologyPhysicsPaleontologyHistoryDevelopmental psychologyPhilosophyNatural Language Processing TechniquesSpeech Recognition and SynthesisSpeech and dialogue systems
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