关怀:面向定制化的机器人辅助教育。

IF 3 Q2 ROBOTICS
Frontiers in Robotics and AI Pub Date : 2025-02-21 eCollection Date: 2025-01-01 DOI:10.3389/frobt.2025.1474741
Nafisa Maaz, Jinane Mounsef, Noel Maalouf
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引用次数: 0

摘要

本研究提出了一种将人工智能与机器人技术整合到教育中的新方法,以个性化和适应性学习为重点,提高小学生的学习体验。与现有的主要依赖数字平台的自适应和智能辅导系统不同,我们的方法采用个性化辅导机器人直接与学生互动,结合认知和情感评估来提供量身定制的教育体验。这项工作通过整合实时面部表情分析、主观反馈和绩效指标,扩展了当前的研究领域,将学生分为三类:精通学生(Prof.S)、满足期望的学生(MES)和发展中的学生(DVS)。这些分类用于交付定制的学习内容、激励信息和建设性反馈。指导本研究的主要研究问题是:个性化是否增强了机器人导师在促进改进学习成果方面的有效性?为了解决这个问题,该研究探讨了两个关键方面:(1)个性化如何有助于机器人导师适应个别学生需求的能力,从而提高参与度和学习成绩;(2)个性化机器人导师与人类教师的有效性如何,这可以作为评估系统影响的基准。我们的研究将个性化机器人与人类教师进行了对比,以突出机器人在现实教育环境中个性化辅导的潜力。虽然与通用的、非个性化的机器人进行比较可以进一步隔离个性化的影响,但我们选择与人类教师进行比较,强调了将个性化机器人教师定位为可行且有影响力的教育工具的更广泛目标。该机器人的人工智能系统采用XGBoost算法,利用考试成绩、任务完成时间和情感投入等因素,以高精度(100%)预测学生的熟练程度。挑战和学习材料会根据每个学生的需求进行动态调整,分布式交换机接受支持性练习,S教授接受高级任务。我们的方法超越了现有的文献,通过在教室环境中嵌入一个完全自主的机器人系统来评估和提高学习成果。通过诊断后检查的评估表明,使用人工智能机器人系统的实验组学生比对照组表现出显著的改善率(约8%)。这些发现突出了本研究对人机交互(HRI)和教育机器人领域的独特贡献,展示了如何将人工智能和机器人技术整合到现实世界的学习环境中,可以吸引学生并改善教育成果。通过将我们的工作置于智能辅导系统的更广泛背景下并解决现有差距,本研究为该领域提供了独特的贡献。它与最近的进展保持一致,并以其为基础,同时通过结合机器人技术来促进学术和情感参与,提供了一个独特的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CARE: towards customized assistive robot-based education.

This study proposes a novel approach to enhancing the learning experience of elementary school students by integrating Artificial Intelligence (AI) and robotics in education, focusing on personalized and adaptive learning. Unlike existing adaptive and intelligent tutoring systems, which primarily rely on digital platforms, our approach employs a personalized tutor robot to interact with students directly, combining cognitive and emotional assessment to deliver tailored educational experiences. This work extends the current research landscape by integrating real-time facial expression analysis, subjective feedback, and performance metrics to classify students into three categories: Proficient Students (Prof.S), Meeting-Expectations Students (MES), and Developing Students (DVS). These classifications are used to deliver customized learning content, motivational messages, and constructive feedback. The primary research question guiding this study is: Does personalization enhance the effectiveness of a robotic tutor in fostering improved learning outcomes? To address this, the study explores two key aspects: (1) how personalization contributes to a robotic tutor's ability to adapt to individual student needs, thereby enhancing engagement and academic performance, and (2) how the effectiveness of a personalized robotic tutor compares to a human teacher, which serves as a benchmark for evaluating the system's impact. Our study contrasts the personalized robot with a human teacher to highlight the potential of personalization in robotic tutoring within a real-world educational context. While a comparison with a generic, unpersonalized robot could further isolate the impact of personalization, our choice of comparison with a human teacher underscores the broader objective of positioning personalized robotic tutors as viable and impactful educational tools. The robot's AI-powered system, employing the XGBoost algorithm, predicts the student's proficiency level with high accuracy (100%), leveraging factors such as test scores, task completion time, and emotional engagement. Challenges and learning materials are dynamically adjusted to suit each student's needs, with DVS receiving supportive exercises and Prof. S receiving advanced tasks. Our methodology goes beyond existing literature by embedding a fully autonomous robotic system within a classroom setting to assess and enhance learning outcomes. Evaluation through post-diagnostic exams demonstrated that the experimental group of students using the AI-robot system showed a significant improvement rate (approximately 8%) over the control group. These findings highlight the unique contribution of this study to the field of Human-Robot Interaction (HRI) and educational robotics, showcasing how integrating AI and robotics in a real-world learning environment can engage students and improve educational outcomes. By situating our work within the broader context of intelligent tutoring systems and addressing existing gaps, this study provides a unique contribution to the field. It aligns with and builds upon recent advancements, while offering a distinct perspective by incorporating robotics to foster both academic and emotional engagement.

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来源期刊
CiteScore
6.50
自引率
5.90%
发文量
355
审稿时长
14 weeks
期刊介绍: Frontiers in Robotics and AI publishes rigorously peer-reviewed research covering all theory and applications of robotics, technology, and artificial intelligence, from biomedical to space robotics.
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