Beatriz Antonieta Moya Figueroa, Sarah Elaine Eaton
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引用次数: 0
Abstract
New developments in the Artificial Intelligence (AI) field allowed the development of Generative Artificial Intelligence (GenAI), capable of creating text resembling what humans can produce. As a result, educators’ concerns in the higher education sector quickly emerged. Many organizations and experts have addressed these concerns through recommendations. In this conceptual paper, we draw from the Integrated Model for Academic Integrity through a Scholarship of Teaching and Learning Lens to examine and stimulate discussion from eleven documents that focus on using GenAI with integrity. We identified recommendations suitable for the individual (micro), the departmental/program (meso), the institutional (macro), and the interinstitutional/ national/ international (mega) levels concerning two core elements of the model: “high-impact professional learning for individuals and groups” and “local-level leadership and microcultures.” Suggestions around the core element “scholarship, research and inquiry” were lacking at the micro and meso levels; likewise, recommendations for the core element “learning spaces, pedagogies, and technologies” were also absent at the meso, macro, and mega levels. We acknowledge that these recommendations focus on learning, involve various stakeholders, and go beyond student conduct, which aligns with current approaches to academic integrity. However, some gaps need further exploration. We highlight the need to develop more specific and practical guidance and resources for educational stakeholders around GenAI issues related to academic integrity, explore how to better support networks and leaders in higher education in creating the conditions for ethical GenAI use, and emphasizing the need for an Equity, Diversity, and Inclusion lens on GenAI.
人工智能(AI)领域的新发展使得生成式人工智能(GenAI)得以发展,它能够创造出与人类相似的文本。因此,高等教育领域教育工作者的担忧迅速出现。许多组织和专家通过建议来解决这些问题。在这篇概念性论文中,我们借鉴了 "通过教学学术的视角实现学术诚信的综合模式"(Integrated Model for Academic Integrity through a Scholarship of Teaching and Learning Lensens),研究了 11 份关注如何诚信使用 GenAI 的文件,并引发了讨论。我们确定了适合个人(微观)、部门/项目(中观)、机构(宏观)和机构间/国家/国际(巨型)层面的建议,涉及该模式的两个核心要素:"个人和团体的高效专业学习 "和 "地方一级的领导力和微观文化"。围绕核心要素 "学术、研究和探究 "的建议在微观和中观层面都缺乏;同样,关于核心 要素 "学习空间、教学法和技术 "的建议在中观、宏观和超大层面也缺乏。我们承认,这些建议以学习为重点,涉及不同的利益相关者,并超越了学生行为的范畴,这与当前学术诚信的方法是一致的。然而,有些差距需要进一步探讨。我们强调有必要围绕与学术诚信相关的GenAI问题,为教育利益相关者开发更具体、更实用的指导和资源,探索如何更好地支持高等教育网络和领导者为合乎道德的GenAI使用创造条件,并强调有必要从公平、多样性和包容性的角度看待GenAI。