社论

IF 4.6 1区 文学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Recall Pub Date : 2022-04-18 DOI:10.1017/S0958344022000040
Shona Whyte
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Similarly, Lin’s paper on a new web-based app focusing on formulaic expressions in YouTube videos sits at the intersection of MALL and learning of vocabulary and phraseology. As you will read, the studies include a range of methodologies and research designs, from meta-analysis (Burston & Giannakou; Yu & Trainin), to survey (Puebla, Fievet, Tsopanidi & Clahsen), experimental study (Dziemianko; Sato et al.) and computer modelling (Gaillat et al.), through to research and development (Lin). Our first paper shows that collaborative research between universities in Paris and Galway is making headway in the complex area of automatic L2 proficiency assessment by developing AI systems to analyse learners’ writing samples and assign them to appropriate CEFR proficiency levels. The research by Thomas Gaillat, Andrew Simpkin, Nicolas Ballier, Bernardo Stearns, Annanda Sousa, Manon Bouyé and Manel Zarrouk focuses on machine learning from a large corpus of Cambridge and Education First essays, using linguistic microsystems constructed around L2 functions such as modals of obligation, expressions of time, and proforms, for instance, in addition to more traditional measures of complexity involving lexis, syntax, semantics, and discourse features. After training on some 12,500 English L2 texts written by around 1,500 L1 French and Spanish examinees, which had been assigned to one of the six CEFR levels by human raters, the AI system reached 82% accuracy in identifying writers’ proficiency levels. It also identified specific microsystems associated with learners at level A (nominals, modals of obligation, duration, quantification), level B (quantifiers and determiners), and level C (proforms and should/will). 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引用次数: 0

摘要

五月来了,随之而来的是2022年的新一期ReCALL。这一次,我们有七篇论文,涵盖三个广泛的主题:第一篇涉及自动二语水平评估,第二篇涉及移动辅助语言学习(MALL),第三篇涉及二语词汇习得,特别是视听材料的作用。几篇论文借鉴了Paivio(1971)的双重加工理论,根据该理论,“言语和视觉模式下的知识表征可以促进加工,因此比依赖单一模式的表征更有效地帮助理解和保留知识”(Sato,Lai&Burden)。MALL和词汇研究之间也有一些重叠,因为Burston和Giannakou的MALL荟萃分析表明,到目前为止,最常见的MALL学习目标实际上是词汇学习。同样,林在一个新的基于网络的应用程序上发表的论文,专注于YouTube视频中的公式化表达,这是MALL与词汇和短语学习的交叉点。正如你所读到的,这些研究包括一系列方法和研究设计,从荟萃分析(Burston和Giannakou;Yu和Trainin)到调查(Puebla、Fievet、Tsopanidi和Clahsen)、实验研究(Dziemianko;Sato等人)和计算机建模(Gaillat等人),再到研发(Lin)。我们的第一篇论文表明,巴黎和戈尔韦大学之间的合作研究通过开发人工智能系统来分析学习者的写作样本并将其分配到适当的CEFR水平,在自动二语水平评估的复杂领域取得了进展。Thomas Gaillat、Andrew Simpkin、Nicolas Ballier、Bernardo Stearns、Annanda Sousa、Manon Bouyé和Manel Zarrouk的研究重点是从剑桥大学和教育第一大学的大量论文中进行机器学习,使用围绕第二语言功能构建的语言微系统,例如义务模式、时间表达和形式,除了涉及词汇、句法、语义和话语特征的更传统的复杂性度量之外。人工智能系统对大约1500名一年级法语和西班牙语考生撰写的大约12500篇英语二语文本进行了培训,这些文本被人类评分员分配到六个CEFR级别之一,在识别作者的熟练程度方面,人工智能系统的准确率达到了82%。它还确定了与A级(主词、义务模式、持续时间、量化)、B级(量词和限定词)和C级(形式词和应/意)学习者相关的特定微观系统。然而,该模型的外部验证并不成功:使用逻辑回归,ASAG语料库(一组不同的评分简短答案)中只有51%的文本被正确识别,使用更复杂的弹性网方法,这一比例上升到59%。接下来是MALL论文,Jack Burston和Konstantinos Giannakou对过去25年中发表在知名CALL和教育技术期刊以及研究生论文中的大量研究进行了广泛的荟萃分析。他们的工作重点是学习结果的研究,并表明大约一半的报告学习效果的研究是在大学层面进行的,大多数是在持续8-14周的干预中进行的,最常见的是在亚洲、海湾国家和美国。在这里审查的研究中,95%的研究将英语作为目标语言,正如所指出的,这是迄今为止最常见的学习目标
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Editorial
May is here and with it comes a new issue of ReCALL for 2022. This time, we have seven papers covering three broad topics: the first involves automatic L2 proficiency assessment, the second, mobile-assisted language learning (MALL), and the third, L2 vocabulary acquisition, particularly the role of audiovisual materials. Several papers draw on Paivio’s (1971) dual processing theory, according to which “knowledge representation in verbal and visual modes may facilitate processing and therefore aid understanding and retention of knowledge more effectively than representations depending on a single mode” (Sato, Lai & Burden). There is also some overlap between the MALL and vocabulary studies, since the MALL meta-analysis by Burston and Giannakou reveals that by far the most common MALL learning objective is, in fact, lexical learning. Similarly, Lin’s paper on a new web-based app focusing on formulaic expressions in YouTube videos sits at the intersection of MALL and learning of vocabulary and phraseology. As you will read, the studies include a range of methodologies and research designs, from meta-analysis (Burston & Giannakou; Yu & Trainin), to survey (Puebla, Fievet, Tsopanidi & Clahsen), experimental study (Dziemianko; Sato et al.) and computer modelling (Gaillat et al.), through to research and development (Lin). Our first paper shows that collaborative research between universities in Paris and Galway is making headway in the complex area of automatic L2 proficiency assessment by developing AI systems to analyse learners’ writing samples and assign them to appropriate CEFR proficiency levels. The research by Thomas Gaillat, Andrew Simpkin, Nicolas Ballier, Bernardo Stearns, Annanda Sousa, Manon Bouyé and Manel Zarrouk focuses on machine learning from a large corpus of Cambridge and Education First essays, using linguistic microsystems constructed around L2 functions such as modals of obligation, expressions of time, and proforms, for instance, in addition to more traditional measures of complexity involving lexis, syntax, semantics, and discourse features. After training on some 12,500 English L2 texts written by around 1,500 L1 French and Spanish examinees, which had been assigned to one of the six CEFR levels by human raters, the AI system reached 82% accuracy in identifying writers’ proficiency levels. It also identified specific microsystems associated with learners at level A (nominals, modals of obligation, duration, quantification), level B (quantifiers and determiners), and level C (proforms and should/will). External validation for the model was less successful, however: only 51% of texts from the ASAG corpus (a different set of graded short answers) were correctly identified using logistic regression, rising to 59% with a more sophisticated elastic net method. Moving on to the MALL papers, Jack Burston and Konstantinos Giannakou report on an extensive meta-analysis of a large number of studies published over the past quarter century in established CALL and education technology journals as well as in graduate theses. Their work focuses on research on learning outcomes and shows that around half the studies reporting learning effects were conducted at university level, most in interventions lasting 8–14 weeks, and most frequently in Asia, the Gulf States, and the US. Of the studies reviewed here, 95% had English as the target language, and, as noted, by far the most common learning objective
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来源期刊
Recall
Recall Multiple-
CiteScore
8.50
自引率
4.40%
发文量
17
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