Whose ChatGPT? Unveiling Real-World Educational Inequalities Introduced by Large Language Models
The universal availability of ChatGPT and other similar tools since late 2022 has prompted tremendous public excitement and experimental effort about the potential of large language models (LLMs) to improve learning experience and outcomes, especially for learners from disadvantaged backgrounds. How...
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Zusammenfassung: | The universal availability of ChatGPT and other similar tools since late 2022
has prompted tremendous public excitement and experimental effort about the
potential of large language models (LLMs) to improve learning experience and
outcomes, especially for learners from disadvantaged backgrounds. However,
little research has systematically examined the real-world impacts of LLM
availability on educational equity beyond theoretical projections and
controlled studies of innovative LLM applications. To depict trends of post-LLM
inequalities, we analyze 1,140,328 academic writing submissions from 16,791
college students across 2,391 courses between 2021 and 2024 at a public,
minority-serving institution in the US. We find that students' overall writing
quality gradually increased following the availability of LLMs and that the
writing quality gaps between linguistically advantaged and disadvantaged
students became increasingly narrower. However, this equitizing effect was more
concentrated on students with higher socioeconomic status. These findings shed
light on the digital divides in the era of LLMs and raise questions about the
equity benefits of LLMs in early stages and highlight the need for researchers
and practitioners on developing responsible practices to improve educational
equity through LLMs. |
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DOI: | 10.48550/arxiv.2410.22282 |