Improving Robot-Assisted Virtual Teaching Using Transformers, GANs, and Computer Vision

Li Xiong, Yuanyuan Chen, Yi Peng, Y. Ghadi
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Abstract

This study aims to enhance the efficacy of personalized learning paths by amalgamating transformer models, generative adversarial networks (GANs), and reinforcement learning techniques. To refine personalized learning trajectories, the authors integrated the transformer model for enhanced information assimilation and learning path planning. Through generative adversarial networks, the authors simulated the fusion and interaction of multi-modal information, refining the training of virtual teaching assistants. Lastly, reinforcement learning was employed to optimize the interaction strategies of these assistants, aligning them better with student needs. In the experimental phase, the authors benchmarked their approach against six state-of-the-art models to assess its effectiveness. The experimental outcomes highlight significant enhancements achieved by the authors' virtual teaching assistant compared to traditional methods. Precision improved to 95% and recall to 96%, and an F1 score exceeding 95% was attained.
利用变形器、广义泛函模型和计算机视觉改进机器人辅助虚拟教学
本研究旨在通过融合变压器模型、生成式对抗网络(GAN)和强化学习技术,提高个性化学习路径的功效。为了完善个性化学习轨迹,作者整合了变压器模型,以加强信息吸收和学习路径规划。通过生成式对抗网络,作者模拟了多模态信息的融合与交互,完善了虚拟助教的培训。最后,作者采用强化学习来优化这些助教的互动策略,使其更好地满足学生的需求。在实验阶段,作者将他们的方法与六种最先进的模型进行了对比,以评估其有效性。实验结果表明,与传统方法相比,作者的虚拟助教取得了显著提高。精确度提高到 95%,召回率提高到 96%,F1 分数超过 95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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