SimPal: Towards a Meta-Conversational Framework to Understand Teacher's Instructional Goals for K-12 Physics

Effat FarhanaSantu, Souvika SarkarSantu, Ralph KnipperSantu, Indrani DeySantu, Hari NarayananSantu, Sadhana PuntambekarSantu, Shubhra Kanti KarmakerSantu
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Abstract

Simulations are widely used to teach science in grade schools. These simulations are often augmented with a conversational artificial intelligence (AI) agent to provide real-time scaffolding support for students conducting experiments using the simulations. AI agents are highly tailored for each simulation, with a predesigned set of Instructional Goals (IGs), making it difficult for teachers to adjust IGs as the agent may no longer align with the revised IGs. Additionally, teachers are hesitant to adopt new third-party simulations for the same reasons. In this research, we introduce SimPal, a Large Language Model (LLM) based meta-conversational agent, to solve this misalignment issue between a pre-trained conversational AI agent and the constantly evolving pedagogy of instructors. Through natural conversation with SimPal, teachers first explain their desired IGs, based on which SimPal identifies a set of relevant physical variables and their relationships to create symbolic representations of the desired IGs. The symbolic representations can then be leveraged to design prompts for the original AI agent to yield better alignment with the desired IGs. We empirically evaluated SimPal using two LLMs, ChatGPT-3.5 and PaLM 2, on 63 Physics simulations from PhET and Golabz. Additionally, we examined the impact of different prompting techniques on LLM's performance by utilizing the TELeR taxonomy to identify relevant physical variables for the IGs. Our findings showed that SimPal can do this task with a high degree of accuracy when provided with a well-defined prompt.
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SimPal:建立元对话框架,了解 K-12 物理教师的教学目标
模拟被广泛用于小学科学教学。这些模拟通常由一个会话式人工智能(AI)代理进行辅助,为使用模拟进行实验的学生提供实时支架支持。人工智能代理为每个模拟高度定制,具有一套预先设计的教学目标(IGs),这使得教师很难调整 IGs,因为代理可能不再符合预先设计的 IGs。此外,出于同样的原因,教师对采用新的第三方模拟也犹豫不决。在这项研究中,我们引入了基于大语言模型(LLM)的元对话代理SimPal,以解决预先训练好的会话人工智能代理与教师不断发展的教学法之间的匹配问题。通过与 SimPal 的自然对话,教师首先解释他们所需的 IGs,SimPal 在此基础上识别一组相关的物理变量及其关系,从而创建所需 IGs 的符号表示。然后,可以利用这些符号表示为原始人工智能代理设计提示,以便更好地与所需的 IGs 保持一致。我们使用两种 LLM(ChatGPT-3.5 和 PaLM 2)对来自 PhET 和 Golabz 的 63 个物理模拟进行了实证评估。此外,我们还利用 TELeR 分类法来确定 IGs 的相关物理变量,从而检验了不同提示技术对 LLM 性能的影响。我们的研究结果表明,如果有明确的提示,SimPal 可以非常准确地完成这项任务。
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