大型语言模型和 OpenLogos:教育案例场景

Andrijana Pavlova, B. Gerazov, Anabela Barreiro
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引用次数: 0

摘要

大型语言模型(LLM)具有先进的文本生成能力,有时甚至超越了人类的能力。然而,在没有适当专业知识的情况下使用它们会带来巨大挑战,尤其是在教育领域。本文探讨了教育领域中自然语言生成(NLG)的不同方面,评估了其优缺点,特别是有关 LLM 的优缺点。文章探讨了人们对 LLM 不透明及其生成内容中潜在偏见的担忧,提倡采用透明的解决方案。因此,它研究了将 OpenLogos 专家制作的资源整合到用于转述和翻译的语言生成工具中的可行性。在 Multi3Generation COST 行动(CA18231)的背景下,我们一直在强调将 OpenLogos 纳入语言生成过程的重要性,以及在涉及多语言、多模态和多任务处理能力的生成模型中制定明确指导原则和道德标准的必要性。Multi3Generation 计划致力于推进无语言生成技术研究,以造福社会,包括其教育应用。它提倡受 Logos 模型启发的包容性模型,优先考虑透明度、人为控制、语言原则和意义的保护,以及对资源创建者专业知识的认可。在我们的设想中,OpenLogos 可以为人工智能支持的包容性教育做出重大贡献。文章探讨了在教育领域实施人工智能的相关伦理考虑因素和限制,强调了保持与传统教育原则相一致的平衡方法的重要性。最后,文章倡导教育工作者采用创新的工具和方法,营造动态的学习环境,促进语言的发展和成长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large Language Models and OpenLogos: An Educational Case Scenario
Large Language Models (LLMs) offer advanced text generation capabilities, sometimes surpassing human abilities. However, their use without proper expertise poses significant challenges, particularly in educational contexts. This article explores different facets of natural language generation (NLG) within the educational realm, assessing its advantages and disadvantages, particularly concerning LLMs. It addresses concerns regarding the opacity of LLMs and the potential bias in their generated content, advocating for transparent solutions. Therefore, it examines the feasibility of integrating OpenLogos expert-crafted resources into language generation tools used for paraphrasing and translation. In the context of the Multi3Generation COST Action (CA18231), we have been emphasizing the significance of incorporating OpenLogos into language generation processes, and the need for clear guidelines and ethical standards in generative models involving multilingual, multimodal, and multitasking capabilities. The Multi3Generation initiative strives to progress NLG research for societal welfare, including its educational applications. It promotes inclusive models inspired by the Logos Model, prioritizing transparency, human control, preservation of language principles and meaning, and acknowledgment of the expertise of resource creators. We envision a scenario where OpenLogos can contribute significantly to inclusive AI-supported education. Ethical considerations and limitations related to AI implementation in education are explored, highlighting the importance of maintaining a balanced approach consistent with traditional educational principles. Ultimately, the article advocates for educators to adopt innovative tools and methodologies to foster dynamic learning environments that facilitate linguistic development and growth.
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