Towards a Digital Assessment: Artificial Intelligence Assisted Error Analysis in ESL

Manuel Macías Borrego
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Abstract

The study we present here aims to explore the possibilities that new Artificial Intelligence tools offer teachers to design assessments to improve the written proficiency of students of English as a Foreign Language (the participants in this study have predominantly Spanish as their L1) in a University English Language Course with CEFR B2 objective. The group we are going to monitor is, as far as the Spanish university system is concerned, on average: more than sixty students, with diverse backgrounds and unequal proficiency in English. In such conditions, the teacher must be very attentive to meet the needs of all students/learners and, at the same time, keep track of successes and failures in the designed study plans. One of the most notable reasons for subject/class failure and dropout, in a scenario such as the one described, is the performance and time dedication to written competence (Cabrera, 2014 & López Urdaneta, 2011). Consequently, we will explore whether the union of all the theoretical baggage that underpins the linguistic and pedagogical tradition of Error Analysis, one of the most notable tools for enhancing the writing competence of English as a Foreign Language, and new intelligent technologies can provide new perspectives and strategies to effectively help learners of English as a Foreign Language to produce more appropriate written texts (more natural outputs) and, at the same time, to check whether an AI-assisted Error Analysis-based assessment produces better results in error avoidance and rule application in the collected writing samples.
迈向数字化评估:人工智能辅助ESL错误分析
我们在此提出的研究旨在探索新的人工智能工具为教师提供的可能性,以设计评估,以提高大学英语语言课程中以CEFR B2为目标的英语作为外语的学生(本研究的参与者主要以西班牙语为母语)的书面能力。就西班牙大学系统而言,我们要监控的群体平均有60多名学生,他们背景各异,英语水平参差不齐。在这种情况下,教师必须非常细心地满足所有学生/学习者的需求,同时跟踪所设计的学习计划的成功和失败。在如上所述的场景中,科目/班级失败和辍学的最显著原因之一是对书面能力的表现和时间投入(Cabrera, 2014 & López Urdaneta, 2011)。因此,我们将探讨,作为提高对外英语写作能力最显著的工具之一,错误分析的语言学和教学传统的所有理论包袱与新的智能技术的结合,是否可以提供新的视角和策略,有效地帮助对外英语学习者产生更合适的书面文本(更自然的输出),同时,检查人工智能辅助的基于错误分析的评估是否在收集的写作样本中产生更好的错误避免和规则应用结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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