Large language models meet user interfaces: The case of provisioning feedback

Stanislav Pozdniakov , Jonathan Brazil , Solmaz Abdi , Aneesha Bakharia , Shazia Sadiq , Dragan Gašević , Paul Denny , Hassan Khosravi
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Abstract

Incorporating Generative Artificial Intelligence (GenAI), especially Large Language Models (LLMs), into educational settings presents valuable opportunities to boost the efficiency of educators and enrich the learning experiences of students. A significant portion of the current use of LLMs by educators has involved using conversational user interfaces (CUIs), such as chat windows, for functions like generating educational materials or offering feedback to learners. The ability to engage in real-time conversations with LLMs, which can enhance educators' domain knowledge across various subjects, has been of high value. However, it also presents challenges to LLMs' widespread, ethical, and effective adoption. Firstly, educators must have a degree of expertise, including tool familiarity, AI literacy and prompting to effectively use CUIs, which can be a barrier to adoption. Secondly, the open-ended design of CUIs makes them exceptionally powerful, which raises ethical concerns, particularly when used for high-stakes decisions like grading. Additionally, there are risks related to privacy and intellectual property, stemming from the potential unauthorised sharing of sensitive information. Finally, CUIs are designed for short, synchronous interactions and often struggle and hallucinate when given complex, multi-step tasks (e.g., providing individual feedback based on a rubric on a large scale). To address these challenges, we explored the benefits of transitioning away from employing LLMs via CUIs to the creation of applications with user-friendly interfaces that leverage LLMs through API calls. We first propose a framework for pedagogically sound and ethically responsible incorporation of GenAI into educational tools, emphasizing a human-centred design. We then illustrate the application of our framework to the design and implementation of a novel tool called Feedback Copilot, which enables instructors to provide students with personalized qualitative feedback on their assignments in classes of any size. An evaluation involving the generation of feedback from two distinct variations of the Feedback Copilot tool, using numerically graded assignments from 338 students, demonstrates the viability and effectiveness of our approach. Our findings have significant implications for GenAI application researchers, educators seeking to leverage accessible GenAI tools, and educational technologists aiming to transcend the limitations of conversational AI interfaces, thereby charting a course for the future of GenAI in education.

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大型语言模型与用户界面的结合:供应反馈案例
将生成式人工智能(GenAI),尤其是大型语言模型(LLM)融入教育环境,为提高教育工作者的效率和丰富学生的学习体验提供了宝贵的机会。目前,教育工作者对 LLM 的使用有很大一部分涉及使用会话用户界面(CUI),如聊天窗口,以实现生成教学材料或向学习者提供反馈等功能。与 LLM 进行实时对话的能力可以增强教育工作者在不同学科领域的知识,具有很高的价值。然而,这也给 LLMs 的广泛、道德和有效应用带来了挑战。首先,教育工作者必须具备一定程度的专业知识,包括工具熟悉程度、人工智能素养和提示,才能有效使用 CUI,这可能成为采用 CUI 的障碍。其次,CUI 的开放式设计使其功能异常强大,这引发了道德方面的担忧,尤其是在用于像评分这样的高风险决策时。此外,由于敏感信息可能会在未经授权的情况下被共享,因此还存在与隐私和知识产权相关的风险。最后,CUI 是专为短时同步互动而设计的,在执行复杂的多步骤任务时(例如,根据评分标准提供大规模的个人反馈),CUI 往往会陷入困境和幻觉。为了应对这些挑战,我们探索了从通过 CUI 使用 LLM 过渡到创建具有用户友好界面的应用程序的好处,通过 API 调用利用 LLM。我们首先提出了一个框架,用于将 GenAI 融入教育工具,强调以人为本的设计,使其在教学上合理,在道德上负责。然后,我们举例说明了我们的框架在设计和实施名为 "Feedback Copilot "的新型工具中的应用,该工具使教师能够在任何规模的班级中为学生提供个性化的作业定性反馈。我们使用 338 名学生的数字分级作业,对两种不同的 Feedback Copilot 工具生成的反馈进行了评估,证明了我们方法的可行性和有效性。我们的研究结果对 GenAI 应用研究人员、寻求利用可访问的 GenAI 工具的教育工作者以及旨在超越对话式人工智能界面局限性的教育技术专家具有重要意义,从而为 GenAI 在教育领域的未来发展指明了方向。
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来源期刊
CiteScore
16.80
自引率
0.00%
发文量
66
审稿时长
50 days
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