AI Language Models: An Opportunity to Enhance Language Learning

Yan Cong
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Abstract

AI language models are increasingly transforming language research in various ways. How can language educators and researchers respond to the challenge posed by these AI models? Specifically, how can we embrace this technology to inform and enhance second language learning and teaching? In order to quantitatively characterize and index second language writing, the current work proposes the use of similarities derived from contextualized meaning representations in AI language models. The computational analysis in this work is hypothesis-driven. The current work predicts how similarities should be distributed in a second language learning setting. The results suggest that similarity metrics are informative of writing proficiency assessment and interlanguage development. Statistically significant effects were found across multiple AI models. Most of the metrics could distinguish language learners’ proficiency levels. Significant correlations were also found between similarity metrics and learners’ writing test scores provided by human experts in the domain. However, not all such effects were strong or interpretable. Several results could not be consistently explained under the proposed second language learning hypotheses. Overall, the current investigation indicates that with careful configuration and systematic metrics design, AI language models can be promising tools in advancing language education.
人工智能语言模型:加强语言学习的机遇
人工智能语言模型正日益以各种方式改变着语言研究。语言教育工作者和研究人员如何应对这些人工智能模型带来的挑战?具体来说,我们该如何利用这项技术为第二语言的学习和教学提供信息并加以改进?为了对第二语言写作进行定量表征和索引,目前的工作提出在人工智能语言模型中使用从语境化意义表征中得出的相似性。这项工作中的计算分析是假设驱动的。本研究预测了第二语言学习环境中相似性的分布情况。结果表明,相似性度量对写作能力评估和语言间发展具有参考价值。在多个人工智能模型中发现了具有统计学意义的效果。大多数指标都能区分语言学习者的能力水平。相似性指标与该领域人类专家提供的学习者写作测试分数之间也存在明显的相关性。然而,并非所有这些效应都很强或可以解释。一些结果无法用提出的第二语言学习假设来解释。总之,目前的调查表明,通过精心的配置和系统的度量设计,人工智能语言模型可以成为推动语言教育的有前途的工具。
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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