使用自动评分技术评估第二语言英语口语:检查自动评分的可靠性

IF 2.7 3区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Assessment in Education-Principles Policy & Practice Pub Date : 2021-07-04 DOI:10.1080/0969594X.2021.1979467
Jing Xu, Edmund Jones, V. Laxton, E. Galaczi
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引用次数: 3

摘要

机器学习的最新进展使学习者语音的自动评分得到广泛应用,然而,为将自动评分技术应用于评估提供支持的验证研究仍处于起步阶段。教育测量和语言评估社区都呼吁在描述评分算法和关于自动评分可靠性的研究证据方面提高透明度。本文报告了一项研究,该研究利用在线英语口语测试中产生的候选回答来调查自动标记的可靠性。基于“一致性限制”和对自动评分者分数和个别考官分数的多方面拉希分析,该研究发现,自动评分者虽然表现出出色的内部一致性,但比考官公平的平均分数稍微宽松一些,尤其是对低水平的说话者。此外,我们还发现一种被称为语言质量的自动标记不确定性度量,它表示语音识别的置信度,对于预测自动标记的可靠性和标记异常语音是有用的。
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Assessing L2 English speaking using automated scoring technology: examining automarker reliability
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.
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来源期刊
Assessment in Education-Principles Policy & Practice
Assessment in Education-Principles Policy & Practice EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
5.70
自引率
3.10%
发文量
29
期刊介绍: Recent decades have witnessed significant developments in the field of educational assessment. New approaches to the assessment of student achievement have been complemented by the increasing prominence of educational assessment as a policy issue. In particular, there has been a growth of interest in modes of assessment that promote, as well as measure, standards and quality. These have profound implications for individual learners, institutions and the educational system itself. Assessment in Education provides a focus for scholarly output in the field of assessment. The journal is explicitly international in focus and encourages contributions from a wide range of assessment systems and cultures. The journal''s intention is to explore both commonalities and differences in policy and practice.
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