How Ready Are Generative Pre-trained Large Language Models for Explaining Bengali Grammatical Errors?
Subhankar Maity, Aniket Deroy, Sudeshna Sarkar

TL;DR
This paper evaluates the effectiveness of various large language models in explaining Bengali grammatical errors, highlighting current limitations and advocating for human oversight to enhance educational feedback in low-resource language settings.
Contribution
Introduces a Bengali GEE dataset and benchmarks multiple LLMs, revealing their limitations and emphasizing the need for human intervention to improve grammatical error explanations.
Findings
Current LLMs have limited accuracy in Bengali GEE.
Human oversight significantly improves explanation quality.
Benchmark dataset enables future research in Bengali GEC.
Abstract
Grammatical error correction (GEC) tools, powered by advanced generative artificial intelligence (AI), competently correct linguistic inaccuracies in user input. However, they often fall short in providing essential natural language explanations, which are crucial for learning languages and gaining a deeper understanding of the grammatical rules. There is limited exploration of these tools in low-resource languages such as Bengali. In such languages, grammatical error explanation (GEE) systems should not only correct sentences but also provide explanations for errors. This comprehensive approach can help language learners in their quest for proficiency. Our work introduces a real-world, multi-domain dataset sourced from Bengali speakers of varying proficiency levels and linguistic complexities. This dataset serves as an evaluation benchmark for GEE systems, allowing them to use context…
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Taxonomy
TopicsNatural Language Processing Techniques · Text Readability and Simplification · Topic Modeling
