The Linguistic Impact of Generative Artificial Intelligence on Academic Writing: A Corpus-Based Investigation of Human–AI Text Production
DOI:
https://doi.org/10.63544/ijss.v5i4.313Keywords:
Generative Artificial Intelligence, Academic Writing, Corpus Linguistics, AI-Generated Text, Human–AI Collaboration, Academic IntegrityAbstract
The emergence of Generative Artificial Intelligence (GAI) has rapidly changed academic writing by offering high-quality tools that are able to generate coherent, grammatically correct, and contextually relevant text. Although the use of these technologies is increasingly becoming popular, there is still the issue of the linguistic impact of these technologies, authorship authenticity, and the effects of these technologies on academic integrity. This research paper explores the linguistic effects of generative artificial intelligence on academic text on the production of text by human and artificial intelligences based on a corpus analysis of human and AI text production. The research design used was a quantitative cross-sectional research design, and 275 participants who comprised of students, researchers, and faculty members of various academic disciplines were used to collect data. The questionnaire was a structured questionnaire comprising 30 items, six constructs, to measure awareness and use of generative AI, linguistic features of AI-generated writing, effects on writing quality, human-AI disparities in text generation, ethical issues, and future implications of AI-assisted writing. The data were analysed with the help of descriptive statistics, reliability analysis, and chi-square testing with the help of SPSS Version 29.
From the results, it was found that academic writers were highly aware and made use of generative AI tools. The respondents perceived that AI-generated texts were grammatically correct and had a good vocabulary, while human-generated texts were more creative, with unique authorial voice and varied language. The results also showed that using AI to write is far more effective in improving clarity, cohesion, organization, and quality of the writing. Nevertheless, there were major apprehensions about academic honesty, the risk of plagiarism, and overreliance on automatic content creation. The participants also agreed that the development of institutional guidelines, AI literacy programmes, and human supervision processes to ensure responsible use should be supported. Furthermore, the respondents believed that generative AI would in the future effect more in the field of scholarly communication and academic writing.
The given study can be implemented into the existing body of work in the field of artificial intelligence and corpus linguistics since it offers the empirical evidence of the dynamic relationship between human and AI-produced academic speech. The findings highlight the importance of the technological innovation/moral responsibility balance, critical thinking and authenticity of the scholarship in the contemporary higher educational institution.
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Copyright (c) 2026 Farhan Ahmad, Kainat Saleem, Omar J. Alkhatib , Azzah Khadim Hussain

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