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arXiv 提交日期: 2026-03-04
📄 Abstract - STEM Faculty Perspectives on Generative AI in Higher Education

Generative artificial intelligence (GenAI) tools are increasingly present in higher education, yet their adoption has been largely student-driven, requiring instructors to respond to technologies already embedded in classroom practices. While some faculty have embraced GenAI for pedagogical purposes such as content generation, assessment support, and curriculum design, others approach these tools with caution, citing concerns about student learning, assessment validity, and academic integrity. Understanding faculty perspectives is therefore essential for informing effective pedagogical strategies and institutional policies. In this paper, we present findings from a focus group study with 29 STEM faculty members at a large public university in the United States. We examine how faculty integrate GenAI into their courses, the benefits and challenges they perceive for student learning, and the institutional support they identify as necessary for effective and responsible adoption. Our findings highlight key patterns in how STEM faculty engage with GenAI, reflecting both active adoption and cautious use. Faculty described a range of pedagogical applications alongside concerns about student learning, assessment, and academic integrity. Overall, the results suggest that effective integration of GenAI in higher education requires rethinking assessment, pedagogy, and institutional governance in addition to technical adoption.

顶级标签: llm natural language processing aigc
详细标签: higher education faculty perspectives pedagogical integration academic integrity stem education 或 搜索:

STEM领域教师对高等教育中生成式人工智能的看法 / STEM Faculty Perspectives on Generative AI in Higher Education


1️⃣ 一句话总结

这项研究通过访谈美国大学STEM教师发现,他们对在教学中使用生成式AI既看到辅助教学的价值,也担忧其对学生学习、评估和学术诚信的挑战,并指出有效整合需要从教学、评估到学校政策进行系统性反思。

源自 arXiv: 2603.04001