The Honorific Effect: Exploring the Impact of Japanese Linguistic Formalities on AI-Generated Physics Explanations

Keisuke Sato
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Abstract

This study investigates the influence of Japanese honorifics on the responses of large language models (LLMs) when explaining the law of conservation of momentum. We analyzed the outputs of six state-of-the-art AI models, including variations of ChatGPT, Coral, and Gemini, using 14 different honorific forms. Our findings reveal that honorifics significantly affect the quality, consistency, and formality of AI-generated responses, demonstrating LLMs' ability to interpret and adapt to social context cues embedded in language. Notable variations were observed across different models, with some emphasizing historical context and derivations, while others focused on intuitive explanations. The study highlights the potential for using honorifics to adjust the depth and complexity of AI-generated explanations in educational contexts. Furthermore, the responsiveness of AI models to cultural linguistic elements underscores the importance of considering cultural factors in AI development for educational applications. These results open new avenues for research in AI-assisted education and cultural adaptation in AI systems, with significant implications for personalizing learning experiences and developing culturally sensitive AI tools for global education.
荣誉效应:探索日语语言形式对人工智能生成的物理解释的影响
本研究探讨了在解释动量守恒定律时,日语敬语对大型语言模型(LLM)响应的影响。我们使用 14 种不同的敬语形式分析了六种最先进的人工智能模型(包括 ChatGPT、Coral 和 Gemini 的变体)的输出结果。我们的研究结果表明,敬语会显著影响人工智能生成的回答的质量、一致性和正式性,这证明了 LLMs 解释和适应语言中蕴含的社会语境线索的能力。在不同的模型中观察到了明显的差异,一些模型强调历史背景和引申,而另一些则侧重于直观解释。此外,人工智能模型对文化语言元素的反应能力进一步证明了在教育应用领域开发人工智能时考虑文化因素的重要性。这些结果为人工智能辅助教育和人工智能系统的文化适应性研究开辟了新的途径,对个性化学习体验和为全球教育开发文化敏感的人工智能工具具有重要影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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