Exploiting the English Grammar Profile for L2 grammatical analysis with LLMs
Stefano Bann\`o, Penny Karanasou, Kate Knill, Mark Gales

TL;DR
This paper introduces a framework using the English Grammar Profile and large language models to analyze L2 learners' grammatical attempts, classify proficiency, and provide detailed feedback, advancing automated language assessment.
Contribution
It presents a novel hybrid approach combining rule-based and LLM classifiers for grammatical detection and proficiency prediction, with an emphasis on positive feedback and automated correction.
Findings
LLMs outperform rule-based methods on nuanced constructs.
Hybrid pipelines yield the best proficiency assessment results.
Automated correction approaches closely match manual correction performance.
Abstract
Evaluating the grammatical competence of second language (L2) learners is essential both for providing targeted feedback and for assessing proficiency. To achieve this, we propose a novel framework leveraging the English Grammar Profile (EGP), a taxonomy of grammatical constructs mapped to the proficiency levels of the Common European Framework of Reference (CEFR), to detect learners' attempts at grammatical constructs and classify them as successful or unsuccessful. This detection can then be used to provide fine-grained feedback. Moreover, the grammatical constructs are used as predictors of proficiency assessment by using automatically detected attempts as predictors of holistic CEFR proficiency. For the selection of grammatical constructs derived from the EGP, rule-based and LLM-based classifiers are compared. We show that LLMs outperform rule-based methods on semantically and…
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Taxonomy
TopicsSecond Language Acquisition and Learning · Natural Language Processing Techniques · Text Readability and Simplification
