Nathan Mitchell J
MAGIC Lab, Wisconsin Center for Education Research, Educational Psychology Department, School of Education at the University of Wisconsin-Madison, Madison, WI, United States.
Front Artif Intell. 2023 Mar 3;6:1148227. doi: 10.3389/frai.2023.1148227. eCollection 2023.
The in the Learning Sciences has fueled growth of multimodal learning analytics to understand embodied interactions and make consequential educational decisions about students more rapidly, more accurately, and more personalized than ever before. Managing demands of complexity and speed is leading to growing reliance by education systems on disembodied artificial intelligence (dAI) programs, which, ironically, are inherently incapable of interpreting students' embodied interactions. This is fueling a potential . systems offer promising avenues for managing this crisis by integrating the strengths of omnipresent dAI to detect complex patterns of student behavior from multimodal datastreams, with the strengths of humans to meaningfully interpret embodied interactions in service of consequential decision making to achieve a balance between complexity, interpretability, and accountability for allocating education resources to children.
学习科学领域的进展推动了多模态学习分析的发展,以便比以往任何时候都更快速、更准确、更个性化地理解身体交互,并就学生做出重要的教育决策。应对复杂性和速度的需求正导致教育系统越来越依赖脱离实体的人工智能(dAI)程序,具有讽刺意味的是,这些程序本质上无法解释学生的身体交互。这正在引发一场潜在的……系统通过整合无处不在的dAI的优势,从多模态数据流中检测学生行为的复杂模式,以及人类有意义地解释身体交互以服务于重要决策的优势,为管理这场危机提供了有前景的途径,从而在复杂性、可解释性和为儿童分配教育资源的问责制之间实现平衡。