探索差距:利用大型语言模型为基于概念的翻译教学实现类人泛化所面临的挑战

Ming Qian, Chuiqing Kong
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引用次数: 0

摘要

我们的研究利用概念描述指令和少量学习示例,检验了大型语言模型(GPT-4)在生成体现相关翻译概念的汉译英译文方面的有效性。我们发现,与 GPT-4 相比,人类语言专家拥有更强的归纳推理能力。因此,与人类专家可能拥有的更直观的理解能力相比,人类必须运用归纳推理来制作更详细的说明,并在示例提示中注入更多逻辑,这是有效指导大型语言模型的关键步骤。这种方法会使提示工程过程变得更加复杂,更不像人类。强调特定领域的归纳推理是类人学习的一个重要方面,基于大型语言模型的人工智能/人工智能系统应致力于复制这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the Gap: The Challenge of Achieving Human-like Generalization for Concept-based Translation Instruction Using Large Language Models
Our study utilizes concept description instructions and few-shot learning examples to examine the effectiveness of a large language model (GPT-4) in generating Chinese-to-English translations that embody related translation concepts. We discovered that human language experts possess superior abductive reasoning skills compared to GPT-4. Therefore, it is crucial for humans to employ abductive reasoning to craft more detailed instructions and infuse additional logic into exemplary prompts, a step essential for guiding a large language model effectively, in contrast to the more intuitive understanding a human expert might have. This approach would make the prompt engineering process more complicated and less human-like. Emphasizing domain-specific abductive reasoning stands out as a crucial aspect of human-like learning that AI/ML systems based on large language models should aim to replicate.
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