衡平法
包裹体(矿物)
通过镜头测光
心理学
特殊教育
镜头(地质)
教育学
社会学
数学教育
社会心理学
政治学
工程类
石油工程
法学
作者
Ling Zhang,Richard Allen Carter,Slki Narae Lim
标识
DOI:10.1177/01626434251349405
摘要
Intelligent agents powered by large language models (LLMs) are rapidly evolving due to the exponential growth of LLMs’ capacity to process, integrate, and generate information across multiple formats, along with other human-like “intelligence,” such as planning, reasoning, and decision-making. These advanced agent systems hold promise for supporting students with disabilities (SWDs); however, there is little guidance on the ethical and inclusive design of these agents. In this article, we highlight critical considerations for designing LLM agents for SWDs using the Cultural-Historical Activity Theory (CHAT) to explore how these agents can mediate the dynamic interplay between SWDs and their sociocultural context. We propose a framework with three overarching human-centered design principles: enhancing accessibility to support sensory and motor experiences, facilitating (meta)cognitive processing through goal-oriented actions, and promoting agency by leveraging learner strengths and cultural-historical assets. We conclude by providing implications for future research, practice, and policy on LLM-powered AI agents.
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